[1] A TASSI, A MASSETTI, A GIL. The Introduction to Functional Analysis Ckage: a RAO’s Q Diversity Index-Based Application for Land-Cover/Land-Use Change Detection in Multifunctional Agricultural Areas. Computers and Electronics in Agriculture, 196, 106861(2022).
[2] S DERAKHSHAN, S L CUTTER, C WANG. Remote Sensing Derived Indices for Tracking Urban Land Surface Change in Case of Earthquake Recovery. Remote Sensing, 12, 895(2020).
[3] D R SOWMYA, P D SHENOY, K R VENUGOPAL. Post Classification Change Detection Based on Feature-Based Ensemble Classifiers. International Journal of Spatio-Temporal Data Science, 2, 149-169(2021).
[4] H R X CHEN, J SONG, C WU et al. Exchange Means Change: An Unsupervised Single-Temporal Change Detection Framework Based on Intra- and Inter-Image Patch Exchange. ISPRS Journal of Photogrammetry and Remote Sensing, 206, 87-105(2023).
[5] J E PEREIRA-PIRES, V AUBARD, R A RIBEIRO et al. Semi-Automatic Methodology for Fire Break Maintenance Operations Detection with Sentinel-2 Imagery and Artificial Neural Network. Remote Sensing, 12, 909(2020).
[6] M HEMALATHA. Water Feature Extraction, Enhancement and Change Detection of Multi-Temporal Satellite Images Using MNDWI2-PCA. IOP Conference Series: Materials Science and Engineering, 1049, 012005(2021).
[7] A F HABIB, Y R LEE, M MORGAN. Surface Matching and Change Detection Using a Modified Hough Transformation for Robust Parameter Estimation. The Photogrammetric Record, 17, 303-315(2001).
[8] R MANONMANI, G MARY, D SUGANYA. Remote Sensing and GIS Application in Change Detection Study in Urban Zone Using Multi Temporal Satellite. International Journal of Geomatics and Geosciences, 1, 60-65(2010).
[9] A PRADHAN, T CHANDRAKAR, S K NAG et al. Land Use Classification and Change Detection of BASTAR District, Chhattisgarh State, India by Using Gis and Remote Sensing Techniques. Indian Journal of Ecology, 49, 1363-1368(2022).
[10] S W WANG, B M GEBRU, M LAMCHIN et al. Land Use and Land Cover Change Detection and Prediction in the Kathmandu District of Nepal Using Remote Sensing and GIS. Sustainability, 12, 3925(2020).
[11] R SAKTHIVEL, R MANIVEL, R J RAJ et al. Remote Sensing and GIS Based Forest Cover Change Detection Study in Kalrayan Hills, Tamil Nadu. Journal of Environmental Biology, 31, 737-747(2010).
[12] D S LU, P MAUSEL, E M E BRONDIZIO. Change Detection Techniques. International Journal of Remote Sensing, 25, 2365-2401(2004).
[13] R K PANIGRAHY, M P KALE, U DUTTA et al. Forest Cover Change Detection of Western Ghats of Maharashtra Using Satellite Remote Sensing Based Visual Interpretation Technique. Current Science, 98, 657-664(2010).
[19] A LIAW, M WIENER. Classification and Regression by RandomForest. R Journal, 2/3, 18-22(2002).
[20] N KUSSUL, M LAVRENIUK, S SKAKUN et al. Deep Learning Classification of Land Cover and Crop Types Using Remote Sensing Data. IEEE Geoscience and Remote Sensing Letters, 14, 778-782(2017).
[21] A GHOSH, N S MISHRA, S GHOSH. Fuzzy Clustering Algorithms for Unsupervised Change Detection in Remote Sensing Images. Information Sciences, 181, 699-715(2011).
[22] J S DENG, K WANG, Y H DENG et al. PCA-Based Land-Use Change Detection and Analysis Using Multitemporal and Multisensor Satellite Data. International Journal of Remote Sensing, 29, 4823-4838(2008).
[23] X Y ZHANG, C B SCHAAF, M A FRIEDL et al. MODIS Tasseled Cap Transformation and Its Utility. IEEE International Geoscience and Remote Sensing Symposium, 2, 1063-1065(2002).
[24] S T SEYDI, M HASANLOU, M AMANI. A New End-to-End Multi-Dimensional CNN Framework for Land Cover/Land Use Change Detection in Multi-Source Remote Sensing Datasets. Remote Sensing, 12, 12(2010).
[25] O SEFRIN, F M RIESE, S KELLER. Deep Learning for Land Cover Change Detection. Remote Sensing, 13, 78(2020).
[26] K J WESSELS, DEN B F VAN, D P ROY et al. Rapid Land Cover Map Updates Using Change Detection and Robust Random Forest Classifiers. Remote Sensing, 8, 888(2016).
[27] J CHEN, M LU, X H CHEN et al. A Spectral Gradient Difference Based Approach for Land Cover Change Detection. ISPRS Journal of Photogrammetry and Remote Sensing, 85, 1-12(2013).
[28] COOLEY T, ERSON G P, FELDE G W, et al. FLAASH, a MODTRAN4Based Atmospheric Crection Algithm, Its Application Validation[C]IEEE International Geoscience Remote Sensing Symposium, June 2428, 2002, Tonto, ON, Canada. Piscataway, NJ: IEEE, 2002: 14141418. DOI: 10.1109IGARSS.2002.1026134.
[29] C T VU, P D PHAN, D M CHANDLER. A Spectral and Spatial Measure of Local Perceived Sharpness in Natural Images. IEEE Transactions on Image Processing, 21, 934-945(2011).
[30] Q ZHANG, Q Q YUAN, J LI et al. Hybrid Noise Removal in Hyperspectral Imagery with a Spatial–Spectral Gradient Network. IEEE Transactions on Geoscience and Remote Sensing, 57, 7317-7329(2019).
[31] ANGELOPOULOU E, LEE S W, BAJCSY R. Spectral Gradient: a Material De Invariant to Geometry Incident Illumination[C]Proceedings of the Seventh IEEE International Conference on Computer Vision, September 2027, 1999, Kerkyra, Greece. Piscataway, NJ: IEEE, 1999: 861867. DOI: 10.1109ICCV.1999.790312.
[32] L YAO, W J ZHANG, B ZHANG et al. Surface Emissivity Image Simulation for Atmospheric Absorption Bands Based on Spectral Mixing. Remote Sensing Technology and Application, 32, 674-682(2017).
[33] C XI, S ZHANFENG, Z YANAN et al. The Spectral Characteristics Separability Analysis of Spectral Database of Typical Objects of Land Surface Based on Bhattacharyya Distance. Remote Sensing Technology and Application, 28, 707-713(2013).
[34] S ARIVAZHAGAN, S ANBAZHAGAN. ASTER Data Analyses for Lithological Discrimination of Sittampundi Anorthositic Complex, Southern India. Geosciences Research, 2, 196-209(2017).
[35] L BREIMAN. Random Forests. Machine Learning, 45, 5-32(2001).
[36] M PAL. Random Forest Classifier for Remote Sensing Classification. International Journal of Remote Sensing, 26, 217-222(2005).
[39] S A SINGH, R A TALWAR. A Comparative Study on Change Vector Analysis Based Change Detection Techniques. Sadhana, 39, 1311-1331(2014).
[41] S MANSOR, H SHAFRI, J N D AL-DOSKI et al. NDVI Differencing and Post-Classification to Detect Vegetation Changes in Halabja City, Iraq. Journal of Applied Geology and Geophysics, 1, 1-10(2013).
[42] SHIMU S A, AKTAR M, AFJAL M I, et al. NDVI Based Change Detection in Sundarban Mangrove Fest Using Remote Sensing Data[C]2019 4th International Conference on Electrical Infmation Communication Technology (EICT), December 2022, 2019, Khulna, Bangladesh. Piscataway, NJ: IEEE, 2019: 15. DOI: 10.1109EICT48899.2019.9068819.
[43] L T SOHL. Change Analysis in the United Arab Emirates: An Investigation of Techniques. Photogrammetric Engineering and Remote Sensing, 65, 475-484(1999).
[44] F E LAMBIN. Change Detection at Multiple Temporal Scales: Seasonal and Annual Variations in Landscape Variables. Photogrammetric Engineering & Remote Sensing, 62, 928-931(1996).
[45] J G LYON, D YUAN, R LUNETTA et al. A Change Detection Experiment Using Vegetation Indices. Photogrammetric Engineering and Remote Sensing, 64, 143-150(1998).
[46] N ZERROUKI, F HARROU, Y SUN et al. A Machine Leaning-Based Approach for Land Cover Change Detection Using Remote Sensing and Radiometric Measurements. IEEE Sensors Journal, 19, 5843-5850(2019).
[47] DAUDT R C, LE SAUX B, BOULCH A, et al. Urban Change Detection f Multispectral Earth Observation Using Convolutional Neural wks[C]IGARSS 20182018 IEEE International Geoscience Remote Sensing Symposium, July 2227, 2018, Valencia, Spain. Piscataway, NJ: IEEE, 2018: 21152118. DOI: 10.1109IGARSS.2018.8518015.
[48] M HUSSAIN, D CHEN, A CHENG et al. Change Detection From Remotely Sensed Images: From Pixel-Based to Object-Based Approaches. ISPRS Journal of Photogrammetry and Remote Sensing, 80, 91-106(2013).
[49] SUI H G, ZHOU Q M, GONG J Y, et al. Processing of MultiTempal Data Change Detection[C]21st Congress of the International Society f Photogrammetry Remote Sensing, July 311, 2008, Beijing, China. ISPRS, 2008: 227247.
[50] G XIAN, C HOMER, J FRY. Updating the 2001 National Land Cover Database Land Cover Classification to 2006 by Using Landsat Imagery Change Detection Methods. Remote Sensing of Environment, 113, 1133-1147(2009).