Nilesh Kulkarni - MSR Thesis Talk - Robotics Institute Carnegie Mellon University
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MSR Speaking Qualifier

June

3
Mon
Nilesh Kulkarni Robotics Institute,
Carnegie Mellon University
Monday, June 3
5:00 pm to 6:30 pm
NSH 4305
Nilesh Kulkarni – MSR Thesis Talk

Title: Canonical Surface Mapping via Geometric Cycle Consistency

 

Abstract: We explore the task of Canonical Surface Mapping (CSM).  Specifically, given an image, we learn to map pixels on the object to their corresponding locations on an abstract 3D model of the category. But how do we learn such a mapping? A supervised approach would require extensive manual labeling which is not scalable beyond a few hand-picked categories. Our key insight is that the CSM task (pixel to 3D), when combined with 3D projection (3D to pixel), completes a cycle. Hence, we can exploit a geometric cycle consistency loss, thereby allowing us to forgo the dense manual supervision. Our approach allows us to train a CSM model for a diverse set of classes, without sparse or dense keypoint annotation, by leveraging only foreground mask labels for training. We show that our predictions also allow us to infer dense correspondence between two images, and compare the performance of our approach against several methods that predict correspondence by leveraging the varying amount of supervision.

 

Committee:

Abhinav Gupta (advisor)

Martial Hebert

Gunnar Atli Sigurdsson