基于深度自编码器的移动操作机器人物体滑动感知多模态异常检测

Youngjae Yoo, Chung-yeon Lee, Byoung-Tak Zhang
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引用次数: 4

摘要

物体滑移感知是移动操作机器人在动态现实世界中可靠执行操作任务的关键。机械臂滑动感知的传统方法是使用触觉或视觉传感器。然而,移动机器人仍然需要处理由于机器人在不断变化的环境中运动而产生的传感器信号中的噪声。为了解决这个问题,我们提出了一种基于深度自编码器模型的多感官数据异常检测方法。所提出的框架集成了从各种机器人传感器收集的异构数据流,包括RGB和深度相机,麦克风和力-扭矩传感器。综合数据用于训练深度自编码器,以构建指示正常状态的多感官数据的潜在表示。然后,通过训练后的编码器的潜在值与重建输入数据的潜在值之间的差来测量误差分数,可以识别异常。为了评估所提出的框架,我们进行了一项实验,模拟了移动服务机器人在具有不同家庭物体和不同移动模式的现实环境中操作的物体滑动。实验结果验证了所提出的框架能够可靠地检测物体滑移情况下的异常情况,尽管存在各种物体类型和机器人行为,以及环境中的视觉和听觉噪声。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal Anomaly Detection based on Deep Auto-Encoder for Object Slip Perception of Mobile Manipulation Robots
Object slip perception is essential for mobile manipulation robots to perform manipulation tasks reliably in the dynamic real-world. Traditional approaches to robot arms’ slip perception use tactile or vision sensors. However, mobile robots still have to deal with noise in their sensor signals caused by the robot’s movement in a changing environment. To solve this problem, we present an anomaly detection method that utilizes multisensory data based on a deep autoencoder model. The proposed framework integrates heterogeneous data streams collected from various robot sensors, including RGB and depth cameras, a microphone, and a force-torque sensor. The integrated data is used to train a deep autoencoder to construct latent representations of the multisensory data that indicate the normal status. Anomalies can then be identified by error scores measured by the difference between the trained encoder’s latent values and the latent values of reconstructed input data. In order to evaluate the proposed framework, we conducted an experiment that mimics an object slip by a mobile service robot operating in a real-world environment with diverse household objects and different moving patterns. The experimental results verified that the proposed framework reliably detects anomalies in object slip situations despite various object types and robot behaviors, and visual and auditory noise in the environment.
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