Loading Events

MSR Speaking Qualifier

May

14
Tue
Hunter Goforth Robotics Institute,
Carnegie Mellon University
Tuesday, May 14
2:00 pm to 3:30 pm
NSH 4305
Hunter Goforth – MSR Thesis Talk

Title: Learning for Registration in 2D and 3D

 

Abstract: We explore the application of deep learning to 2D (image) and 3D (point cloud) registration, especially in scenarios where traditional methods can fail.

 

In the 2D case, we apply a recently-proposed learning method to the problem of aligning outdoor imagery taken across different seasons or times of day. Further, we extend the method to perform GPS-denied UAV geolocalization by aligning UAV images and satellite imagery.

 

In the 3D case, we develop three novel point cloud registration algorithms based on state-of-the-art networks for point cloud processing. We show the benefits of the learned representation in terms of robustness to initialization, noisy data, object generalizability, and speed.

 

Committee:

Simon Lucey (Advisor)

Michael Kaess

Leo Keselman