Rei Kawakami

Tokyo Institute of Technology, Tokyo Institute of Technology

Names

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Rei Kawakami (Preferred)

Emails

Enter email addresses associated with all of your current and historical institutional affiliations, as well as all your previous publications, and the Toronto Paper Matching System. This information is crucial for deduplicating users, and ensuring you see your reviewing assignments.

****@hc.ic.i.u-tokyo.ac.jp
,
****@c.titech.ac.jp
,
****@sc.e.titech.ac.jp

Education & Career History

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Associate Professor
Tokyo Institute of Technology, Tokyo Institute of Technology (titech.ac.jp)
2022Present
 
Specially Appointed Associate Professor
Tokyo Institute of Technology, Tokyo Institute of Technology (titech.ac.jp)
20202022
 
Research Assistant Professor
The University of Tokyo, Tokyo Institute of Technology (u-tokyo.ac.jp)
20182020
 
Assistant Professor
The University of Tokyo, Tokyo Institute of Technology (u-tokyo.ac.jp)
20142018
 
Postdoc
Osaka University, Tokyo Institute of Technology (osaka-u.ac.jp)
20132013
 
Postdoc
University of California Berkeley (berkeley.edu)
20112013
 
Postdoc
The University of Tokyo, Tokyo Institute of Technology (u-tokyo.ac.jp)
20082011
 
PhD student
The University of Tokyo, Tokyo Institute of Technology (u-tokyo.ac.jp)
20052008
 

Advisors, Relations & Conflicts

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PhD Advisor
Katsushi Ikeuchi
****@microsoft.com
20032008
 

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

generalized feature learning
2019Present
 
abnormal detection, novelty detection, anomaly detection
2016Present
 
deep learning, object detection, classification
2014Present
 
tracking, motion learning
2014Present
 
raindrop removal, rain removal, dehazing, deweathering
2008Present
 
hyperspectral imaging
2008Present
 
physics-based vision
2003Present