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Measuring clothing image similarity with bundled features

机译:使用捆绑功能测量服装图像相似度

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Purpose - Clothing retrieval is very useful to help the clients to efficiently search out the apparel they want. Currently, the mainstream clothing retrieval methods are attribute semantics based, which however are inconvenient for common clients. The purpose of this paper is to provide an easy-to-operate apparels retrieval mode with the authors' novel approach of clothing image similarity measurement. Design/methodology/approach - The authors measure the similarity between two clothing images by computing the weighted similarities between their bundled features. Each bundled feature consists of the point features (SIFT) which are further quantified into local visual words in a maximally stable extremal region (MSER). The authors weight the importance of bundled features by the precision of SIFT quantification and local word frequency that reflects the frequency of the common visual words appeared in two bundled features. The bundled features similarity is computed from two aspects: local word frequency; and SIFTs distance matrix that records the distances between every two SIFTs in a bundled feature. Findings - Local word frequencies improves the recognition between two bundled features with the same common visual words but different local word frequency. SIFTs distance matrix has the merits of scale invariance and rotation invariance. Experimental results show that this approach works well in the situations with large clothing deformation, background exchange and part hidden, etc. And the similarity measurement of Weight + Bundled + LWF + SDM is the best. Originality/value - This paper presents an apparel retrieval mode based on local visual features, and presents a new algorithm for bundled feature matching and apparel similarity measurement.
机译:目的-服装检索对于帮助客户有效地搜索他们想要的服装非常有用。当前,主流的服装检索方法是基于属性语义的,但是对于普通客户来说是不便的。本文的目的是通过作者新颖的服装图像相似性测量方法,提供一种易于操作的服装检索模式。设计/方法/方法-作者通过计算两个捆绑图像之间的加权相似度来衡量两个服装图像之间的相似度。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。作者通过SIFT量化的精确度和反映出现在两个捆绑特征中常见视觉词的出现频率的本地词频来权衡捆绑特征的重要性。捆绑的特征相似度是从两个方面计算的:局部词频;和SIFT距离矩阵,该矩阵记录捆绑特征中每两个SIFT之间的距离。结果-本地词频提高了两个具有相同公共视觉词但本地词频不同的捆绑特征之间的识别度。 SIFT距离矩阵具有尺度不变性和旋转不变性的优点。实验结果表明,该方法在服装变形大,背景交换,零件隐藏等情况下效果很好。权重+捆绑+ LWF + SDM的相似度测量是最好的。原创性/价值-本文提出了一种基于局部视觉特征的服装检索模式,并提出了一种用于捆绑特征匹配和服装相似性测量的新算法。

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