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A Siamese Autoencoder Preserving Distances for Anomaly Detection in Multi-robot Systems

机译:一种暹罗自动化器,在多机器人系统中保持异常检测的距离

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A Siamese autoencoder preserving distances for preprocessing sensor data in the multi-robot system anomaly detection is proposed. It can be viewed as two identical autoencoders with shared weights by the encoder parts. The proposed neural network reduces the dimensionality of the input observations in order to simplify the use of the Mahalanobis distance in anomaly detection. Moreover, it reduces the dimensionality preserving the original data structure. The Siamese autoencoder also increases the distance between anomalous observations and centers of sliding windows. The network allows us to detect the anomalous behavior of robots taking into account a complex data structure received from sensors. Numerical experiments illustrate the outperformance of the Siamese autoencoder.
机译:提出了一种在多机器人系统异常检测中保留用于预处理传感器数据的距离的暹罗AutoEncoder。它可以被视为由编码器部件的共享权重的两个相同的autoencoders。所提出的神经网络降低了输入观测的维度,以简化异常检测中的mahalanobis距离的使用。此外,它降低了保留原始数据结构的维度。暹罗AutoEncoder还增加了异常观测和滑动窗口中心之间的距离。该网络允许我们检测机器人的异常行为考虑到从传感器接收的复杂数据结构。数值实验说明了暹罗AutoEncoder的表现。

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