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<idAbs>&lt;div style='text-align:Left;'&gt;&lt;div&gt;&lt;div&gt;&lt;p&gt;&lt;span&gt;This product is part of the Landscape Change Monitoring System (LCMS) data suite. It shows LCMS modeled Land Cover classes for each year. See additional information about Land Cover in the Entity_and_Attribute_Information or Fields section below.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;LCMS is a remote sensing-based system for mapping and monitoring landscape change across the United States (Housman et al., 2026). Its objective is to develop a consistent approach using the latest technology and advancements in change detection to produce a "best available" map of landscape change. Because no algorithm performs best in all situations, LCMS uses an ensemble of models as predictors, which improves map accuracy across a range of ecosystems and change processes (Healey et al., 2018). The resulting suite of LCMS Change, Land Cover, and Land Use maps offer a holistic depiction of landscape change across the United States over the past four decades.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Predictor layers for the LCMS model include outputs from the LandTrendr and CCDC change detection algorithms and terrain information. These components are all accessed and processed using Google Earth Engine (Gorelick et al., 2017). To produce annual composites, the cFmask (Zhu and Woodcock, 2012), cloudScore, Cloud Score + (Pasquarella et al., 2023), and TDOM (Chastain et al., 2019) cloud and cloud shadow masking methods are applied to Landsat Tier 1 and Sentinel 2a and 2b Level-1C top of atmosphere reflectance data. The annual medoid is then computed to summarize each year into a single composite. The composite time series is temporally segmented using LandTrendr (Kennedy et al., 2010; Kennedy et al., 2018; Cohen et al., 2018). All cloud and cloud shadow free values are also temporally segmented using the CCDC algorithm (Zhu and Woodcock, 2014). LandTrendr, CCDC and terrain predictors can be used as independent predictor variables in a random forest (Breiman, 2001) model. LandTrendr predictor variables include fitted values, pair-wise differences, segment duration, change magnitude, and slope. CCDC predictor variables include CCDC sine and cosine coefficients (first 3 harmonics), fitted values, and pairwise differences from the Julian Day of each pixel used in the annual composites and LandTrendr. Terrain predictor variables include elevation, slope, sine of aspect, cosine of aspect, and topographic position indices (Weiss, 2001) from the USGS 3D Elevation Program (3DEP) (U.S. Geological Survey, 2019). Reference data are collected using TimeSync, a web-based tool that helps analysts visualize and interpret the Landsat data record from 1984-present (Cohen et al., 2010).&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Outputs fall into three categories: Change, Land Cover, and Land Use. At its foundation, Change maps areas of Disturbance, Vegetation Successional Growth, and Stable landscape. More detailed levels of Change products are available and are intended to address needs centered around monitoring causes and types of variations in vegetation cover, water extent, or snow/ice extent that may or may not result in a transition of land cover and/or land use. Change, Land Cover, and Land Use are predicted for each year of the time series and serve as the foundational products for LCMS. &lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;References: &lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Breiman, L. (2001). Random Forests. In Machine Learning (Vol. 45, pp. 5-32). https://doi.org/10.1023/A:1010933404324&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Chastain, R., Housman, I., Goldstein, J., Finco, M., and Tenneson, K. (2019). Empirical cross sensor comparison of Sentinel-2A and 2B MSI, Landsat-8 OLI, and Landsat-7 ETM top of atmosphere spectral characteristics over the conterminous United States. In Remote Sensing of Environment (Vol. 221, pp. 274-285). https://doi.org/10.1016/j.rse.2018.11.012&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Cohen, W. B., Yang, Z., and Kennedy, R. (2010). Detecting trends in forest disturbance and recovery using yearly Landsat time series: 2. TimeSync - Tools for calibration and validation. In Remote Sensing of Environment (Vol. 114, Issue 12, pp. 2911-2924). https://doi.org/10.1016/j.rse.2010.07.010&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Cohen, W. B., Yang, Z., Healey, S. P., Kennedy, R. E., and Gorelick, N. (2018). A LandTrendr multispectral ensemble for forest disturbance detection. In Remote Sensing of Environment (Vol. 205, pp. 131-140). https://doi.org/10.1016/j.rse.2017.11.015&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Foga, S., Scaramuzza, P.L., Guo, S., Zhu, Z., Dilley, R.D., Beckmann, T., Schmidt, G.L., Dwyer, J.L., Hughes, M.J., Laue, B. (2017). Cloud detection algorithm comparison and validation for operational Landsat data products. Remote Sensing of Environment, 194, 379-390. http://doi.org/10.1016/j.rse.2017.03.026&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Gorelick, N., Hancher, M., Dixon, M., Ilyushchenko, S., Thau, D., and Moore, R. (2017). Google Earth Engine: Planetary-scale geospatial analysis for everyone. In Remote Sensing of Environment (Vol. 202, pp. 18-27). https://doi.org/10.1016/j.rse.2017.06.031&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Healey, S. P., Cohen, W. B., Yang, Z., Kenneth Brewer, C., Brooks, E. B., Gorelick, N., Hernandez, A. J., Huang, C., Joseph Hughes, M., Kennedy, R. E., Loveland, T. R., Moisen, G. G., Schroeder, T. A., Stehman, S. V., Vogelmann, J. E., Woodcock, C. E., Yang, L., and Zhu, Z. (2018). Mapping forest change using stacked generalization: An ensemble approach. In Remote Sensing of Environment (Vol. 204, pp. 717-728). https://doi.org/10.1016/j.rse.2017.09.029&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Helmer, E. H., Ramos, O., del MLopez, T., Quinonez, M., and Diaz, W. (2002). Mapping the forest type and Land Cover of Puerto Rico, a component of the Caribbean biodiversity hotspot. Caribbean Journal of Science, (Vol. 38, Issue 3/4, pp. 165-183)&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Housman, I. W., Healey, S. P., Heyer, J., Hardwick, E., Yang, Z., Ross, J., and Megown, K. (2026). Coincident maps of changing land cover, land use, and forest condition in the United States, 1985-present. Scientific Data&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Kennedy, R. E., Yang, Z., and Cohen, W. B. (2010). Detecting trends in forest disturbance and recovery using yearly Landsat time series: 1. LandTrendr - Temporal segmentation algorithms. In Remote Sensing of Environment (Vol. 114, Issue 12, pp. 2897-2910). https://doi.org/10.1016/j.rse.2010.07.008&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Kennedy, R., Yang, Z., Gorelick, N., Braaten, J., Cavalcante, L., Cohen, W., and Healey, S. (2018). Implementation of the LandTrendr Algorithm on Google Earth Engine. In Remote Sensing (Vol. 10, Issue 5, p. 691). https://doi.org/10.3390/rs10050691&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Olofsson, P., Foody, G. M., Herold, M., Stehman, S. V., Woodcock, C. E., and Wulder, M. A. (2014). Good practices for estimating area and assessing accuracy of land change. In Remote Sensing of Environment (Vol. 148, pp. 42-57). https://doi.org/10.1016/j.rse.2014.02.015&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Pasquarella, V. J., Brown, C. F., Czerwinski, W., and Rucklidge, W. J. (2023). Comprehensive Quality Assessment of Optical Satellite Imagery Using Weakly Supervised Video Learning. In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (pp. 2124-2134)&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Pedregosa, F., Varoquaux, G., Gramfort, A., Michel, V., Thirion, B., Grisel, O., Blondel, M., Prettenhofer, P., Weiss, R., Dubourg, V., Vanderplas, J., Passos, A., Cournapeau, D., Brucher, M., Perrot, M. and Duchesnay, E. (2011). Scikit-learn: Machine Learning in Python. In Journal of Machine Learning Research (Vol. 12, pp. 2825-2830).&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Pengra, B. W., Stehman, S. V., Horton, J. A., Dockter, D. J., Schroeder, T. A., Yang, Z., Cohen, W. B., Healey, S. P., and Loveland, T. R. (2020). Quality control and assessment of interpreter consistency of annual Land Cover reference data in an operational national monitoring program. In Remote Sensing of Environment (Vol. 238, p. 111261). https://doi.org/10.1016/j.rse.2019.111261&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Pesaresi, M. and Politis P. (2023): GHS-BUILT-S R2023A - GHS built-up surface grid, derived from Sentinel2 composite and Landsat, multitemporal (1975-2030). European Commission, Joint Research Centre (JRC) PID: http://data.europa.eu/89h/9f06f36f-4b11-47ec-abb0-4f8b7b1d72ea doi:10.2905/9F06F36F-4B11-47EC-ABB0-4F8B7B1D72EA&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Stehman, S.V. (2014). Estimating area and map accuracy for stratified random sampling when the strata are different from the map classes. In International Journal of Remote Sensing (Vol. 35, pp. 4923-4939). https://doi.org/10.1080/01431161.2014.930207&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;USDA National Agricultural Statistics Service Cropland Data Layer (2024). Published crop-specific data layer [Online]. Available at https://nassgeodata.gmu.edu/CropScape/ (accessed 2026). USDA-NASS, Washington, DC.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;U.S. Geological Survey (2019). USGS 3D Elevation Program Digital Elevation Model, accessed August 2022 at https://developers.google.com/earth-engine/datasets/catalog/USGS_3DEP_10m&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;U.S. Geological Survey (2023). Landsat Collection 2 Known Issues, accessed March 2023 at https://www.usgs.gov/landsat-missions/landsat-collection-2-known-issues&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Weiss, A.D. (2001). Topographic position and landforms analysis Poster Presentation, ESRI Users Conference, San Diego, CA&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Yang, L., Jin, S., Danielson, P., Homer, C., Gass, L., Case, A., Costello, C., Dewitz, J., Fry, J., Funk, M., Grannemann, B., Rigge, M., and Xian, G. (2018). A New Generation of the United States National Land Cover Database: Requirements, Research Priorities, Design, and Implementation Strategies (https://www.sciencedirect.com/science/article/abs/pii/S092427161830251X), (pp. 108-123)&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Zhu, Z., and Woodcock, C. E. (2012). Object-based cloud and cloud shadow detection in Landsat imagery. In Remote Sensing of Environment (Vol. 118, pp. 83-94). https://doi.org/10.1016/j.rse.2011.10.028&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Zhu, Z., and Woodcock, C. E. (2014). Continuous change detection and classification of Land Cover using all available Landsat data. In Remote Sensing of Environment (Vol. 144, pp. 152-171). https://doi.org/10.1016/j.rse.2014.01.011&lt;/span&gt;&lt;/p&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;</idAbs>
<idPurp>To provide annual maps of vegetation cover Change, Land Cover, and Land Use type for mapping and monitoring landscape change.</idPurp>
<idCredit>Funding for this project was provided by the U.S. Forest Service (USFS). The LCMS data products were produced by RedCastle Resources, Inc. under contract to the USFS Field Services and Innovation Center Geospatial Office (FSIC-GO). The data are developed and maintained by the USDA Forest Service through integrated teams and support from the FSIC-GO.</idCredit>
<idPoC>
<rpIndName>Kevin A. Megown</rpIndName>
<rpOrgName>USDA Forest Service Field Services and Innovation Center Geospatial Office (FSIC-GO)</rpOrgName>
<rpPosName>Program Lead - Resource, Mapping, Inventory and Monitoring</rpPosName>
<rpCntInfo>
<cntPhone>
<voiceNum tddtty="">801-975-3826</voiceNum>
<faxNum>801-975-3478</faxNum>
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<cntAddress addressType="both">
<delPoint>125 S. State Street, Suite 7105</delPoint>
<city>Salt Lake City</city>
<adminArea>Utah</adminArea>
<country>US</country>
<eMailAdd>sm.fs.lcms@usda.gov</eMailAdd>
<postCode>84138</postCode>
</cntAddress>
<cntHours>0800 - 1600 MT, M - F</cntHours>
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<keyword>U.S.</keyword>
<keyword>USA</keyword>
<keyword>United States of America</keyword>
<keyword>Lower 48</keyword>
<keyword>Conterminous United States</keyword>
<keyword>CONUS</keyword>
<keyword>United States of America</keyword>
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<themeKeys>
<keyword>Change Detection</keyword>
<keyword>Cause of Change</keyword>
<keyword>Vegetation Cover Change</keyword>
<keyword>Vegetation Cover Monitoring</keyword>
<keyword>Land Cover Change</keyword>
<keyword>Land Cover Monitoring</keyword>
<keyword>Land Use Change</keyword>
<keyword>Land Use Monitoring</keyword>
<keyword>Disturbance Mapping</keyword>
<keyword>Digital Spatial Data</keyword>
<keyword>Remote Sensing</keyword>
<keyword>GIS</keyword>
</themeKeys>
<themeKeys>
<thesaName>
<resTitle>NGDA Portfolio Themes</resTitle>
</thesaName>
<keyword>NGDA</keyword>
<keyword>National Geospatial Data Asset</keyword>
<keyword>Land Use Land Cover Theme</keyword>
</themeKeys>
<themeKeys>
<thesaName>
<resTitle>ISO 19115 Category</resTitle>
</thesaName>
<keyword>BaseMaps</keyword>
<keyword>EarthCover</keyword>
<keyword>Imagery</keyword>
<keyword>Environment</keyword>
</themeKeys>
<searchKeys>
<keyword>BaseMaps</keyword>
<keyword>EarthCover</keyword>
<keyword>Imagery</keyword>
<keyword>Digital Spatial Data</keyword>
<keyword>Continuous</keyword>
<keyword>Land Cover</keyword>
<keyword>Land Use</keyword>
<keyword>Land Cover Change</keyword>
<keyword>Land Use Change</keyword>
<keyword>Change Detection</keyword>
<keyword>NGDA</keyword>
<keyword>Remote Sensing</keyword>
<keyword>National Geospatial Data Asset</keyword>
<keyword>Land Use Land Cover Theme</keyword>
<keyword>Environment</keyword>
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<useLimit>The USDA Forest Service makes no warranty, expressed or implied, including the warranties of merchantability and fitness for a particular purpose, nor assumes any legal liability or responsibility for the accuracy, reliability, completeness or utility of these geospatial data, or for the improper or incorrect use of these geospatial data. These geospatial data and related maps or graphics are not legal documents and are not intended to be used as such. The data and maps may not be used to determine title, ownership, legal descriptions or boundaries, legal jurisdiction, or restrictions that may be in place on either public or private land. Natural hazards may or may not be depicted on the data and maps, and land users should exercise due caution. The data are dynamic and may change over time. The user is responsible to verify the limitations of the geospatial data and to use the data accordingly.Additionally, The U.S. Forest Service waives copyright and related rights in the work worldwide through the CC0 (which can be found at https://creativecommons.org/public-domain/cc0/).In accordance with Federal civil rights law and U.S. Department of Agriculture (USDA) civil rights regulations and policies, the USDA, its Agencies, offices, and employees, and institutions participating in or administering USDA programs are prohibited from discriminating based on race, color, national origin, religion, sex, disability, age, marital status, family/parental status, income derived from a public assistance program, political beliefs, or reprisal or retaliation for prior civil rights activity, in any program or activity conducted or funded by USDA (not all bases apply to all programs). Remedies and complaint filing deadlines vary by program or incident. Persons with disabilities who require alternative means of communication for program information (e.g., Braille, large print, audiotape, American Sign Language, etc.) should contact the State or local Agency that administers the program or contact USDA through the Telecommunications Relay Service at 711 (voice and TTY). Additionally, program information may be made available in languages other than English. To file a program discrimination complaint, complete the USDA Program Discrimination Complaint Form, AD-3027, found online at How to File a Program Discrimination Complaint and at any USDA office or write a letter addressed to USDA and provide in the letter all of the information requested in the form. To request a copy of the complaint form, call (866) 632-9992. Submit your completed form or letter to USDA by: (1) mail: U.S. Department of Agriculture, Office of the Assistant Secretary for Civil Rights, 1400 Independence Avenue, SW, Mail Stop 9410, Washington, D.C. 20250-9410; (2) fax: (202) 690-7442; or (3) email: program.intake@usda.gov. USDA is an equal opportunity provider, employer, and lender.</useLimit>
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<useLimit>&lt;div style='text-align:Left;'&gt;&lt;div&gt;&lt;div&gt;&lt;p&gt;&lt;span&gt;These data were collected using funding from the U.S. Government and can be used without additional permissions or fees. If you use these data in a publication, presentation, or other research product please use the following citation: USDA Forest Service. 2026. USFS Landscape Change Monitoring System Conterminous United States version 2025-11. Salt Lake City, Utah.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Appropriate use includes regional to national assessments of vegetation cover, Land Cover, or Land Use change trends, total extent of vegetation cover, Land Cover, or Land Use change, and aggregated summaries of vegetation cover, Land Cover, or Land Use change. This product is the initial output from the modeling process with post-processing applied in the map assemblage rulesets as described in the process steps below..&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;The USDA Forest Service makes no warranty, expressed or implied, including the warranties of merchantability and fitness for a particular purpose, nor assumes any legal liability or responsibility for the accuracy, reliability, completeness or utility of these geospatial data, or for the improper or incorrect use of these geospatial data. These geospatial data and related maps or graphics are not legal documents and are not intended to be used as such. The data and maps may not be used to determine title, ownership, legal descriptions or boundaries, legal jurisdiction, or restrictions that may be in place on either public or private land. Natural hazards may or may not be depicted on the data and maps, and land users should exercise due caution. The data are dynamic and may change over time. The user is responsible to verify the limitations of the geospatial data and to use the data accordingly.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Additionally, The U.S. Forest Service waives copyright and related rights in the work worldwide through the CC0 (which can be found at &lt;/span&gt;&lt;a href='https://creativecommons.org/public-domain/cc0/' target='_blank' style='text-decoration:underline;'&gt;&lt;span&gt;https://creativecommons.org/public-domain/cc0/&lt;/span&gt;&lt;/a&gt;&lt;span&gt;).&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;In accordance with Federal civil rights law and U.S. Department of Agriculture (USDA) civil rights regulations and policies, the USDA, its Agencies, offices, and employees, and institutions participating in or administering USDA programs are prohibited from discriminating based on race, color, national origin, religion, sex, disability, age, marital status, family/parental status, income derived from a public assistance program, political beliefs, or reprisal or retaliation for prior civil rights activity, in any program or activity conducted or funded by USDA (not all bases apply to all programs). Remedies and complaint filing deadlines vary by program or incident.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Persons with disabilities who require alternative means of communication for program information (e.g., Braille, large print, audiotape, American Sign Language, etc.) should contact the State or local Agency that administers the program or contact USDA through the Telecommunications Relay Service at 711 (voice and TTY). Additionally, program information may be made available in languages other than English.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;To file a program discrimination complaint, complete the USDA Program Discrimination Complaint Form, AD-3027, found online at How to File a Program Discrimination Complaint and at any USDA office or write a letter addressed to USDA and provide in the letter all of the information requested in the form. To request a copy of the complaint form, call (866) 632-9992. Submit your completed form or letter to USDA by: (1) mail: U.S. Department of Agriculture, Office of the Assistant Secretary for Civil Rights, 1400 Independence Avenue, SW, Mail Stop 9410, Washington, D.C. 20250-9410; (2) fax: (202) 690-7442; or (3) email: program.intake@usda.gov.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span /&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;USDA is an equal opportunity provider, employer, and lender.&lt;/span&gt;&lt;/p&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;</useLimit>
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<othConsts>Appropriate use includes regional to national assessments of vegetation cover, Land Cover, or Land Use change trends, total extent of vegetation cover, Land Cover, or Land Use change, and aggregated summaries of vegetation cover, Land Cover, or Land Use change. This product is the initial output from the modeling process with post-processing applied in the map assemblage rulesets as described in the process steps below. The USDA Forest Service makes no warranty, expressed or implied, including the warranties of merchantability and fitness for a particular purpose, nor assumes any legal liability or responsibility for the accuracy, reliability, completeness or utility of these geospatial data, or for the improper or incorrect use of these geospatial data. These geospatial data and related maps or graphics are not legal documents and are not intended to be used as such. The data and maps may not be used to determine title, ownership, legal descriptions or boundaries, legal jurisdiction, or restrictions that may be in place on either public or private land. Natural hazards may or may not be depicted on the data and maps, and land users should exercise due caution. The data are dynamic and may change over time. The user is responsible to verify the limitations of the geospatial data and to use the data accordingly.Additionally, The U.S. Forest Service waives copyright and related rights in the work worldwide through the CC0 (which can be found at https://creativecommons.org/public-domain/cc0/). In accordance with Federal civil rights law and U.S. Department of Agriculture (USDA) civil rights regulations and policies, the USDA, its Agencies, offices, and employees, and institutions participating in or administering USDA programs are prohibited from discriminating based on race, color, national origin, religion, sex, disability, age, marital status, family/parental status, income derived from a public assistance program, political beliefs, or reprisal or retaliation for prior civil rights activity, in any program or activity conducted or funded by USDA (not all bases apply to all programs). Remedies and complaint filing deadlines vary by program or incident. Persons with disabilities who require alternative means of communication for program information (e.g., Braille, large print, audiotape, American Sign Language, etc.) should contact the State or local Agency that administers the program or contact USDA through the Telecommunications Relay Service at 711 (voice and TTY). Additionally, program information may be made available in languages other than English. To file a program discrimination complaint, complete the USDA Program Discrimination Complaint Form, AD-3027, found online at How to File a Program Discrimination Complaint and at any USDA office or write a letter addressed to USDA and provide in the letter all of the information requested in the form. To request a copy of the complaint form, call (866) 632-9992. Submit your completed form or letter to USDA by: (1) mail: U.S. Department of Agriculture, Office of the Assistant Secretary for Civil Rights, 1400 Independence Avenue, SW, Mail Stop 9410, Washington, D.C. 20250-9410; (2) fax: (202) 690-7442; or (3) email: program.intake@usda.gov. USDA is an equal opportunity provider, employer, and lender.</othConsts>
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<dataLineage>
<prcStep>
<stepDesc>Collect reference data using the TimeSync image analysis tool (Cohen et al., 2010). To set up the tool, acquire all Landsat 4 and 5 TM, 7 ETM+, and 8 OLI Tier 1 data and mask out any values with cFmask cloud and cloud shadow qa bits. Use the tool to attribute annual Change process, Land Cover, and Land Use classes for each 30 m x 30 m pixel in the reference data sample.Cohen, W. B., Yang, Z., and Kennedy, R. (2010). Detecting trends in forest disturbance and recovery using yearly Landsat time series: 2. TimeSync - Tools for calibration and validation. In Remote Sensing of Environment (Vol. 114, Issue 12, pp. 2911-2924). https://doi.org/10.1016/j.rse.2010.07.010</stepDesc>
<stepRat> TimeSync reference data</stepRat>
<stepDateTm>20251105</stepDateTm>
</prcStep>
<prcStep>
<stepDesc>Acquire all Landsat 4 and 5 TM, 7 ETM+, 8 OLI Tier 1, 9 OLI-2 Tier 1, and Sentinel 2a and 2b Level-1C top of atmosphere data from June 1st to September 30th for CONUS for years 1985 through 2015, and from July 1 through September 1 for years after 2015, and mask out clouds and cloud shadows using the cFmask (Zhu and Woodcock, 2012) and Cloud Score + (Pasquarella et al., 2023) and cloudScore cloud and TDOM cloud shadow masking algorithms (Chastain et al., 2019). For each year, compute the geometric medoid of the remaining values, resulting in an annual composite.Chastain, R., Housman, I., Goldstein, J., Finco, M., and Tenneson, K. (2019). Empirical cross sensor comparison of Sentinel-2A and 2B MSI, Landsat-8 OLI, and Landsat-7 ETM top of atmosphere spectral characteristics over the conterminous United States. In Remote Sensing of Environment (Vol. 221, pp. 274-285). https://doi.org/10.1016/j.rse.2018.11.012Pasquarella, V. J., Brown, C. F., Czerwinski, W., and Rucklidge, W. J. (2023). Comprehensive Quality Assessment of Optical Satellite Imagery Using Weakly Supervised Video Learning. In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (pp. 2124-2134)Zhu, Z., and Woodcock, C. E. (2012). Object-based cloud and cloud shadow detection in Landsat imagery. In Remote Sensing of Environment (Vol. 118, pp. 83-94). https://doi.org/10.1016/j.rse.2011.10.028</stepDesc>
<stepRat> Annual Landsat-Sentinel2 image composites</stepRat>
<stepDateTm>20251020</stepDateTm>
</prcStep>
<prcStep>
<stepDesc>Apply the LandTrendr algorithm (Kennedy et al., 2010; Kennedy et al., 2018) to the medoid pixels composite time series.Kennedy, R. E., Yang, Z., and Cohen, W. B. (2010). Detecting trends in forest disturbance and recovery using yearly Landsat time series: 1. LandTrendr - Temporal segmentation algorithms. In Remote Sensing of Environment (Vol. 114, Issue 12, pp. 2897-2910). https://doi.org/10.1016/j.rse.2010.07.008Kennedy, R., Yang, Z., Gorelick, N., Braaten, J., Cavalcante, L., Cohen, W., and Healey, S. (2018). Implementation of the LandTrendr Algorithm on Google Earth Engine. In Remote Sensing (Vol. 10, Issue 5, p. 691). https://doi.org/10.3390/rs10050691</stepDesc>
<stepRat> Annual LandTrendr Fitted Images</stepRat>
<stepDateTm>20251025</stepDateTm>
</prcStep>
<prcStep>
<stepDesc>Apply the Continuous Change Detection and Classification (CCDC) algorithm (Zhu and Woodcock, 2014) to the cloud and cloud shadow-free values of Landsat 4 and 5 TM, 7 ETM+, 8 OLI, and 9 OLI-2 Tier 1 surface reflectance data for CONUS from January 1 to December 31. For CONUS and AK, rather than completely rerunning CCDC for the entire time series, we feathered together two partial time series CCDC runs. The first run was the 1984-2022 CCDC run used in v2022.8, while the second run was 2015-2025. Between 2015 and 2022, the v2022.8 CCDC run was feathered together with the new CCDC run of 2015-2025 using a linearly weighted feathering method.Zhu, Z., and Woodcock, C. E. (2014). Continuous change detection and classification of Land Cover using all available Landsat data. In Remote Sensing of Environment (Vol. 144, pp. 152-171). https://doi.org/10.1016/j.rse.2014.01.011</stepDesc>
<stepRat> Annual CCDC Predicted Images</stepRat>
<stepDateTm>20251025</stepDateTm>
</prcStep>
<prcStep>
<stepDesc>Acquire USGS 3D Elevation Program (3DEP) data (U.S. Geological Survey, 2019) and compute slope, sine (aspect), and cosine (aspect).U.S. Geological Survey. (2019). USGS 3D Elevation Program Digital Elevation Model, accessed August 2022 at https://developers.google.com/earth-engine/datasets/catalog/USGS_3DEP_10m</stepDesc>
<stepRat> Digital Elevation Model (DEM)</stepRat>
<stepDateTm>20230301</stepDateTm>
</prcStep>
<prcStep>
<stepDesc>Train random forest models (Breiman, 2001) using reference data from TimeSync and predictor data from LandTrendr, CCDC, and terrain indices to predict annual Change, Land Cover, and Land Use classes.Breiman, L. (2001). Random Forests. In Machine Learning (Vol. 45, pp. 5-32). https://doi.org/10.1023/A:1010933404324</stepDesc>
<stepRat> Random forest models</stepRat>
<stepDateTm>20260101</stepDateTm>
</prcStep>
<prcStep>
<stepDesc>No assemblage rules or thresholding were applied to the summary product. The summary product band was included in annual assembled outputs.</stepDesc>
<stepRat> Summary product assemblage</stepRat>
<stepDateTm>20260201</stepDateTm>
</prcStep>
<statement>Primary data sources include USGS Landsat Collection 2 Landsat 4, 5, 7, 8 and 9 Tier 1 top of atmosphere reflectance data, Sentinel 2a and 2b Level-1C top of atmosphere reflectance data, and the USGS 3D Elevation Program (3DEP) terrain data. These serve as the foundational raster data sources for all modeling. These data originate from the US Geological Survey Earth Resource Observation and Science (EROS) Center (Landsat and NED data) and the European Space Agency (ESA; Sentinel 2 data). All data access and processing is performed using the Google Earth Engine API (Gorelick, 2017).All other data, including reference data, predictor variables, and final map products, are derived within the LCMS framework.</statement>
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<measDesc>All years are modeled separately. As such, measurements from one year to another are not inherently dependent on other years</measDesc>
<evalMethDesc>See the data quality report for methods</evalMethDesc>
</report>
<report dimension="" type="DQCompOm">
<measDesc>Data extend across the lower 48 conterminous United States</measDesc>
</report>
<report dimension="" type="DQQuanAttAcc">
<measDesc>The accuracy assessment for Land Use and Land Cover was performed using a grouped, stratified, 10-fold cross validation, a method that accounts for the stratified random sample design following Stehman (2014), with the annual TimeSync training data collected from each plot location. For Change, the final, assembled, rule-based predictions were based on the combination of model-predicted Slow Loss, Fast Loss, Gain, or Stable (using the same grouped, stratified, 10-fold cross validation method) with ancillary datasets, which were then compared with the annual training data collected from each plot location to assess accuracy. Accuracy is measured using the proportion of correctly predicted vs incorrectly predicted outputs.</measDesc>
<evalMethDesc>Accuracy metrics for each Change, Land Cover, and Land Use model are assessed separately using a grouped, stratified 10-fold cross validation. This is a variant of the k-fold cross validation method whereby each sample point is classified as belonging to a specific, non-overlapping group, in this case each TimeSync plot. Since each TimeSync plot provides 40 years of training data, this method ensures that each of the folds is appropriately balanced and that each plot is only included in one of the cross-validation folds. Following guidance from Healey et al (2018), Change predictions are given a one-year buffer to be counted as correct. For a correct Change prediction, the reference Change call must have an equivalent predicted Change call within one year before or after. Additionally, an optimum model confidence threshold is determined for each model by assessing the precision and recall at every possible threshold (from 0-100) and selecting the threshold that maximizes both precision and recall. The accuracy metrics of the grouped 10-fold cross validation are then evaluated using a method that accounts for the stratified random sample design, following Stehman (2014). References: Cohen, W. B., Healey, S. P., Yang, Z., Stehman, S. V., Brewer, C. K., Brooks, E. B., Gorelick, N., Huang, C., Hughes, M. J., Kennedy, R. E. and Loveland, T. R. (2017). How similar are forest disturbance maps derived from different Landsat time series algorithms?. Forests, (Vol. 8, Issue 4, p. 98)Healey, S. P., Cohen, W. B., Yang, Z., Kenneth Brewer, C., Brooks, E. B., Gorelick, N., Hernandez, A. J., Huang, C., Joseph Hughes, M., Kennedy, R. E., Loveland, T. R., Moisen, G. G., Schroeder, T. A., Stehman, S. V., Vogelmann, J. E., Woodcock, C. E., Yang, L., and Zhu, Z. (2018). Mapping forest change using stacked generalization: An ensemble approach. In Remote Sensing of Environment (Vol. 204, pp. 717-728). https://doi.org/10.1016/j.rse.2017.09.029Stehman, S.V. (2014). Estimating area and map accuracy for stratified random sampling when the strata are different from the map classes. In International Journal of Remote Sensing (Vol. 35, pp. 4923-4939). https://doi.org/10.1080/01431161.2014.930207 </evalMethDesc>
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<resTitle>Results from Grouped, Stratified 10-fold Cross Validation</resTitle>
<date>
<createDate>20260401</createDate>
<pubDate>20260401</pubDate>
<reviseDate>20260401</reviseDate>
</date>
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<conExpl>Cause_of_Change: Change_Level_2Overall Accuracy: 92.97 +/- 0.04Balanced Accuracy: 30.10 +/- 2.21Kappa: 0.40Users Accuracy (100%-Commission Error): Desiccation: 28.14Fire: 84.29Veg-Growth: 51.04Harvest: 88.51Insect-Disease-Drought: 17.38Inundation: 38.38Mechanical: 43.59Other: 0.24Stable: 95.67Wind: 7.82Users Error: Desiccation: 2.52Fire: 3.66Veg-Growth: 0.40Harvest: 1.81Insect-Disease-Drought: 1.06Inundation: 2.81Mechanical: 5.31Other: 0.15Stable: 0.04Wind: 3.58Producers Accuracy (100%-Omission Error): Desiccation: 50.25Fire: 29.60Veg-Growth: 40.62Harvest: 17.10Insect-Disease-Drought: 17.71Inundation: 30.74Mechanical: 7.11Other: 1.43Stable: 97.13Wind: 9.26Producers Error: Desiccation: 3.74Fire: 2.72Veg-Growth: 0.35Harvest: 0.94Insect-Disease-Drought: 1.08Inundation: 2.38Mechanical: 1.11Other: 0.90Stable: 0.03Wind: 4.20Number of Samples in each class: Desiccation: 154Fire: 399Veg-Growth: 31503Harvest: 3374Insect-Disease-Drought: 2653Inundation: 313Mechanical: 794Other: 304Stable: 304586Wind: 79</conExpl>
<conPass>1</conPass>
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<idCodeSpace Sync="TRUE">EPSG</idCodeSpace>
<idVersion Sync="TRUE">6.18.3(9.3.1.2)</idVersion>
</refSysID>
</RefSystem>
</refSysInfo>
<contInfo>
<ImgDesc>
<covDim>
<Band>
<valUnit>
<UOM gmlID="" type="length">
</UOM>
</valUnit>
<dimDescrp Sync="TRUE">Band_1</dimDescrp>
<maxVal Sync="TRUE">55.000000</maxVal>
<minVal Sync="TRUE">15.000000</minVal>
<bitsPerVal Sync="TRUE">8</bitsPerVal>
</Band>
</covDim>
<contentTyp>
<ContentTypCd Sync="TRUE" value="001">
</ContentTypCd>
</contentTyp>
<trianInd>False</trianInd>
<radCalDatAv>False</radCalDatAv>
<camCalInAv>False</camCalInAv>
<filmDistInAv>False</filmDistInAv>
<lensDistInAv>False</lensDistInAv>
</ImgDesc>
</contInfo>
<eainfo>
<detailed>
<enttyp>
<enttypl>Year of highest probability of Gain minus 1970. This layer only shows the year corresponding to the highest modeled probability of Gain across all years of Gain modeled by LCMS. The class value of the original individual years of Gain is 4, while the class values in this layer are the year of the highest probability of Gain minus 1970.</enttypl>
<enttypd>Vegetative indices indicate a positive trend over time. Gain is categorized using one specific change process classification within the training data, described below.</enttypd>
<enttypds> 1: GAIN: Land exhibiting an increase in vegetation cover due to growth and succession over one or more years. Applicable to any areas that may express spectral change associated with vegetation regrowth. In developed areas, growth can result from maturing vegetation and/or newly installed lawns and landscaping. In forests, growth includes vegetation Growth from bare ground, as well as the overtopping of intermediate and co-dominant trees and/or lower-lying grasses and shrubs. Growth/Recovery segments recorded following forest harvest will likely transition through different Land Cover classes as the forest regenerates. For these changes to be considered growth/recovery, spectral values should closely adhere to an increasing trend line (e.g. a positive slope that would, if extended to ~20 years, be on the order of 0.10 units of NDVI) which persists for several years.</enttypds>
</enttyp>
</detailed>
</eainfo>
<Binary>
<Thumbnail>
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</Data>
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