| CARVIEW |
Deep Chakraborty
Ph.D. CandidateUMass Amherst
dchakraborty (at) cs.umass.edu
About Me
I am a Ph.D. candidate at the Manning College of Information & Computer Sciences at UMass Amherst where I investigate fundamental problems in computer vision through the lens of self-supervised learning and information theory, under the supervision of Erik Learned-Miller at the Vision lab.
I have also worked with Mario Parente from RHOgroup, and Ina Fiterau from InfoFusion lab in the past on problems in applied computer vision and deep learning.
My industry experience includes two research internships at Apple and one at Philips Lighting Research, where I worked on a variety of topics from scene understanding to audio processing.
In my free time, I love to experiment with coffee brewing techniques (inspired by James Hoffman), go on long rides on my road bike, and listen to classic rock music (I’m a big fan of Queen).
I am on the industry job market for Research or Applied Scientist roles starting June 2026!
Here’s my résumé.
Research Interests
- Machine Learning: self-supervised learning, unsupervised learning, information theory
- Computer Vision: scene understanding, object detection, tracking
News
[Nov. 2025] RadialVCReg by Yilun Kuang et al., an alternative way of learning maximally informative SSL representations (follow up work to E2MC) will appear at NeurIPS 2025 UniReps and NeurReps workshops. I will be attending in person.
[Oct. 2025] I was recognized as an outstanding reviewer at ICCV 2025 (Top 2.6% of 12,171 reviewers).
[Sep. 2025] I successfully defended by dissertation proposal, for my planned Ph.D. thesis titled “Information-Theoretic Methods for Understanding and Improving Representations in Neural Networks”.
[Sep. 2025] My E2MC poster received the best poster award at the Prairie/MIAI Artificial Intelligence Summer School (PAISS 2025) in Grenoble, France.
[Jan. 2025] Our E2MC paper has been accepted to AISTATS 2025! I will be presenting in person at the conference in Thailand from May 3-6. Read it here.
Publications
2025 | 2024 | 2022 | 2019 | 2018 | 2016
[* = Authors Contributed Equally]
2025
-
Radial-VCReg: More Informative Representation Learning through Radial Gaussianization
Yilun Kuang, Yash Dagade, Deep Chakraborty, Erik Learned-Miller, Randall Balestriero, Tim G. J. Rudner, Yann LeCun
NeurIPS 2025 Workshop on Unifying Representations in Neural Models
NeurIPS 2025 Workshop on Symmetry and Geometry in Neural Representations
[PDF] -
A Survey on Data Curation for Visual Contrastive Learning: Why Crafting Effective Positive and Negative Pairs Matters
Shasvat Desai, Debasmita Ghose, Deep Chakraborty
In Submission
[arXiv] -
Improving Pre-trained Self-Supervised Embeddings Through Effective Entropy Maximization
Deep Chakraborty, Yann LeCun, Tim G. J. Rudner, Erik Learned-Miller
International Conference on Artificial Intelligence and Statistics (AISTATS)
[PDF] [arXiv] [Code]
2024
- Squeezing Water from a Stone: Improving Pre-trained Self-Supervised Embeddings Through Effective Entropy Maximization
Deep Chakraborty, Tim G. J. Rudner, Erik Learned-Miller
NeurIPS 2024 Workshop on Self-Supervised Learning - Theory and Practice
[PDF]
2022
- Self-Supervised Learning to Guide Scientifically Relevant Terrain Categorization in Martian Terrain Images
Tejas Panambur*, Deep Chakraborty*, Melissa Meyer, Ralph Milliken, Erik Learned-Miller, Mario Parente
IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW)
[PDF] [arXiv] [Code]
2019
-
Nonparallel emotional speech conversion
Jian Gao, Deep Chakraborty, Hamidou Tembine, Olaitan Olaleye
Annual Conference of the International Speech Communication Association (INTERSPEECH)
[PDF] [arXiv] [Project Page] -
Pedestrian Detection in Thermal Images using Saliency Maps
Debasmita Ghose*, Shasvat Desai*, Sneha Bhattacharya*, Deep Chakraborty*, Madalina Fiterau, Tauhidur Rahman
IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW)
[PDF] [arXiv] [Project Page] [Spotlight Video]
2018
- Unsupervised Hard Example Mining from Videos for Object Detection
SouYoung Jin*, Aruni RoyChowdhury*, Huaizu Jiang, Ashish Singh, Aditya Prasad, Deep Chakraborty, Erik Learned-Miller
European Conference on Computer Vision (ECCV)
[PDF] [arXiv] [Project Page]
2016
- Bird Call Identification using Dynamic Kernel based Support Vector Machines and Deep Neural Networks
Deep Chakraborty, Paawan Mukker, Padmanabhan Rajan, Dileep A.D.
IEEE International Conference on Machine Learning and Applications (ICMLA)
[PDF]
Activities
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