Anurag Mittal

Indian Institute of Technology Madras

Names

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Anurag Mittal

Emails

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****@cse.iitm.ac.in

Education & Career History

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Full Professor
Indian Institute of Technology Madras (iitm.ac.in)
2018Present
 
Associate Professor
Indian Institute of Technology Madras (iitm.ac.in)
20092018
 

Advisors, Relations & Conflicts

Enter all advisors, co-workers, and other people that should be included when detecting conflicts of interest.

PhD Advisee
Prashanth Balasubramanian
****@gmail.com
20112016
 
PhD Advisee
Smit Marvaniya
****@cse.iitm.ac.in
20112015
 
PhD Advisee
Sarthak Parui
****@cse.iitm.ac.in
20112015
 
PhD Advisee
Anoop Katti
****@cse.iitm.ac.in
20112015
 
PhD Advisee
Raj Gupta
****@gmail.com
20072015
 
PhD Advisee
Raj Gupta
****@cse.iitm.ac.in
20072015
 
PhD Advisee
Swarna kamlam Ravindran
****@ee.iitm.ac.in
20112014
 
Coauthor
Arpit Jain
****@umd.edu
20082009
 
Coauthor
Nikos Paragios
****@ecp.fr
20032009
 
Coauthor
Abhinav Gupta
****@cs.cmu.edu
20062008
 
Coauthor
Larry Davis
****@umiacs.umd.edu
20042007
 
Coauthor
Ser-nam Lim
****@gmail.com
20042007
 
Coauthor
Ahmed Elgammal
****@cs.rutgers.edu
20062006
 
Coauthor
Toufiq Parag
****@cs.rutgers.edu
20062006
 
Coauthor
Toufiq Parag
****@gmail.com
20062006
 

Expertise

For each line, enter comma-separated keyphrases representing an intersection of your interests. Think of each line as a query for papers in which you would have expertise and interest. For example: deep learning, RNNs, dependency parsing

Background Subtraction
Present
 
Video Understanding
Present
 
Feature Representation
Present
 
zero-shot learning
Present
 
Person Re-identification
Present
 
Video Surveillance
Present
 
Sensor Planning
Present