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Deep Feature Aggregation and Image Re-Ranking With Heat Diffusion for Image Retrieval

机译:深度特征聚合和图像重新排序与热扩散进行图像检索

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摘要

Image retrieval based on deep convolutional features has demonstrated state-of-the-art performance in popular benchmarks. In this paper, we present a unified solution to address deep convolutional feature aggregation and image re-ranking by simulating the dynamics of heat diffusion. A distinctive problem in image retrieval is that repetitive or bursty features tend to dominate final image representations, resulting in representations less distinguishable. We show that by considering each deep feature as a heat source, our unsupervised aggregation method is able to avoid over-representation of bursty features. We additionally provide a practical solution for the proposed aggregation method and further show the efficiency of our method in experimental evaluation. Inspired by the aforementioned deep feature aggregation method, we also propose a method to re-rank a number of top ranked images for a given query image by considering the query as the heat source. Finally, we extensively evaluate the proposed approach with pre-trained and fine-tuned deep networks on common public benchmarks and show superior performance compared to previous work.
机译:基于深度卷积特征的图像检索在流行的基准中表现出最先进的性能。在本文中,我们通过模拟热扩散的动态来提出一个统一的解决方案来解决深卷积特征聚合和图像重新排序。图像检索中的独特问题是重复或爆发功能倾向于主导最终的图像表示,导致表示较差的表示。我们表明,通过将每个深度特征视为热源,我们无人监督的聚合方法能够避免突发特征的过度表示。我们还为所提出的聚集方法提供了一种实用的解决方案,进一步展示了我们在实验评估中的方法的效率。灵感来自上述深度特征聚合方法,我们还提出了一种方法来通过考虑查询作为热源来重新排列给定查询图像的多个顶部排名图像。最后,我们广泛地评估了在普通的公共基准上进行了预训练和微调的深度网络的提出的方法,并与以前的工作相比表现出卓越的性能。

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