Manish P. Kale
Centre for Development of Advanced Computing
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Publication
Featured researches published by Manish P. Kale.
Remote Sensing | 2015
P. S. Roy; Arijit Roy; P. K. Joshi; Manish P. Kale; Vijay K. Srivastava; Sushil K. Srivastava; Ravi S. Dwevidi; Chitiz Joshi; M. D. Behera; Prasanth Meiyappan; Yeshu Sharma; Atul K. Jain; J. S. Singh; Yajnaseni Palchowdhuri; Bhavani Pinjarla; V. Chakravarthi; Nani Babu; Mahalakshmi S. Gowsalya; Praveen Thiruvengadam; Mrinalni Kotteeswaran; Vishnu Priya; Krishna Murthy V.N. Yelishetty; Sandeep Maithani; Gautam Talukdar; Indranil Mondal; K. S. Rajan; Prasad S. Narendra; Sushmita Biswal; Anusheema Chakraborty; Hitendra Padalia
India has experienced significant Land-Use and Land-Cover Change (LULCC) over the past few decades. In this context, careful observation and mapping of LULCC using satellite data of high to medium spatial resolution is crucial for understanding the long-term usage patterns of natural resources and facilitating sustainable management to plan, monitor and evaluate development. The present study utilizes the satellite images to generate national level LULC maps at decadal intervals for 1985, 1995 and 2005 using onscreen visual interpretation techniques with minimum mapping unit of 2.5 hectares. These maps follow the classification scheme of the International Geosphere Biosphere Programme (IGBP) to ensure compatibility with other global/regional LULC datasets for comparison and integration. Our LULC maps with more than 90% overall accuracy highlight the changes prominent at regional level, i.e., loss of forest cover in central and northeast India, increase of cropland area in Western India, growth of peri-urban area, and relative increase in plantations. We also found spatial correlation between the cropping area and precipitation, which in turn confirms the monsoon dependent agriculture system in the country. On comparison with the existing global LULC products (GlobCover and MODIS), it can be concluded that our dataset has captured the maximum cumulative patch diversity frequency indicating the detailed representation that can be attributed to the on-screen visual interpretation technique. Comparisons with global LULC products (GlobCover and MODIS) show that our dataset captures maximum landscape diversity, which is partly attributable to the on-screen visual interpretation techniques. We advocate the utility of this database for national and regional studies on land dynamics and climate change research. The database would be updated to 2015 as a continuing effort of this study.
Environmental Monitoring and Assessment | 2016
Manish P. Kale; Manoj Chavan; Satish Pardeshi; Chitiz Joshi; Prabhakar Alok Verma; P. S. Roy; Shekhar Srivastav; V. K. Srivastava; A. K. Jha; Swapnil Chaudhari; Yogesh Giri; Y. V. N. Krishna Murthy
The Western Ghats (WG) of India, one of the hottest biodiversity hotspots in the world, has witnessed major land-use and land-cover (LULC) change in recent times. The present research was aimed at studying the patterns of LULC change in WG during 1985–1995–2005, understanding the major drivers that caused such change, and projecting the future (2025) spatial distribution of forest using coupled logistic regression and Markov model. The International Geosphere Biosphere Program (IGBP) classification scheme was mainly followed in LULC characterization and change analysis. The single-step Markov model was used to project the forest demand. The spatial allocation of such forest demand was based on the predicted probabilities derived through logistic regression model. The R statistical package was used to set the allocation rules. The projection model was selected based on Akaike information criterion (AIC) and area under receiver operating characteristic (ROC) curve. The actual and projected areas of forest in 2005 were compared before making projection for 2025. It was observed that forest degradation has reduced from 1985–1995 to 1995–2005. The study obtained important insights about the drivers and their impacts on LULC simulations. To the best of our knowledge, this is the first attempt where projection of future state of forest in entire WG is made based on decadal LULC and socio-economic datasets at the Taluka (sub-district) level.
Current Science | 2010
R. K. Panigrahy; Manish P. Kale; Upasana Dutta; Asima Mishra; Bishwarup Banerjee; Sarnam Singh
International Journal of Applied Earth Observation and Geoinformation | 2015
P. S. Roy; M. D. Behera; M.S.R. Murthy; Arijit Roy; Sarnam Singh; S. P. S. Kushwaha; C.S. Jha; S. Sudhakar; P. K. Joshi; Ch. Sudhakar Reddy; Stutee Gupta; Girish Pujar; C.B.S. Dutt; V.K. Srivastava; M.C. Porwal; Poonam Tripathi; J. S. Singh; V. S. Chitale; Andrew K. Skidmore; G. Rajshekhar; Deepak Kushwaha; Harish Karnatak; Sameer Saran; Amarnath Giriraj; Hitendra Padalia; Manish P. Kale; Subrato Nandy; C. Jeganathan; C.P. Singh; C.M. Biradar
Current Science | 2004
Manish P. Kale; Sarnam Singh; P. S. Roy; Vrishali Deosthali; V. S. Ghole
Journal of The Indian Society of Remote Sensing | 2009
Manish P. Kale; Shirish A. Ravan; P. S. Roy; Sarnam Singh
Tropical Ecology | 2002
Manish P. Kale; Sarnam Singh; P. S. Roy
Biodiversity and Conservation | 2012
Manish P. Kale; P. S. Roy
Journal of The Indian Society of Remote Sensing | 2010
Manish P. Kale; G. Talukdar; R. K. Panigrahy; Sarnam Singh
Current Science | 2004
Shirish Ravan; Manish P. Kale; P. S. Roy