USC Researchers Unveil Breakthroughs in Robotics at ICRA 2024 – USC Viterbi
Researchers from the USC School of Advanced Computing and the USC Viterbi School of Engineering are co-authors on 24 papers at the International Conference on Robotics and Automation (ICRA) in Japan this week, one of the premier gatherings in the field of robotics and automation.
Authors include faculty and students from the Thomas Lord Department of Computer Science, the Ming Hsieh Department of Computer Science and Electrical Engineering, and the Department of Aerospace and Mechanical Engineering exploring innovative work in multi-robot systems, imitation learning, preference-based reward learning, robotics with large language models, and more. In addition to the papers, USC researchers also served as chair or co-chair at multiple sessions.
For detailed program information, please see the ICRA conference website.
USC at ICRA 2024
PAPERS
Safe Planning in Dynamic Environments Using Conformal Prediction
Lars Lindemann, Matthew Cleaveland, Gihyun Shim, George J. Pappas
Zhehui Huang, Zhaojing Yang, Rahul Krupani, Baskın Şenbaşlar, Sumeet Batra, Gaurav S. Sukhatme
Training Diverse High-Dimensional Controllers by Scaling Covariance Matrix Adaptation MAP-Annealing
Bryon Tjanaka, Matthew C. Fontaine, David H. Lee, Aniruddha Kalkar, Stefanos Nikolaidis
AG-CVG: Coverage Planning with a Mobile Recharging UGV and an Energy-Constrained UAV
Nare Karapetyan, Ahmad Bilal Asghar, Amisha Bhaskar, Guangyao Shi, Dinesh Manocha, Pratap Tokekar
A Generalized Acquisition Function for Preference-Based Reward Learning
Evan Ellis, Gaurav R. Ghosal, Stuart J. Russell, Anca Dragan, Erdem Bıyık
SPRINT: Scalable Policy Pre-Training Via Language Instruction Relabeling
Jesse Zhang, Karl Pertsch, Jiahui Zhang, Joseph J. Lim
Detecting and Mitigating System-Level Anomalies of Vision-Based Controllers
Aryaman Gupta, Kaustav Chakraborty, Somil Bansal
HyperPPO: A Scalable Method for Finding Small Policies for Robotic Control
Shashank Hegde, Zhehui Huang, Gaurav S. Sukhatme
Conformal Predictive Safety Filter for RL Controllers in Dynamic Environments
Kegan J. Strawn, Nora Ayanian, Lars Lindemann
Conditionally Combining Robot Skills Using Large Language Models
K.R. Zentner, Ryan Julian, Brian Ichter, Gaurav S. Sukhatme
Benchmarking Multi-Robot Coordination in Realistic, Unstructured Human-Shared Environments
Lukas Heuer, Luigi Palmieri, Anna Mannucci, Sven Koenig
CppFlow: Generative Inverse Kinematics for Efficient and Robust Cartesian Path Planning
Jeremy Morgan, David Millard, Gaurav S. Sukhatme
Adaptation of Flipper-Mud Interactions Enables Effective Terrestrial Locomotion on Muddy Substrates
Shipeng Liu, Boyuan Huang, Feifei Qian
WOMD-LiDAR: Raw Sensor Dataset Benchmark for Motion Forecasting
Kan Chen, Runzhou Ge, Hang Qiu, Rami AI-Rfou, Charles R. Qi, Xuanyu Zhou, Zoey Yang, Scott Ettinger, Pei Sun, Zhaoqi Leng, Mustafa Baniodeh, Ivan Bogun, Weiyue Wang, Mingxing Tan, Dragomir Anguelov
Francisco M. F. R. Gonçalves, Ryan M. Bena, Konstantin I. Matveev, Néstor O. Pérez-Arancibia
Darren Chiu, Radhika Nagpal, Bahar Haghighat
Learning Agile Locomotion and Adaptive Behaviors via RL-augmented MPC
Yiyu Chen, Quan Nguyen
Improving Safety in Human-Robot Collaboration Via Mixed Reality-Augmented Deep Reinforcement Learning
Satyandra K. Gupta, Manyar, Omey Mohan
Demonstration of Dynamic Loco-Manipulation on HECTOR: Humanoid for Enhanced ConTrol and Open-Source Research
Junheng Li, Junchao Ma, Omar Kolt, Manas Shah, Quan Nguyen
Hierarchical Optimization-Based Control for Whole-Body Loco-Manipulation of Heavy Objects
Alberto Rigo, Muqun Hu, Satyandra K. Gupta, Quan Nguyen
Using Large Language Models to Generate and Apply Contingency Handling Procedures in Collaborative Assembly Applications
Jeon Ho Kang, Neel Dhanaraj, Siddhant Ravindra Wadaskar, Satyandra K. Gupta
Safety-Aware Perception for Autonomous Collision Avoidance in Dynamic Environments
Ryan Bena, Chongbo Zhao, Quan Nguyen
Multi-Robot Task Allocation under Uncertainty Via Hindsight Optimization
Neel Dhanaraj, Jeon Ho Kang, Anirban Mukherjee, Heramb Nemlekar, Stefanos Nikolaidis, Satyandra K. Gupta,
Open X-Embodiment: Robotic Learning Datasets and RT-X Models
Collaboration between 21 institutions including USC (Gaurav Sukhatme), led by Google DeepMind.
For detailed program information, please see the ICRA conference website.
ORAL SESSIONS
Multi-Robot Systems I (oral session)
Chair: Gaurav Sukhatme (USC)
Co-Chair: Asako Kanezaki (Tokyo Institute of Technology)
Imitation Learning (oral session)
Chair: Edward Johns (Imperial College London)
Co-Chair: Erdem Bıyık (USC)
Robotics with Large Language Models (oral session)
Chair: Chiori Hori (Mitsubishi Electric Research Laboratories)
Co-Chair: Gaurav Sukhatme (USC)
Deep Learning III (oral session)
Chair: Gaurav Sukhatme (USC)
Co-Chair: John M. Dolan (Carnegie Mellon University)
Published on May 14th, 2024
Last updated on May 16th, 2024