基于CNN和分数融合的商品图像检索方法

Zihao Liu, Xiaoyu Wu, Jiayao Qian, Zhiyi Zhu
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摘要

基于内容的图像检索(CBIR)是计算机视觉的一个重要研究方向,长期以来得到了广泛的研究。CBIR的重要目标是减少语义间隙问题,从而提高图像检索的性能。它在电子商务领域扮演着重要的角色。本文提出了一种基于ResNet和effentnet的CBIR方法,并在eProduct Visual Search Challenge 2021数据集上进行了实验。首先,由于数据集缺乏直接查询索引标签,并且类别不平衡,因此使用迁移学习通过数据增强构建平衡子数据集来微调模型。其次,利用ResNet和effentnet提取语义特征,计算查询图像与索引图像的相似度比较;最后,通过策略将两个cnn得到的分数融合,确定相似度结果。在eProduct数据集上的实验表明,该算法可以取得较好的性能。
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Commodity Image Retrieval Method Based on CNN and Score Fusion
Content-based image retrieval (CBIR) is an important research direction of computer vision and has been well studied for a long period. The important aim in CBIR is to reduce the semantic gap issue that improves the performance of image retrieval. It plays an important role in the field of e-commerce. This paper proposes a CBIR method based on ResNet and EfficientNet, and conducts experiments on the dataset of eProduct Visual Search Challenge 2021. First, because the dataset lacks direct query-index tags and the categories are not balanced, transfer learning is used to fine-tune the model with a balanced sub-dataset constructed by data augmentation. Second, the semantic features are extracted by the ResNet and EfficientNet and similarity comparison is calculated between the query and index image. Finally, the similarity result is decided through fusing the scores obtained by the two CNNs through a strategy. Experiments on the eProduct dataset demonstrate our algorithm can achieve a good performance.
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