AED: Adaptable Error Detection for Few-shot Imitation Policy
Jia-Fong Yeh, Kuo-Han Hung, Pang-Chi Lo, Chi-Ming Chung, Tsung-Han Wu,, Hung-Ting Su, Yi-Ting Chen, Winston H. Hsu

TL;DR
This paper introduces the AED task for detecting behavior errors in few-shot imitation policies in novel environments, proposing a new benchmark and a pattern-based detection method that outperforms existing baselines.
Contribution
It presents a novel AED benchmark with diverse environments and a new Pattern Observer method for robust error detection in FSI policies.
Findings
PrObe outperforms strong baselines in error detection.
The benchmark covers diverse cross-domain environments.
A pilot study shows potential for error correction.
Abstract
We introduce a new task called Adaptable Error Detection (AED), which aims to identify behavior errors in few-shot imitation (FSI) policies based on visual observations in novel environments. The potential to cause serious damage to surrounding areas limits the application of FSI policies in real-world scenarios. Thus, a robust system is necessary to notify operators when FSI policies are inconsistent with the intent of demonstrations. This task introduces three challenges: (1) detecting behavior errors in novel environments, (2) identifying behavior errors that occur without revealing notable changes, and (3) lacking complete temporal information of the rollout due to the necessity of online detection. However, the existing benchmarks cannot support the development of AED because their tasks do not present all these challenges. To this end, we develop a cross-domain AED benchmark,…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Human Pose and Action Recognition · Advanced Neural Network Applications
