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引用次数: 3
摘要
基于视觉词的词袋表示在场景分类中得到了广泛的应用。视觉词的构造通常是利用尺度不变特征变换(SIFT)对小块进行变换。传统的SIFT描述符由于没有考虑图像的多向背景和全局颜色信息,在完整、准确地描述户外场景方面存在一定的局限性。本文提出了一种基于patch关键字SIFT(NC-SIFT, Color Multi-Directional Context SIFT)特征描述符的场景描述符和分类方法。首先,基于图像patch提取结合上下文信息的局部SIFT,然后通过K-means聚类和直方图统计得到BOW(Bag of Words),利用BOW分别融合全局颜色向量完成基于SVM分类器的场景识别。
A Novel Scene Descriptor and Outdoor Scene Recognition Method
Bag-of-Words representation based on visual words has been approved to be used widely in scene classification. Visual words are usually constructed by using SIFT(Scale Invariant Feature Transform) of patches. Traditional SIFT descriptor is limited in describe the outdoor scene completely and accurately because it does not consider the multi-directional context and global color information of image. In this paper, we propose that a new scene descriptor and classification method based on SIFT(NC-SIFT, Color Multi-Directional Context SIFT) feature descriptor of key word of patches. Firstly, local SIFT combined with the context information is extracted based on image patch, Then, BOW(Bag of Words) is obtained by K-means clustering and histogram statistics and the scene recognition based on SVM classifier using BOW which fuse the global color vector is accomplished respectively.