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Development of Biological Movement Recognition by Interaction between Active Basis Model and Fuzzy Optical Flow Division

机译:主动基模型与模糊光流划分相互作用对生物运动识别的发展

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摘要

Following the study on computational neuroscience through functional magnetic resonance imaging claimed that human action recognition in the brain of mammalian pursues two separated streams, that is, dorsal and ventral streams. It follows up by two pathways in the bioinspired model, which are specialized for motion and form information analysis (Giese and Poggio 2003). Active basis model is used to form information which is different from orientations and scales of Gabor wavelets to form a dictionary regarding object recognition (human). Also biologically movement optic-flow patterns utilized. As motion information guides share sketch algorithm in form pathway for adjustment plus it helps to prevent wrong recognition. A synergetic neural network is utilized to generate prototype templates, representing general characteristic form of every class. Having predefined templates, classifying performs based on multitemplate matching. As every human action has one action prototype, there are some overlapping and consistency among these templates. Using fuzzy optical flow division scoring can prevent motivation for misrecognition. We successfully apply proposed model on the human action video obtained from KTH human action database. Proposed approach follows the interaction between dorsal and ventral processing streams in the original model of the biological movement recognition. The attained results indicate promising outcome and improvement in robustness using proposed approach.
机译:在通过功能磁共振成像对计算神经科学进行研究之后,哺乳动物的大脑中的人类动作识别追求了两个分离的流,即背侧和腹侧流。它遵循生物启发模型中的两条途径,这两条途径专门用于运动和形式信息分析(Giese和Poggio 2003)。主动基础模型用于形成与Gabor小波的方向和尺度不同的信息,以形成有关对象识别(人类)的字典。还利用了生物运动的光流模式。由于运动信息向导在表单路径中共享草图算法进行调整,此外还有助于防止错误识别。利用协同神经网络生成原型模板,代表每个类的一般特征形式。具有预定义的模板,分类基于多模板匹配执行。由于每个人类动作都有一个动作原型,因此这些模板之间存在一些重叠和一致。使用模糊光流分配评分可以防止误识别的动机。我们成功地将建议的模型应用于从KTH人体动作数据库获得的人体动作视频。提出的方法遵循生物运动识别的原始模型中的背侧和腹侧处理流之间的相互作用。所获得的结果表明使用提出的方法有希望的结果和鲁棒性的提高。

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    Bardia Yousefi; Chu Kiong Loo;

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  • 年(卷),期 -1(2014),-1
  • 年度 -1
  • 页码 238234
  • 总页数 14
  • 原文格式 PDF
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