CS 201 | Daniel Seita, USC

“Data-Efficient Robot Manipulation through Multimodal Augmentation”

Recent progress in robot learning has produced impressive results, yet many systems still require learning from large datasets of demonstrations. This talk presents work on data-efficient manipulation using multimodal diffusion-based augmentation that synthesizes geometrically consistent images and action labels to reduce demonstration requirements. We discuss how these will lead toward robot manipulators that can learn and operate with reduced demonstration requirements across cluttered and real-world environments.

Daniel Seita is an Assistant Professor in the Computer Science department at the University of Southern California and the director of the Sensing, Learning, and Understanding for Robotic Manipulation (SLURM) Lab. His research interests are in computer vision, machine learning, and foundation models for robot manipulation, focusing on improving performance in visually and geometrically challenging settings. Daniel was a postdoc at Carnegie Mellon University’s Robotics Institute and holds a PhD in computer science from the University of California, Berkeley. Daniel has been honored with the AAAI 2026 New Faculty Highlights program. He presents his work at premier robotics conferences such as ICRA, IROS, RSS, and CoRL.

Date/Time:
Date(s) - Mar 10, 2026
4:00 pm - 5:45 pm

Location:
3400 Boelter Hall
420 Westwood Plaza Los Angeles California 90095