Imtiaz Masud Ziko, É. Fromont, Damien Muselet, M. Sebban
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引用次数: 1
Abstract
When building traditional Bag of Visual Words (BOW) for image classification, the K-means algorithm is usually used on a large set of high dimensional local descriptors to build the visual dictionary. However, it is very likely that, to find a good visual vocabulary, only a sub-part of the descriptor space of each visual word is truly relevant. We propose a novel framework for creating the visual dictionary based on a spectral subspace clustering method instead of the traditional K-means algorithm. A strategy for adding supervised information during the subspace clustering process is formulated to obtain more discriminative visual words. Experimental results on real world image dataset show that the proposed framework for dictionary creation improves the classification accuracy compared to using traditionally built BOW.
在构建传统的视觉词袋(Bag of Visual Words, BOW)用于图像分类时,通常在大量高维局部描述符上使用K-means算法来构建视觉字典。然而,很有可能,要找到一个好的视觉词汇表,每个视觉词的描述符空间中只有一小部分是真正相关的。本文提出了一种新的基于谱子空间聚类方法的视觉词典创建框架,取代了传统的K-means算法。提出了一种在子空间聚类过程中加入监督信息的策略,以获得更具判别性的视觉词。在真实图像数据集上的实验结果表明,与传统构建的BOW相比,本文提出的词典创建框架提高了分类精度。