Detecting anomalies to improve classification performance in opportunistic sensor networks

Hesam Sagha, J. Millán, Ricardo Chavarriaga
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引用次数: 20

Abstract

Anomalies and changes in sensor networks which are deployed for activity recognition may abate the classification performance. Detection of anomalies followed by compensatory reaction would ameliorate the performance. This paper introduces a novel approach to detect the faulty or degraded sensors in a multi-sensory environment and a way to compensate it. The approach considers the distance between each classifier output and the fusion output to decide whether a sensor (classifier) is degraded or not. Evaluation is done on two activity datasets with different configuration of sensors and different types of noise. The results show that using the method improves the classification accuracy.
在机会传感器网络中检测异常以提高分类性能
用于活动识别的传感器网络中的异常和变化可能会降低分类性能。异常检测后的补偿反应将改善性能。本文介绍了一种在多感官环境中检测传感器故障或退化的新方法及其补偿方法。该方法考虑每个分类器输出与融合输出之间的距离来决定传感器(分类器)是否降级。对具有不同传感器配置和不同噪声类型的两个活动数据集进行了评价。结果表明,该方法提高了分类精度。
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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