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Hull convexity defect features for human action recognition.

机译:用于人体动作识别的船体凸度缺陷特征。

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摘要

Human action recognition is a rapidly developing field in computer vision. Accurate algorithmic modeling of action recognition must contend with a multitude of challenges. Machine vision and pattern recognition algorithms can be used to aid in the identification of these actions. In recent years research has focused on recognizing complex actions using simple features. Simple cases of action recognition, wherein one individual is captured performing a single action, form the foundation for developing more complex scenarios in real environments. This can be especially useful for surveillance of public locations such as subways, shopping centers, or parking lots in order to reduce crime, monitor traffic flow, and offer security in general. An effective action recognition algorithm must address the following challenges that affect feature extraction for accurate representation: non-rigidity, spatial-variance, temporal-variance, camera perspective. Where face detection seeks to identify the location of an individual's face, activity recognition seeks to recognize the motion or action of an individual. There is generally a commonality of features in the true positive set with face recognition; certain rigid features are present on every human face. Action recognition, on the other hand, must deal with the non-rigidity of the human body. The arms and legs can be at a number of positions relative to one another, and at varying distances and angles. These relative positions describe actions or intermediary poses.;We consider developing a taxonomic shape driven algorithm to solve the problem of human action recognition and develop a new feature extraction technique using hull convexity defects. To test and validate this approach, we use silhouettes of subjects performing ten actions from a commonly used video database by action recognition researchers. A morphological algorithm is used to filter noise from the silhouette. A convex hull is then created around the silhouette frame, from which convex defects will be used as the features for analysis. A complete feature consists of thirty individual values which represent the five largest convex hull defects areas. A consecutive sequence of these features form a complete action. Action frame sequences are preprocessed to separate the data into two sets based on perspective planes and bilateral symmetry. Features are then normalized to create a final set of action sequences. We then formulate and investigate three methods to classify ten actions from the database. Testing and training of the nine test subjects is performed using a leave one out methodology. Classification utilizes both PCA and minimally encoded neural networks. Performance evaluation results show that the Hull Convexity Defect Algorithm provides comparable results with less computational complexity. This research can lead to a real time performance application that can be incorporated to include distinguishing more complex actions and multiple person interaction.
机译:人体动作识别是计算机视觉中一个快速发展的领域。动作识别的精确算法建模必须应对众多挑战。机器视觉和模式识别算法可用于帮助识别这些动作。近年来,研究集中在使用简单特征识别复杂动作上。动作识别的简单案例(其中一个人被捕获执行一项单个动作)构成了在实际环境中开发更复杂场景的基础。这对于监视公共场所(例如地铁,购物中心或停车场)尤其有用,以减少犯罪,监视交通流量并总体上提供安全保护。有效的动作识别算法必须解决以下影响特征提取以准确表示的挑战:非刚性,空间差异,时间差异,摄像机视角。在人脸检测试图识别个人面部位置的情况下,活动识别则试图识别个人的运动或动作。在带有面部识别的真实肯定集中,通常存在特征的共性。每个人的脸上都有某些刚性特征。另一方面,动作识别必须处理人体的非刚性。臂和腿可以相对于彼此处于多个位置,并且可以具有不同的距离和角度。这些相对位置描述了动作或中间姿势。我们考虑开发一种基于分类的形状驱动算法来解决人类动作识别问题,并开发一种使用船体凸度缺陷的新特征提取技术。为了测试和验证这种方法,我们使用动作识别研究人员从常用视频数据库中执行十个动作的对象的剪影。形态学算法用于从轮廓中滤除噪声。然后,在轮廓框架周围创建凸包,然后将凸缺陷用作分析的特征。一个完整的特征由三十个单独的值组成,这些值代表五个最大的凸包缺陷区域。这些功能的连续序列形成一个完整的动作。对动作帧序列进行预处理,以根据透视平面和双边对称性将数据分为两组。然后将功能标准化以创建最终的一组动作序列。然后,我们制定和研究三种方法来对数据库中的十个动作进行分类。九个测试对象的测试和培训是使用留一法进行的。分类利用了PCA和最少编码的神经网络。性能评估结果表明,赫尔凸缺陷算法提供了可比较的结果,而计算复杂度却更低。这项研究可以导致一个实时性能应用程序,可以将其合并以包括区分更复杂的动作和多人交互。

著录项

  • 作者

    Youssef, Menatoallah M.;

  • 作者单位

    University of Dayton.;

  • 授予单位 University of Dayton.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 109 p.
  • 总页数 109
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人类学;
  • 关键词

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