基于特征树模型的复杂背景下高速足球飞行跟踪

Z. Yu, Zefan Cai
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引用次数: 0

摘要

在本文中,我们试图分析足球射门录像,其中包含关键信息:位置,速度和飞行曲线。曲线是最难得到的信息。K-means聚类是常用的算法。但它需要大量的存储空间和计算时间,影响了实时性。本文提出了一种基于k均值聚类的特征树模型,用于运动目标的检测与识别。该算法不需要针对不同的足球模板构建不同的特征聚类。(1)提出了HOG特征和FLOW特征的联合提取方法,包括特征表示。(2)提出了一种k均值聚类特征构建方法,通过特征树的构建,有效地减少了特征次数,提高了实时性。在空间坐标中识别出足球后,采用邻域比比法生成最终曲线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Feature Tree Model to Track High Speed Flying Soccer in Complicated Background
In this article, We try to analyze the video of soccer shooting, Where contains the key messages: position, speed and the flying curve. The curve is the most difficult message to get. K-means clustering is the common algorithm. But it needs a mass storage space and calculating time Which affects the real time performance. In the article, a feature tree model based on K-means clustering for moving object detection and recognition is put forward. The algorithm need not to build different feature clustering for different templates of soccer. (1) An union HOG feature and FLOW feature extraction method is put forward, including the character representation. (2) A K-means clustering feature construction method is put forward, Which can reduce the feature times effectively and improve the real time performance by means of feature tree construction. Moreover, after the recognition of the soccer in space coordinates, We generate the final curve in neighborhood comparison method.
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