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PART-BASED DEEP REPRESENTATION FOR PRODUCT TAGGING AND SEARCH

机译:基于零件的深层表示,用于产品标记和搜索

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摘要

Despite previous studies, tagging and indexing the product images remain challenging due to the large inner-class variation of the products. In the traditional methods, the quantized hand-crafted features such as SIFTs are extracted as the representation of the product images, which are not discriminative enough to handle the inner-class variation. For discriminative image representation, this paper firstly presents a novel deep convolutional neural networks (DCNNs) architect true pre-trained on a large-scale general image dataset. Compared to the traditional features, our DCNNs representation is of more discriminative power with fewer dimensions. Moreover, we incorporate the part-based model into the framework to overcome the negative effect of bad alignment and cluttered background and hence the descriptive ability of the deep representation is further enhanced. Finally, we collect and contribute a well-labeled shoe image database, i.e., the TBShoes, on which we apply the part-based deep representation for product image tagging and search, respectively. The experimental results highlight the advantages of the proposed part-based deep representation.
机译:尽管有先前的研究,但由于产品内部类别的差异很大,因此对产品图像进行标记和索引仍然具有挑战性。在传统方法中,将量化的手工特征(例如SIFT)提取为产品图像的表示形式,这些特征的区分性不足以处理内部类别的变化。对于判别性图像表示,本文首先提出了一种新颖的深度卷积神经网络(DCNN)架构师,该架构师已在大规模常规图像数据集上进行了真正的预训练。与传统功能相比,我们的DCNNs表示具有更大的判别能力,而且尺寸更小。此外,我们将基于零件的模型合并到框架中,以克服对齐不良和背景混乱的负面影响,因此进一步增强了深度表示的描述能力。最后,我们收集并提供了标签良好的鞋子图像数据库,即TBShoes,我们在该数据库上分别应用了基于零件的深度表示形式进行商品图像标记和搜索。实验结果突出了提出的基于零件的深度表示的优势。

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