- Akbari, M., karimzadeh, H.R, Modarres, R. and Chakoshi, B., 2007. Assessment and classification of desertification using RS & GIS techniques (Case study: the Arid Region, in the North of Isfahan). Iranian journal of Range and Desert Reseach, 14 (2): 124-142 (In Persian).
- Allen, T.R. and Kupfer, J.A., 2000. Alication of spherical statistics to change vector analysis of Landsat data: Southern Aalachian spruce-fir forests. Journal of Remote Sensing of Environment, 74: 482–493.
- Azizi, Z., Najafia, A. and Sohrabia, H., 2008. Forest canopy density estimating, using satellite images. Photogrammetry, Remote Sensing and Spatial Information Sciences, 37: Part B8 (In Persian).
- Becerril-Pina, R., Dıaz-Delgadoa, C., Mastachi-Lozaa, C.A. and Gonzalez-Sosab, E., 2016. Integration of remote sensing techniques for monitoring desertification in Mexico. Journal of Human and Ecological Risk Assessment, 22 (6): 1323–1340.
- Becerril-Pina, R., Mastachi-Lozaa, C.A., Gonzalez-Sosab, E., Dıaz-Delgadoa, C. and Ba, K.H.M., 2015. Assessing desertification risk in the semi-arid highlands of central Mexico. Journal of Arid Environments, 120: 4-13.
- Bezerraa, F.G.S., Aguiara, A.P.D., Alvaláb, R.C.S., Giarollaa, A., Bezerraa, K.R.A., Limac, P.V.P.S., Do Nascimentod, F.R. and Araie, E., 2020. Analysis of areas undergoing desertification, using EVI2 multi-temporal data based on MODIS imagery as indicator. Journal of Ecological Indicators, 117: 106579.
- Bhavani, M., Hanifar Sangeetha, V., Kalaivani, K., Ulagapriya, K. and Saritha A., 2018. Change detection algorithm for multi-temporal satellite images: A review. International Journal of Engineering and Technology(UAE), 7 (2): 206-209.
- Carvalho Júnior, O.A., Guimarães, R.F., Gillespie, A.R, Silva, N.C. and Gomes, R.A.T., 2011. A new approach to change vector aAnalysis using distance and similarity measures. Journal of Remote Sensing, 3: 2473-2493.
- Civco, D.L., Hurd, J.D., Wilson, E.H., Song, M. and Zhang, Z., 2002. A comparison of land use and land cover change detection methods. American Congress on Surveying & Mapping – American Society for Photogrammetry and Remote Sensing 2002 Annual Conference Proceedings.
- Darvish, M., 2019. An introduction to the method of desertification assessment in Iran using adopted Criteria and Indicators. Iranian Journal of Range and Desert Research, 10 (3): 301-383 (In Persian).
- Dawelbait, M. and Morari, F., 2012. Monitoring desertification in a Savannah region in Sudan using Landsat images and spectral mixture analysis. Journal of Arid Environments, 80: 45-55.
- Ding, H. and Xingming, H., 2021. Spatiotemporal change and drivers’ analysis of desertification in the arid region of northwest China based on geographic detector. Journal of Environmental Challenges, 4: 100082.
- Ebrahimian, R. and Alesheikh, A., 2019. A change vector analysis method to monitor drought using landsat data. The international archives of the Photogrammetry, remote sensing and spatial information sciences, volume XLII-4/W18, GeoSpatial Conference: 12–14 October 2019, Karaj, Iran (In Persian).
- Ebrahimzadeh, S., Bazrafshan, J. and Ghorbani, K.H., 2013. Comparative study between satellite and ground-based drought indices using change vector analysis technique (Case study of Kermanshah province). Journal of Water and Soil, 27 (5):1034-1045 (In Persian).
- Firouzi, F., Tavosi, T. and Mahmoudi, P., 2019. Investigating the sensitivity of NDVI and EVI vegetation indices to dry and wet years in arid and semi-arid regions (Case study: Sistan plain, Iran). Scientific-Research Quarterly of Geographical Data (SEPEHR), 28 (110):163-179 (In Persian).
- Fitrianto, A. C., Darmawan, A., Tokimatsu, K. and Sufwandika, M., 2018. Estimating the age of oil palm trees using remote sensing technique. In IOP Conference Series: Earth and Environmental Science, 148 (1): 012020.
- Hellden, U., 2008. A coupled human-environment model for desertification simulation and impact studies. Global and Planetary Change, 64: 158-168.
- Hu, Y., Hana, Y. and Zhang, Y., 2020. Land desertification and its influencing factors in Kazakhstan. Journal of Arid Environments, 180: 104203.
- Huete, A., Didan, K., Miura, T., Rodriguez, E.P., Gao, X. and Ferreira, L.G., 2002. Overview of the radiometric and biophysical performance of the MODIS vegetation indices. Gournal of Remote sensing of Environment, 83(1-2), 195-213.
- Huete, A., Justice, C. and Van Leeuwen, W., 1999. MODIS vegetation index (MOD13). Algorithm theoretical basis document, 3: 213-227.
- Jalili, A., 2020. Do's and don'ts in desert ecosystems and selecting the proper management strategy, 5 (2): 3 - Serial Number 21. DOI: 10.22092/irn.2020.121625.(In Persian).
- Jiang, Z., Huete, A., Didan, K. and Miura, T., 2008. Development of a two-band enhanced vegetation index without a blue band. Journal of Remote Sensing, 112: 3833–3845.
- Karamesoutia, M., Panagosb, P. and Kosmas, C., 2018. Model-based spatio-temporal analysis of land desertification risk in Greece. Journal of Catena, 167: 266–275.
- Karavitis, C.A., Tsesmelis, D.E., Oikonomoub, P.D., Kairis, O., Kosmasa, C., Fassouli, V., Ritsema, C., Hessel, R., Jetten, V., Moustakas, N., Todorovic, B., Skondras, N.A., Vasilakou, C.G., Alexandris, S., Kolokytha, E., Stamatakos, D.V., Stricevi, R., Chatzigeorgiadis, E., Brandt, J., Geeson, N. and Quaranta, G., 2020. A desertification risk assessment decision support tool (DRAST). Journal of Catena, 187: 104413.
- Karnieli, A., Qin, Z., Wu, B., Panov, N. and Yan, F., 2014. Spatio-temporal dynamics of land-use and land-cover in the Mu Us Sandy Land, China, using the change vector analysis technique. Journal of Remote Sensing, 6 (10): 9316-9339.
- Kavosi, M. and Frarajzadeh, M., 2015. The evaluation of vegetation variations trend using linear regression methods and change vector analysis. Journal of Geography and Environmental Planning, 25 (4): 69-82. (In Persian)
- Kemp, R., 1994. Technology and the transition to environmental sustainability: The problem of technological regime shifts. Journal of Futures, 26 (10): 1023-1046.
- Le Houerou, H.N., 2006. Desertization. In: Lal, R. (Ed.), Soil Science. CRC Press, Boca Raton, Florida, pp. 468-474.
- Li, B., Tang, H. and Chen, D., 2009. Drought monitoring using the modified temperature/vegetation dryness index, 2nd International Congress on Image and Signal Processing, 17-19 Oct. 2009, China.
- Li, S. and Chen, X., 2014. A new bare-soil index for rapid mapping developing areas using landsat8 data. The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XL-4. ISPRS Technical Commission IV Symposium, 14 – 16 May 2014, Suzhou, China.
- Lorena, R.B., Santos, J.R., Shimabukuro, Y.E., Brown I.F. and Heinrich Kux, H.J., 2002. A change vector analysis technique to monitor land use/land cover in SW Brazilian amazon: Acre state. Proceedings of the International Society for Photogrammetry and Remote Sensing (ISPRS), 1–8.
- Lu, D., Mausel, P., Brondizio, E. and Moran, E., 2004. Change detection techniques. Journal of Remote Sensing, 25 (12): 2365-2407.
- Macías, M.J.G., Carbajala, N. and Vargasb, J.T., 2020. Soil deterioration in the southern Chihuahuan Desert caused by agricultural practices and meteorological events. Journal of Arid Environments, 176: 104097.
- Matsushita, B., Wei, Y., Jin, C., Yuyichi, O. and Guoyn, Q., 2007. Sensitivity of the Enhanced Vegetation Index (EVI) and Normalized Difference Vegetation Index (NDVI) to topographic effects: A case study in high-density Cypress forest. Sensors, 7 (11): 2636-2651.
- MirzaeiZadeh, V., Niknejad, M. and Hojjati, S.M., 2015. Estimation of forest canopy density using FCD. Ecology of Iranian Forests, 3 (5): 75-63 (In Persian).
- Mzid, N., Pignatti, S., Huang,W. and Casa, R., 2021. An analysis of bare soil occurrence in arable croplands for remote sensing topsoil applications. Journal of Remote Sensing, 13: 474-488.
- Nateghi, S., Nohegar, A., Ehsani, A.H. and Bazrafshan, O., 2016. Coastal desert land use monitoring using change vector analysis technique during 2001 to 2014 (Case study: Qeshm Island). Iranian Journal of Range and Desert Research, 23 (2): 404-416 (In Persian).
- Nguyen, C.T., Chidthaisong, A., Diem, P.K. and Huo, L.Z.H., 2021. A modified bare soil index to identify bare land features during agricultural fallow-period in Southeast Asia using Landsat8. Land, 10: 231-245.
- Rikimaru, A., 2003. Concept of FCD mapping model and semi-expert system. Japan Overseas Forestry Consultants Association. Rep. 72 pp.
- Salih, A.A.M., Ganawa, El-T. and Elmah, A.A., 2017. Spectral mixture analysis (SMA) and change vector analysis (CVA) methods for monitoring and mapping land degradation/desertification in arid and semiarid areas (Sudan), using Landsat imagery. The Egyptian Journal of Remote Sensing and Space Sciences, 20: 21–29.
- Sepehr, A., Ekhtesasi, M.R. and Almodaresi, S.A., 2012. Development of desertification indicator system based on DPSIR (Take advantages of Fuzzy-TOPSIS). Geography and Environmental Planning Journal, 45 (1): 33-50. (In Persian)
- Shammi, S.A. and Meng, Q., 2021. Use time series NDVI and EVI to develop dynamic crop growth metrics for yield modeling. Journal of Ecological Indicators, 121: 107124.
- Soleimani Sardo, M., Tavili, A., Alipour, A. and Hashemi, S.M., 2017. Evaluation of desertification hazard severity in the Jaz-Murian region. RS & GIS for Natural Resources, 7 (4):31-44 (In Persian).
- UNCCD, Z.N.L.D., 2012. United Nations convention to combat desertification.
- Xiaolu, S. and Bo, C.H., 2011. Change detection using change vector analysis from landsat TM Images in Wuhan. Procedia Environmental Sciences, 11: 238 – 244.
- Zhan, Q., Zhao, W., Yang, M. and Xiong, D., 2021. A long-term record (1995–2019) of the dynamics of land desertification in the middle reaches of Yarlung Zangbo River basin derived from Landsat data. Journal of Geography and Sustainability, 2: 12–21.
- Zhang, D. and Deng, H., 2020. Historical human activities accelerated climate-driven desertification in China’s Mu Us Desert. Journal of Science of the Total Environment, 708: 134771.
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