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Stylized Textile Image Pattern Classification Using SIFT Keypoint Histograms

机译:使用SIFT关键点直方图进行风格化的纺织品图像图案分类

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摘要

Semantic image classification, which is the process of categorizing images using pattern recognition technology, is very useful for image annotation, organization and retrieval. While the literature has focused on the classification of natural scene photographs or images, here we focus on the stylized textile images and this is totally a new area which is in the domain of artificial images. In this paper, we show that SIFT keypoint histograms perform much better than the traditional gray level co-occurrence matrix with the SVM classifier. Furthermore, we create a low-dimensional representation for each image using principle component analysis (PCA) method to the SIFT keypoint histograms and achieve a better result. To the best of our knowledge, this is the first time the SIFT feature histograms has been used to the classification of stylized textile images.
机译:语义图像分类是使用模式识别技术对图像进行分类的过程,对于图像注释,组织和检索非常有用。虽然文献集中在自然场景照片或图像的分类上,但在这里我们集中在风格化的纺织品图像上,这完全是人造图像领域中的一个新领域。在本文中,我们证明了使用SVM分类器,SIFT关键点直方图的性能要优于传统的灰度共现矩阵。此外,我们使用主成分分析(PCA)方法对SIFT关键点直方图创建每个图像的低维表示,并获得更好的结果。据我们所知,这是第一次将SIFT特征直方图用于样式化纺织品图像的分类。

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