针对最近邻搜索的词袋视觉对象检索

Cai-Zhi Zhu, Xiaoping Zhou, S. Satoh
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引用次数: 4

摘要

在视觉对象检索的背景下,我们比较了词袋(BoW)框架和基于近似最近邻(ANN)的系统。这种比较的动机是这两种方法之间的隐式联系:一般来说,BoW框架可以被看作是一个量化引导的ANN投票系统。建立这种比较的价值在于:首先,通过与其他无量化的人工神经网络系统进行比较,可以定量地估计BoW框架中量化误差造成的性能损失。其次,这种比较全面地考察了ANN和BoW方法的优缺点,从而便于新的算法设计。在本研究中,我们以一个独立的数据集作为验证匹配的参考,设计了一个优于所有其他方法的ANN投票系统。在两个Oxford数据集和两个trevid实例搜索数据集上进行了全面和计算密集型的实验,并实现了新的状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bag-of-Words Against Nearest-Neighbor Search for Visual Object Retrieval
We compare the Bag-of-Words (BoW) framework with the Approximate Nearest-Neighbor (ANN) based system in the context of visual object retrieval. This comparison is motivated by the implicit connection between these two methods: generally speaking, the BoW framework can be regarded as a quantization-guided ANN voting system. The value of establishing such comparison lies in: first, by comparing with other quantization-free ANN system, the performance loss caused by the quantization error in the BoW framework can be estimated quantitatively. Second, this comparison completely inspects the pros and cons of both ANN and BoW methods, thus to facilitate new algorithm design. In this study, by taking an independent dataset as the reference to validate matches, we design an ANN voting system that outperforms all other methods. Comprehensive and computationally intensive experiments are conducted on two Oxford datasets and two TrecVid instance search datasets, and the new state-of-the-art is achieved.
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