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Anomaly Detection and Cognizant Path Planning for Surveillance Operations using Aerial Robots

机译:空中机器人监视操作的异常检测和认知路径规划

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In this paper we address the problem of unsupervised anomaly detection and cognizant path planning for surveillance operations using aerial robots. Through one–class classification exploiting deep learned features on image data and a Bayesian technique to fuse, encode and update anomaly information on a real–time reconstructed occupancy map, the robot becomes capable of detecting and localizing anomalies in its environment. Provided this information, path planning for autonomous exploration of unknown areas and simultaneous maximization of the entropy of sensor observations over abnormal regions is developed. The method is verified experimentally through field deployments above a desert-like environment and in a parking lot. Furthermore, analysis results on the suitability of different deep learning–based and hand–engineered features for anomaly detection tasks are presented.
机译:在本文中,我们解决了使用空中机器人进行监视操作的无监督异常检测和认知路径规划问题。通过利用图像数据的深度学习特征进行一类分类,并利用贝叶斯技术在实时重建的占用图上融合,编码和更新异常信息,该机器人能够检测和定位其环境中的异常。提供此信息后,便可以开发出路径规划,以进行未知区域的自主探索,并同时最大化异常区域上的传感器观测值的熵。通过在类似沙漠的环境和停车场中的野外部署,对该方法进行了实验验证。此外,还提供了有关基于深度学习和手工设计的不同功能对异常检测任务的适用性的分析结果。

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