On The Path Towards Robot Vision with Aljosa Osep
EPISODE 581
|
JULY
4,
2022
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About this Episode
Today we wrap up our coverage of the 2022 CVPR conference joined by Aljosa Osep, a postdoc at the Technical University of Munich & Carnegie Mellon University. In our conversation with Aljosa, we explore his broader research interests in achieving robot vision, and his vision for what it will look like when that goal is achieved. The first paper we dig into is Text2Pos: Text-to-Point-Cloud Cross-Modal Localization, which proposes a cross-modal localization module that learns to align textual descriptions with localization cues in a coarse-to-fine manner. Next up, we explore the paper Forecasting from LiDAR via Future Object Detection, which proposes an end-to-end approach for detection and motion forecasting based on raw sensor measurement as opposed to ground truth tracks. Finally, we discuss Aljosa’s third and final paper Opening up Open-World Tracking, which proposes a new benchmark to analyze existing efforts in multi-object tracking and constructs a baseline for these tasks.
About the Guest
Aljosa Osep
Technical University of Munich & Carnegie Mellon University
Resources
- Paper: Text2Pos: Text-to-Point-Cloud Cross-Modal Localization
- Paper: Forecasting From LiDAR via Future Object Detection
- Paper: Opening Up Open-World Tracking
- Paper: Tracking without bells and whistles
- Paper: Towards Open World Recognition
- Dynamic Visual Localization and Segmentation with Laura Leal-Taixé - #168
