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A human action recognition scheme based on spatio-temporal variation of region of interest in horizontal and vertical direction

机译:基于水平和垂直方向感兴趣区域时空变化的人体动作识别方案

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In this paper, human action recognition scheme based on spatio-temporal variation pattern in region of interest (ROI) is proposed. In order to handle the multi-class human action problem in the proposed method two level classification is carried out. In the first level, the motion history image (MHI) is constructed based on optical flow vector, which is capable of classifying static and dynamic human actions because of its distinguishable spatio-temporal variation pattern. In the second stage, further classification of static and dynamic actions are performed. For static action classification, using the pixels inside ROI of MHI, some statistical parameters such as, standard deviation and mean along both vertical and horizontal directions are investigated and found very suitable in distinguishing different classes. However, for dynamic action classification, in view of analysing each frame separately, instead of using MHI, Gaussian mixture model (GMM) based ROI detection algorithm is used which provides detail oriented silhouette of a dynamic object. In order to extract features, first centroid based ROI shifting is performed and then it is segmented into a set of rectangular regions. From the extreme values of the pixels residing inside each region of ROI, within their respective temporal segments, representative features, such as maximum, minimum and mode are computed. It is found that the proposed action recognition scheme not only offers very low computational burden but also can provide satisfactory classification performance even by using simple Euclidean distance based classifier in leave one out cross validation technique.
机译:提出了一种基于感兴趣区域时空变化模式的人体动作识别方案。为了处理所提出的方法中的多类人类行为问题,进行了两级分类。在第一级中,基于光流矢量构造运动历史图像(MHI),由于其可区分的时空变化模式,因此能够对静态和动态人体动作进行分类。在第二阶段,将对静态和动态动作进行进一步分类。对于静态动作分类,使用MHI的ROI内的像素,研究了一些统计参数,例如沿垂直和水平方向的标准偏差和均值,它们非常适合区分不同的类别。但是,对于动态动作分类,鉴于分别分析每个帧,而不是使用MHI,而是使用基于高斯混合模型(GMM)的ROI检测算法,该算法提供了动态对象的面向细节的轮廓。为了提取特征,首先执行基于质心的ROI偏移,然后将其分割为一组矩形区域。从位于每个ROI区域内部的ROI的像素的极值,在它们各自的时间段内,可以计算出代表性特征,例如最大值,最小值和模式。发现所提出的动作识别方案不仅提供了非常低的计算负担,而且即使通过使用简单的基于欧几里德距离的分类器,而又不采用交叉验证技术,也可以提供令人满意的分类性能。

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