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Sanjay Ghosh

Researcher at Indian Institute of Technology Roorkee

Publications -  209
Citations -  3999

Sanjay Ghosh is an academic researcher from Indian Institute of Technology Roorkee. The author has contributed to research in topics: Bilateral filter & Normalized Difference Vegetation Index. The author has an hindex of 30, co-authored 196 publications receiving 3079 citations. Previous affiliations of Sanjay Ghosh include Indian Institutes of Technology & University of Cambridge.

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Journal ArticleDOI

Extraction of built-up areas using convolutional neural networks and transfer learning from sentinel-2 satellite images

TL;DR: Results indicate high accuracy of proposed fine-tuned ConvNets on a 4-channel Sentinel-2 dataset for built-up area extraction and compare the accuracies with existing shallow networks.
Proceedings ArticleDOI

Saliency Guided Image Detail Enhancement

TL;DR: An algorithm based on adaptive bilateral filtering for selectively enhancing salient regions of an image that does not suffer from gradient reversals and halo artifacts, and does not amplify fine details in non-salient regions that often appear as noise grains in the enhanced image.
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Evaluation of radiometric resolution on land use/land cover mapping in an agricultural area

TL;DR: In this paper, a comparative study has been carried out to evaluate the utility of the simulated 12-bit LISS-III sensor compared with that of the original 7-bit sensor for land use/land cover classification.
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Modeling of parameters for forest fire risk zone mapping

TL;DR: In this paper, a fire risk model was generated by using AHP method, where each category was assigned subjective weight according to their sensitivity to fire and three categories of forest fire risk ranging from very high to low were derived.
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Fast separable nonlocal means

TL;DR: It is demonstrated that the PatchLift-based implementation of separable NLM is a few orders faster than standard NLM and is competitive with existing fast implementations of NLM.