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Retail product recognition with a graphical shelf model

机译:图形化货架模型识别零售产品

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Recently, retail product recognition has become an interesting computer vision research topic. The classification of products on shelves is a very challenging classification problem because many product classes are visually similar in terms of shape, color, texture, and metric size. In shelves, same or similar products are more likely to appear adjacent to each other and displayed in certain arrangements rather than at random. The arrangement of the products on the shelves has a spatial continuity both in brand and metric size. By using this context information, the co-occurrence of the products and the adjacency relations between the products can be statistically modeled. In this work, we present a context-aware hybrid classification system for the problem of fine-grained product class recognition. The proposed hybrid approach improves the accuracy of the context-free image classifiers, by combining them with a probabilistic graphical model based on Hidden Markov Models. The fundamental goal of this paper is to use contextual relationships in retail shelves to improve accuracy of the product classifier.
机译:最近,零售产品识别已成为有趣的计算机视觉研究主题。货架上产品的分类是一个非常具有挑战性的分类问题,因为许多产品类别在形状,颜色,纹理和度量尺寸方面在视觉上都是相似的。在货架上,相同或相似的产品更有可能彼此相邻出现,并以某种排列而不是随机地陈列。产品在货架上的排列在品牌和公制尺寸上都具有空间上的连续性。通过使用此上下文信息,可以对产品的共现和产品之间的邻接关系进行统计建模。在这项工作中,我们针对细粒度的产品类别识别问题提出了一种上下文相关的混合分类系统。所提出的混合方法通过将它们与基于隐马尔可夫模型的概率图形模型相结合,提高了上下文无关图像分类器的准确性。本文的基本目标是在零售货架中使用上下文关系来提高产品分类器的准确性。

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