期刊论文详细信息
Applied Sciences
A Latent State-Based Multimodal Execution Monitor with Anomaly Detection and Classification for Robot Introspection
Juan Rojas1  Yisheng Guan1  Hongmin Wu1 
[1] Biomimetic and Intelligent Robotics Lab (BIRL), School of Mechanical and Electrical Engineering, Guangdong University of Technology, Guangzhou 510006, China;
关键词: multimodal execution monitor;    latent space;    anomaly detection;    anomaly classification;    robot introspection;    hierarchical Dirichlet process hidden Markov model;   
DOI  :  10.3390/app9061072
来源: DOAJ
【 摘 要 】

Robot introspection is expected to greatly aid longer-term autonomy of autonomous manipulation systems. By equipping robots with abilities that allow them to assess the quality of their sensory data, robots can detect and classify anomalies and recover appropriately from common anomalies. This work builds on our previous Sense-Plan-Act-Introspect-Recover (SPAIR) system. We introduce an improved anomaly detector that exploits latent states to monitor anomaly occurrence when robots collaborate with humans in shared workspaces, but also present a multiclass classifier that is activated with anomaly detection. Both implementations are derived from Bayesian non-parametric methods with strong modeling capabilities for learning and inference of multivariate time series with complex and uncertain behavior patterns. In particular, we explore the use of a hierarchical Dirichlet stochastic process prior to learning a Hidden Markov Model (HMM) with a switching vector auto-regressive observation model (sHDP-VAR-HMM). The detector uses a dynamic log-likelihood threshold that varies by latent state for anomaly detection and the anomaly classifier is implemented by calculating the cumulative log-likelihood of testing observation based on trained models. The purpose of our work is to equip the robot with anomaly detection and anomaly classification for the full set of skills associated with a given manipulation task. We consider a human–robot cooperation task to verify our work and measure the robustness and accuracy of each skill. Our improved detector succeeded in detecting 136 common anomalies and 368 nominal executions with a total accuracy of 91.0%. An overall anomaly classification accuracy of 97.1% is derived by performing the anomaly classification on an anomaly dataset that consists of 7 kinds of detected anomalies from a total of 136 anomalies samples.

【 授权许可】

Unknown   

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