Poster Abstract: Camera-Assisted Training of Non-Vision Sensors for Anomaly Detection

Norah Albazzai, Omer F. Rana, Charith Perera
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引用次数: 0

Abstract

Cameras are becoming pervasive and used for image classification and object detection in various applications, including anomaly detection. However, cameras pose a privacy threat and require significant power resources. To address these issues, researchers have explored non-vision sensors, but pre-training them for anomaly detection is challenging because anomalies are difficult to define and vary significantly across indoor environments. Thus, we propose a new approach to training non-vision sensors using a tiny camera and a pre-trained MobileNetV2 model. Data from non-vision sensors are labelled based on the image classification from the tiny camera, and an anomaly detection model is trained using these labelled data. The Random Forest model is used as the final model, achieving an accuracy of 95.58%.
摘要:相机辅助训练的非视觉传感器异常检测
相机正变得越来越普遍,并在各种应用中用于图像分类和目标检测,包括异常检测。然而,摄像头构成了隐私威胁,并且需要大量的电力资源。为了解决这些问题,研究人员已经探索了非视觉传感器,但是对它们进行异常检测的预训练是具有挑战性的,因为异常很难定义,并且在室内环境中变化很大。因此,我们提出了一种使用微型相机和预训练的MobileNetV2模型来训练非视觉传感器的新方法。基于微型相机的图像分类,对非视觉传感器的数据进行标记,并利用这些标记数据训练异常检测模型。采用随机森林模型作为最终模型,准确率达到95.58%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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