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Loopy Residual Hashing: Filling the Quantization Gap for Image Retrieval

机译:Loopy残留散列:填补图像检索的量化空白

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摘要

Hashing has been widely used in large-scale image retrieval based on approximate nearest neighbor search. Most learning-to-hashing methods adopt a two-stage algorithm to generate binary codes. First, original images are mapped into continuous visual features. Then, binary codes are generated by quantization step or separate projection. Nevertheless, these methods are sensitive to quantization operation, i.e., thresholding. To explicitly address this issue, this study proposes a novel feature quantization scheme with a loopy recurrent neural network, called loopy residual hashing, for the purpose of high accuracy in image retrieval. Instead of one-off thresholding-based feature binarization, the proposed approach performs an iterative threshold-then-approximate operation, which calculates the quantization residual after each thresholding step and then imitates another round of binarization to further approximate the coding residual. The resulting sequences of binary codes possess higher representation accuracy and extensive experiments on image retrieval demonstrate its superior discriminative capability over the prior art. In the meantime, theoretical approximation error analysis is given.
机译:散列已被广泛用于基于近似最近邻搜索的大规模图像检索中。大多数哈希学习方法都采用两阶段算法来生成二进制代码。首先,原始图像被映射为连续的视觉特征。然后,通过量化步骤或单独的投影生成二进制代码。然而,这些方法对量化操作即阈值敏感。为了明确解决这个问题,本研究提出了一种新颖的带有循环递归神经网络的特征量化方案,称为循环残留哈希,以实现图像检索的高精度。代替基于一次性阈值化的特征二值化,所提出的方法执行迭代阈值-然后-近似运算,其在每个阈值步骤之后计算量化残差,然后模仿另一轮二值化以进一步近似编码残差。所得的二进制代码序列具有较高的表示精度,并且在图像检索上的大量实验证明了其优于现有技术的判别能力。同时,给出了理论上的近似误差分析。

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