Home
Categories
EXPLORE
True Crime
Comedy
Society & Culture
Business
Sports
Technology
Health & Fitness
About Us
Contact Us
Copyright
© 2024 PodJoint
Podjoint Logo
US
00:00 / 00:00
Sign in

or

Don't have an account?
Sign up
Forgot password
https://is1-ssl.mzstatic.com/image/thumb/Podcasts211/v4/86/0c/75/860c75aa-068a-18b9-1cb5-600f803acdd4/mza_17177667092256625558.jpg/600x600bb.jpg
AI Illuminated
The AI Illuminators
25 episodes
6 days ago
A new way to keep up with AI research. Delivered to your ears. Illuminated by AI. Part of the GenAI4Good initiative.
Show more...
Courses
Education
RSS
All content for AI Illuminated is the property of The AI Illuminators and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
A new way to keep up with AI research. Delivered to your ears. Illuminated by AI. Part of the GenAI4Good initiative.
Show more...
Courses
Education
https://d3t3ozftmdmh3i.cloudfront.net/staging/podcast_uploaded_episode/42256170/42256170-1729653180691-04e660e738ed.jpg
CooHOI: Learning Cooperative Human-Object Interaction with Manipulated Object Dynamics
AI Illuminated
5 minutes 28 seconds
1 year ago
CooHOI: Learning Cooperative Human-Object Interaction with Manipulated Object Dynamics

[00:00] Intro

[00:31] Challenge: Limited multi-humanoid training data

[00:55] CooHOI's two-phase learning framework

[01:49] Object dynamics as implicit agent communication

[02:25] Bounding box strategy for long objects

[03:07] Results: Superior performance vs baselines

[03:42] Ablation study findings: Key system components

[04:18] Limitation: Basic hand manipulation only

[04:57] Impact: New approach to robot cooperation


Authors: Jiawei Gao, Ziqin Wang, Zeqi Xiao, Jingbo Wang, Tai Wang, Jinkun Cao, Xiaolin Hu, Si Liu, Jifeng Dai, Jiangmiao Pang


Affiliations: Shanghai AI Laboratory, Tsinghua University, Beihang University, Nanyang Technological University, Carnegie Mellon University


Abstract: Recent years have seen significant advancements in humanoid control, largely due to the availability of large-scale motion capture data and the application of reinforcement learning methodologies. However, many real-world tasks, such as moving large and heavy furniture, require multi-character collaboration. Given the scarcity of data on multi-character collaboration and the efficiency challenges associated with multi-agent learning, these tasks cannot be straightforwardly addressed using training paradigms designed for single-agent scenarios. In this paper, we introduce Cooperative Human-Object Interaction (CooHOI), a novel framework that addresses multi-character objects transporting through a two-phase learning paradigm: individual skill acquisition and subsequent transfer. Initially, a single agent learns to perform tasks using the Adversarial Motion Priors (AMP) framework. Following this, the agent learns to collaborate with others by considering the shared dynamics of the manipulated object during parallel training using Multi Agent Proximal Policy Optimization (MAPPO). When one agent interacts with the object, resulting in specific object dynamics changes, the other agents learn to respond appropriately, thereby achieving implicit communication and coordination between teammates. Unlike previous approaches that relied on tracking-based methods for multi-character HOI, CooHOI is inherently efficient, does not depend on motion capture data of multi-character interactions, and can be seamlessly extended to include more participants and a wide range of object types.


Link: https://arxiv.org/abs/2406.14558v2

AI Illuminated
A new way to keep up with AI research. Delivered to your ears. Illuminated by AI. Part of the GenAI4Good initiative.