RADAR: Closed-Loop Robotic Data Generation via Semantic Planning and Autonomous Causal Environment Reset
Yongzhong Wang, Keyu Zhu, Yong Zhong, Liqiong Wang, Jinyu Yang, Feng Zheng

TL;DR
RADAR is an autonomous, closed-loop system that generates large-scale robotic interaction data by integrating semantic planning, autonomous environment resets, and success evaluation, significantly reducing human involvement.
Contribution
The paper introduces RADAR, a fully autonomous data collection framework that combines semantic scene understanding, autonomous resets, and causal planning for scalable robot learning.
Findings
Achieves up to 90% success on complex tasks in simulation
Effectively executes diverse contact-rich skills in real-world settings
Operates with minimal human intervention and few-shot adaptation
Abstract
The acquisition of large-scale physical interaction data, a critical prerequisite for modern robot learning, is severely bottlenecked by the prohibitive cost and scalability limits of human-in-the-loop collection paradigms. To break this barrier, we introduce Robust Autonomous Data Acquisition for Robotics (RADAR), a fully autonomous, closed-loop data generation engine that completely removes human intervention from the collection cycle. RADAR elegantly divides the cognitive load into a four-module pipeline. Anchored by 2-5 3D human demonstrations as geometric priors, a Vision-Language Model first orchestrates scene-relevant task generation via precise semantic object grounding and skill retrieval. Next, a Graph Neural Network policy translates these subtasks into physical actions via in-context imitation learning. Following execution, the VLM performs automated success evaluation using…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Social Robot Interaction and HRI · Robot Manipulation and Learning
