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Exploiting Best Practice of Deep CNNs Features for National Costume Image Retrieval

机译:利用国家服装图像检索的最佳实践。

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摘要

Convolutional neural networks (CNNs) have recently achieved remarkable success with superior performances in computer vision applications In most CNN-based image retrieval methods, deep CNNs features are verified as discriminative descriptors for effective image representation. This paper exploits the best practice for CNNs application to national costume image retrieval. Several important aspects that affect the discriminative ability of deep CNNs features are investigated thoroughly, including layers selection, aggregation and weighting methods. Firstly, an effective weighting method for sum-pooling features aggregation is given, which is more suitable for national costume image than some typical aggregation methods such as SPoC and SCDA. Secondly, in view of the complementary strengtis, compact multi-layer CNN features combined with low dimensions are proposed and proven to be effective for national costume expression. Finally, a re-ranking strategy of diffusion process is applied to further enhance the performance for national costume images retrieval. The experimental results show that the proposed method outperforms the existing methods remarkably, which will provide some new research ideas and technical references for researchers in the field of national costume image retrieval.
机译:卷积神经网络(CNNS)最近在大多数基于CNN的图像检索方法中具有优异的计算机视觉应用中的卓越性能,深度CNNS特征被验证为有效图像表示的辨别描述符。本文利用CNNS应用于国家服装图像检索的最佳做法。彻底调查影响深度CNNS特征的判别能力的几个重要方面,包括层选择,聚集和加权方法。首先,给出了用于总和汇集特征聚合的有效加权方法,这更适合于国家服装图像而不是一些典型的聚集方法,如SPOC和SCDA。其次,考虑到互补的Strenttis,提出了紧凑的多层CNN特征,并证明了对国家服装表达有效。最后,应用扩散过程的重新排名策略,以进一步增强国家服装图像检索的性能。实验结果表明,该方法显着优于现有的方法,这将为国家服装图像检索领域的研究人员提供一些新的研究思路和技术参考。

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