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Visual anomaly detection from small samples for mobile robots

机译:从小样本的视觉异常检测到移动机器人

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摘要

We propose a novel method of visual anomaly detection for mobile robots in daily real-life settings. Visual anomaly detection using mobile robots is important for security systems or simply for gathering information. However, this task is challenging for two reasons. First, because the number of observed images sampled at the same location is small, anomaly detection systems cannot use standard statistical methods. Second, anomalies must be detected in the presence of other continuous, ambient changes in the visual scene, such as changes in lighting from morning to night. Regarding the former problem, we develop and apply an analysis-by-synthesis-based anomaly detection method for mobile robots. For the latter, we propose a novel definition of anomaly that uses observed samples at other locations to filter out ambient changes that should be ignored by the system. Experimental results demonstrate that our method can detect anomalies from small samples in the presence of ambient changes, which could not be detected by conventional methods.
机译:我们提出了一种在日常现实生活中用于移动机器人的视觉异常检测的新方法。使用移动机器人进行视觉异常检测对于安全系统或仅对于收集信息而言很重要。但是,此任务具有挑战性,原因有两个。首先,由于在同一位置采样的观察图像数量很少,因此异常检测系统无法使用标准统计方法。其次,必须在视觉场景中存在其他连续的环境变化(例如从早晨到晚上的照明变化)的情况下检测异常。针对前一个问题,我们开发并应用了基于综合分析的移动机器人异常检测方法。对于后者,我们提出了一种异常的新颖定义,该异常使用在其他位置观察到的样本来过滤掉系统应忽略的环境变化。实验结果表明,我们的方法可以在环境变化存在的情况下检测少量样品的异常,而常规方法无法检测到这种异常。

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