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A Modular Deep Learning Architecture for Anomaly Detection in HRI

机译:HRI中异常检测的模块化深层学习架构

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Considering humans as a non-deterministic factor makes anomaly detection in Human-Robot Interaction scenarios rather a challenging problem. Anomalous events like unexpected user interaction or unforeseen environment changes are unknown before they happen. On the other hand, the work process or user intentions could evolve in time. To address this issue, a modular deep learning approach is presented that is able to learn normal behavior patterns in an unsupervised manner. We combined the unsupervised feature extraction learning ability of an autoencoder with a sequence modeling neural network. Both models were firstly evaluated on benchmark video datasets, revealing adequate performance comparable to the state-of-the-art methods. For HRI application, a continuous training approach for real-time anomaly detection was developed and evaluated in an HRI-experiment with a collaborative robot, ToF camera, and proximity sensors. In the user study with 10 subjects irregular interactions and misplaced objects were the most common anomalies, which system was able to detect reliably.
机译:考虑人类作为非确定性因素,使人机互动情景中的异常检测相当有挑战性的问题。在发生意外用户互动或不可预见的环境的异常事件发生在发生之前是未知的。另一方面,工作过程或用户意图可以及时发展。为了解决这个问题,提出了一种模块化的深度学习方法,能够以无监督的方式学习正常行为模式。我们将AutoEncoder与序列建模神经网络的无监督特征提取学习能力组合。首先在基准视频数据集上评估两种模型,揭示了与最先进的方法相当的足够性能。对于HRI应用,在具有协作机器人,TOF相机和接近传感器的HRI实验中开发和评估了实时异常检测的连续培训方法。在使用10个受试者的用户学习中,不规则相互作用和错位对象是最常见的异常,系统能够可靠地检测。

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