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首页> 外文期刊>ACM transactions on knowledge discovery from data >Probability Ordinal-Preserving Semantic Hashing for Large-Scale Image Retrieval
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Probability Ordinal-Preserving Semantic Hashing for Large-Scale Image Retrieval

机译:大规模图像检索的概率序数保留语义散列

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摘要

Semantic hashing enables computation and memory-efficient image retrieval through learning similarity-preserving binary representations. Most existing hashing methods mainly focus on preserving the piecewise class information or pairwise correlations of samples into the learned binary codes while failing to capture the mutual triplet-level ordinal structure in similarity preservation. In this article, we propose a novel Probability Ordinal-preserving Semantic Hashing (POSH) framework, which for the first time defines the ordinal-preserving hashing concept under a non-parametric Bayesian theory. Specifically, we derive the whole learning framework of the ordinal similarity-preserving hashing based on the maximum posteriori estimation, where the probabilistic ordinal similarity preservation, probabilistic quantization function, and probabilistic semantic-preserving function are jointly considered into one unified learning framework. In particular, the proposed triplet-ordering correlation preservation scheme can effectively improve the interpretation of the learned hash codes under an economical anchor-induced asymmetric graph learning model. Moreover, the sparsity-guided selective quantization function is designed to minimize the loss of space transformation, and the regressive semantic function is explored to promote the flexibility of the formulated semantics in hash code learning. The final joint learning objective is formulated to concurrently preserve the ordinal locality of original data and explore potentials of semantics for producing discriminative hash codes. Importantly, an efficient alternating optimization algorithm with the strictly proof convergence guarantee is developed to solve the resulting objective problem. Extensive experiments on several large-scale datasets validate the superiority of the proposed method against state-of-the-art hashing-based retrieval methods.
机译:语义哈希通过学习相似性保留二进制表示,可以实现计算和内存有效的图像检索。大多数现有的散列方法主要集中在保留分段类信息或样本的成对相关性,同时无法捕获相似性保存中的相互三态级序数结构。在本文中,我们提出了一种新颖的概率顺序保留语义散列(POSH)框架,这是第一次定义非参数贝叶斯理论下的序数保留散列概念。具体而言,我们基于最大后验估计来得出顺序相似度保存散列的整个学习框架,其中概率序数相似度保存,概率量化功能和概率语义保留函数共同考虑到一个统一的学习框架。特别地,所提出的三重态排序相关保存方案可以有效地改善经济锚固诱导的不对称图学习模型下学习哈希代码的解释。此外,稀疏性引导的选择量化功能旨在最大限度地减少空间变换的损失,探讨了回归语义功能,以促进配方语义在哈希码学习中的灵活性。最终的联合学习目标被制定为同时保留原始数据的序数,并探索产生鉴别哈希代码的语义潜力。重要的是,开发了一种具有严格验证收敛保证的有效交替优化算法来解决产生的目标问题。关于几个大型数据集的广泛实验验证了基于最先进的散列检索方法的提出方法的优越性。

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