A Real-time Anomaly Detection Method for Robots based on a Flexible and Sparse Latent Space
A Real-time Anomaly Detection Method for Robots based on a Flexible and Sparse Latent Space
The growing demand for robots to operate effectively in diverse environments necessitates the need for robust real-time anomaly detection techniques during robotic operations. However, deep learning-based models in robotics face significant challenges due to limited training data and highly noisy signal features. In this paper, we present Sparse Masked Autoregressive Flow-based Adversarial AutoEncoders model to address these problems. This approach integrates Masked Autoregressive Flow model into Adversarial AutoEncoders to construct a flexible latent space and utilize Sparse autoencoder to efficiently focus on important features, even in scenarios with limited feature space. Our experiments demonstrate that the proposed model achieves a 4.96% to 9.75% higher area under the receiver operating characteristic curve for pick-and-place robotic operations with randomly placed cans, compared to existing state-of-the-art methods. Notably, it showed up to 19.67% better performance in scenarios involving collisions with lightweight objects. Additionally, unlike the existing state-of-the-art model, our model performs inferences within 1 millisecond, ensuring real-time anomaly detection. These capabilities make our model highly applicable to machine learning-based robotic safety systems in dynamic environments. The code will be made publicly available after acceptance.
Taewook Kang、Bum-Jae You、Juyoun Park、Yisoo Lee
安全科学自动化技术、自动化技术设备计算技术、计算机技术工程基础科学
Taewook Kang,Bum-Jae You,Juyoun Park,Yisoo Lee.A Real-time Anomaly Detection Method for Robots based on a Flexible and Sparse Latent Space[EB/OL].(2025-04-15)[2025-04-26].https://arxiv.org/abs/2504.11170.点此复制
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