S. K. Dhar, Mahmudul Hasan, Shayhan Ameen Chowdhury
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引用次数: 6
摘要
人体活动识别由于其广阔的应用前景,已成为计算机视觉领域的一个活跃研究领域。在本文中,我们提出了一种识别视频中人类活动的方法。为了准确地识别不同的活动,需要一个具有鲜明性和信息量的特征向量,该特征向量可以编码更多具有鲜明性的信息。本文介绍了一种基于定向局部二值模式(DLBP)的特征,该特征是在我们的实验结果的基础上开发的,即在基于二值轮廓的识别中,方向信息比大小信息更有信息量。提出的指令局部二值模式(Directive Local Binary Pattern, DLBP)结合了二值轮廓图像的方向信息和强度差异。它进一步与边缘方向直方图(EOH)相结合,形成一个更独特和信息丰富的特征集。利用提取的特征,利用支持向量机进行训练和识别,是一种鲁棒分类器。我们在不同的视频中对所提出的人类活动识别方法进行了实验,结果令人鼓舞。
Human activity recognition based on Gaussian mixture model and directive local binary pattern
Recognizing human activities has become an active research area in computer vision because of its promising need and use in many applications. In this paper, we represent a method for recognizing human activities in video. In order to recognize different activities accurately a distinctive and informative feature vector is required which can encode more distinctive information. We introduce a feature named Directive Local Binary Pattern (DLBP) which we develop on the basis of our experimental result that is orientation information is more informative than magnitude information for binary silhouette based recognition. The proposed Directive Local Binary Pattern (DLBP) incorporates orientation information with intensity differences of binary silhouette images. It is further combined with Edge Orientation Histogram (EOH) and forms a more distinctive and informative feature set. By means of the extracted features, Support vector machine is used for training and recognition which is a robust classifier. The proposed method for recognizing human activities is experimented on different videos containing various moving humans and the outcomes of our method are encouraging.