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An Efficient Automatic Gait Anomaly Detection Method Based on Semisupervised Clustering

机译:一种基于半经验群体的高效自动步态异常检测方法

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The aim of this work is to develop a common automatic computer method to distinguish human individuals with abnormal gait patterns from those with normal gait patterns. As long as the silhouette gait images of the subjects are obtainable, the proposed method is capable of providing online anomaly gait detection result without additional work on analyzing the gait features of the target subjects before ahead. Moreover, the proposed method does not need any parameter settings by users and can start producing detection results under the work by only collecting a very small number of gait samples, even though none of those gait samples are abnormal. Therefore, the proposed method can provide fast and simple deployment for various anomaly gait detection application scenarios. The proposed method is composed of two main modules: (1) feature extraction from gait images and (2) anomaly detection via binary classification. In the first module, a new representation of the most frequently involved area of the silhouette gait images called full gait energy image (F-GEI) is proposed. Furthermore, based on the F-GEI, a novel and simple method characterizing individual walking properties is developed to extract gait features from individual subjects. In the second module, based on the very limited prior knowledge on the target dataset, a semisupervised clustering algorithm is proposed to perform the binary classification for detecting the gait anomaly of each subject. The performance of the proposed gait anomaly detection method was evaluated on the human gaits dataset in comparison with three state-of-the-art methods. The experiment results show that the proposed method is an effective and efficient gait anomaly detection method in terms of accuracy, robustness, and computational efficiency.
机译:这项工作的目的是开发一种常见的自动计算机方法,以区分人类具有正常步态模式的异常步态模式。只要可以获得受试者的轮廓步态图像,所提出的方法就能够提供在线异常步态检测结果,而无需额外的工作,请在未来之前分析目标受试者的步态特征。此外,所提出的方法不需要用户的任何参数设置,并且只能通过收集非常少量的步态样本来开始在工作下产生检测结果,即使这些步态样本都异常。因此,该方法可以为各种异常步态进行远程检测应用方案提供快速简单的部署。所提出的方法由两个主要模块组成:(1)通过二进制分类从步态图像和(2)异常检测的特征提取。在第一模块中,提出了一种新的表示,称为完整步态能量图像(F-GEI)的轮廓步态图像的最常见区域的新表示。此外,基于F-GEI,开发了表征各个步行性质的新颖和简单方法以提取各个受试者的步态特征。在第二模块中,基于对目标数据集的非常有限的知识,提出了一种半化聚类算法,以执行用于检测每个受试者的步态异常的二进制分类。与三种最先进的方法相比,在人类Ga足数据集上评估了所提出的步态异常检测方法的性能。实验结果表明,在准确性,稳健性和计算效率方面,该方法是一种有效而有效的步态异常检测方法。

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