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Comparing Feature Matching for Object Categorization in Video Surveillance

机译:视频监视中对象分类的特征匹配比较

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In this paper we consider an object categorization system using local HMAX features. Two feature matching techniques are compared: the MAX technique, originally proposed in the HMAX framework, and the histogram technique originating from Bag-of-Words literature. We have found that each of these techniques have their own field of operation. The histogram technique clearly outperforms the MAX technique with 5-15% for small dictionaries up to 500-1,000 features, favoring this technique for embedded (surveillance) applications. Additionally, we have evaluated the influence of interest point operators in the system. A first experiment analyzes the effect of dictionary creation and has showed that random dictionaries outperform dictionaries created from Hessian-Laplace points. Secondly, the effect of operators in the dictionary matching stage has been evaluated. Processing all image points outperforms the point selection from the Hessian-Laplace operator.
机译:在本文中,我们考虑使用局部HMAX功能的对象分类系统。比较了两种特征匹配技术:最初在HMAX框架中提出的MAX技术,以及源自词袋研究文献的直方图技术。我们发现这些技术中的每一种都有自己的操作领域。对于最多500-1,000个特征的小词典,直方图技术明显胜过MAX技术(5-15%),这在嵌入式(监视)应用程序中更受欢迎。此外,我们评估了兴趣点算子在系统中的影响。第一个实验分析了词典创建的效果,并表明随机词典的性能优于从Hessian-Laplace点创建的词典。其次,评估了字典匹配阶段中运算符的作用。处理所有图像点的性能优于从Hessian-Laplace运算符选择的点。

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