评估局部特征上的类高斯图像表示

Yu-Chuan Su, Guan-Long Wu, Tzu-Hsuan Chiu, Winston H. Hsu, Kuo-Wei Chang
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引用次数: 1

摘要

最近,人们提出了几种类高斯图像表示,作为局部特征的词袋表示的替代方法。提出这些表示是为了克服词袋表示中存在的量化误差问题。它们在不同的应用中被证明是有效的,扩展分层高斯化在VOC2009中使用单个特征获得了出色的性能,局部聚合描述子向量和Fisher核在Holiday数据集上仅使用签名表示获得了出色的性能。尽管它们都取得了成功,也有相似之处,但还没有对这些表述进行比较研究。在本文中,我们对三种新兴的不同的类高斯表示进行了系统的比较:扩展层次高斯化,Fisher核和局部聚合描述子向量。我们在Holiday和CC_Web_Video数据集上评估了这些表征的性能以及特征和参数的影响,并且在我们的研究中观察到了这些表征的几个重要特性。这项研究提供了更好的理解这些被认为在各种应用中有前途的高斯图像表示。
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Evaluating Gaussian Like Image Representations over Local Features
Recently, several Gaussian like image representations are proposed as an alternative of the bag-of-word representation over local features. These representations are proposed to overcome the quantization error problem faced in bag-of-word representation. They are shown to be effective in different applications, the Extended Hierarchical Gaussianization reached excellent performance using single feature in VOC2009, Vector of Locally Aggregated Descriptors and Fisher Kernel reached excellent performance using only signature like representation on Holiday dataset. Despite their success and similarity, no comparative study about these representations has been made. In this paper, we perform a systematic comparison about three emerging different gaussian like representations: Extended Hierarchical Gaussianization, Fisher Kernel and Vector of Locally Aggregated Descriptors. We evaluate the performance and the influence of feature and parameters of these representations on Holiday and CC_Web_Video datasets, and several important properties about these representations have been observed during our investigation. This study provides better understanding about these gaussian like image representations that are believed to be promising in various applications.
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