CLUE-AI: A Convolutional Three-stream Anomaly Identification Framework for Robot Manipulation
Dogan Altan, Sanem Sariel

TL;DR
CLUE-AI is a multi-modal framework that fuses visual, auditory, and proprioceptive data to accurately identify anomalies in robot manipulation tasks, enhancing robot safety and responsiveness.
Contribution
This paper introduces a novel three-stream neural network architecture that combines multiple sensory modalities for anomaly identification in robots, which was not thoroughly explored before.
Findings
Achieves 94% F-score in anomaly classification
Outperforms baseline methods in experimental tests
Effectively fuses multi-modal data for improved detection
Abstract
Robot safety has been a prominent research topic in recent years since robots are more involved in daily tasks. It is crucial to devise the required safety mechanisms to enable service robots to be aware of and react to anomalies (i.e., unexpected deviations from intended outcomes) that arise during the execution of these tasks. Detection and identification of these anomalies is an essential step towards fulfilling these requirements. Although several architectures are proposed for anomaly detection, identification is not yet thoroughly investigated. This task is challenging since indicators may appear long before anomalies are detected. In this paper, we propose a ConvoLUtional threE-stream Anomaly Identification (CLUE-AI) framework to address this problem. The framework fuses visual, auditory and proprioceptive data streams to identify everyday object manipulation anomalies. A stream…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
