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Clothing retrieval based on image bundled features

机译:基于图像捆绑特征的服装检索

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How to evaluate the similarity between two clothing images is the core technical problem of image based clothing retrieval which is extremely useful in aiding online clothing shopping. According to the characteristics of clothing, we address this issue by computing the similarities between the bundled features of different clothing images. Each bundled feature consists of the point features (SIFT) which are further quantified into local visual words in a maximally stable extremal region (MSER). Researches show that bundled feature becomes much more discriminative than single feature, while the intrinsic geometric constraint of a bundled feature is still defective. In this paper, we add a geometric constraint by SIFTs distance matrix to improve the discriminative power. SIFTs distance matrix is constructed by the distances between every two point features (SIFT) in a bundled feature; it has its merits of scale invariance and rotation invariance. Thus, we can match the bundled features of two clothing images and calculate their similarity. Experimental results based on the clothing image database show that our approach works well in the situations with large clothing deformation, background exchange and part hidden, etc.
机译:如何评估两个服装图像之间的相似度是基于图像的服装检索的核心技术问题,这对帮助在线服装购物非常有用。根据服装的特征,我们通过计算不同服装图像的捆绑特征之间的相似性来解决此问题。每个捆绑的特征都由点特征(SIFT)组成,这些特征进一步量化为最大稳定极值区域(MSER)中的局部视觉单词。研究表明,捆绑特征比单一特征更具区别性,而捆绑特征的内在几何约束仍然存在缺陷。在本文中,我们通过SIFT距离矩阵添加了几何约束,以提高判别力。 SIFT距离矩阵由捆绑特征中每两个点特征(SIFT)之间的距离构建;它具有尺度不变性和旋转不变性的优点。因此,我们可以匹配两个服装图像的捆绑特征并计算它们的相似度。基于服装图像数据库的实验结果表明,我们的方法在服装变形大,背景交换和零件隐藏等情况下效果很好。

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