Adaptive Bit Selection for Scalable Deep Hashing

Min Wang;Wengang Zhou;Xin Yao;Houqiang Li
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Abstract

Deep Hashing is one of the most important methods for generating compact feature representation in content-based image retrieval. However, in various application scenarios, it requires training different models with diversified memory and computational resource costs. To address this problem, in this paper, we propose a new scalable deep hashing framework, which aims to generate binary codes with different code lengths by adaptive bit selection. Specifically, the proposed framework consists of two alternative steps, i.e., bit pool generation and adaptive bit selection. In the first step, a deep feature extraction model is trained to output binary codes by optimizing retrieval performance and bit properties. In the second step, we select informative bits from the generated bit pool with reinforcement learning algorithm, in which the same retrieval performance and bit properties are directly used in computing reward. The bit pool can be further updated by fine-tuning the deep feature extraction model with more attention on the selected bits. Hence, these two steps are alternatively iterated until convergence is achieved. Notably, most existing binary hashing methods can be readily integrated into our framework to generate scalable binary codes. Experiments on four public image datasets prove the effectiveness of the proposed framework for image retrieval tasks.
可扩展深度哈希的自适应位选择
在基于内容的图像检索中,深度哈希是生成紧凑特征表示的重要方法之一。然而,在不同的应用场景下,需要训练不同的模型,其内存和计算资源成本也各不相同。为了解决这一问题,本文提出了一种新的可扩展深度哈希框架,该框架旨在通过自适应位选择生成具有不同码长的二进制码。具体来说,该框架包括两个可选步骤,即位池生成和自适应位选择。第一步,通过优化检索性能和位属性,训练深度特征提取模型输出二进制码。第二步,我们使用强化学习算法从生成的比特池中选择信息比特,其中相同的检索性能和比特属性直接用于计算奖励。通过对深度特征提取模型进行微调,更加关注所选的位,可以进一步更新位池。因此,这两个步骤交替迭代,直到实现收敛。值得注意的是,大多数现有的二进制散列方法都可以很容易地集成到我们的框架中,以生成可伸缩的二进制代码。在四个公共图像数据集上的实验证明了该框架在图像检索任务中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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