用于检索的集合扩散

S. Bai, Zhichao Zhou, Jingdong Wang, X. Bai, Longin Jan Latecki, Q. Tian
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引用次数: 93

摘要

作为一种后处理过程,扩散处理已经证明了它能够极大地提高各种视觉检索系统的性能。然而,人们也在相似性(或度量)融合方面付出了很大的努力,因为只有一种单独的相似性不能完全揭示对象之间的内在关系。这激发了在扩散过程框架中考虑相似性融合(即融合与扩散)以实现鲁棒检索的研究兴趣。在本文中,我们首先回顾了具有代表性的融合扩散方法,并提供了以往研究人员所忽略的新见解。然后,观察到现有算法容易受到噪声相似度的影响,将提出的正则化集成扩散(RED)与自动权重学习范式捆绑在一起,从而抑制噪声相似度的负面影响。最后,我们将最近提出的几个相似点与提出的框架相结合。实验结果表明,我们可以在各种检索任务上实现新的最先进的性能,包括ModelNet数据集上的3D形状检索,以及Holidays和Ukbench数据集上的图像检索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Diffusion for Retrieval
As a postprocessing procedure, diffusion process has demonstrated its ability of substantially improving the performance of various visual retrieval systems. Whereas, great efforts are also devoted to similarity (or metric) fusion, seeing that only one individual type of similarity cannot fully reveal the intrinsic relationship between objects. This stimulates a great research interest of considering similarity fusion in the framework of diffusion process (i.e., fusion with diffusion) for robust retrieval.,,In this paper, we firstly revisit representative methods about fusion with diffusion, and provide new insights which are ignored by previous researchers. Then, observing that existing algorithms are susceptible to noisy similarities, the proposed Regularized Ensemble Diffusion (RED) is bundled with an automatic weight learning paradigm, so that the negative impacts of noisy similarities are suppressed. At last, we integrate several recently-proposed similarities with the proposed framework. The experimental results suggest that we can achieve new state-of-the-art performances on various retrieval tasks, including 3D shape retrieval on ModelNet dataset, and image retrieval on Holidays and Ukbench dataset.
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