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Diversity Regularized Latent Semantic Match for Hashing

机译:散列的多样性正则化潜在语义匹配

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摘要

Hashing based approximate nearest neighbors (ANN) search has drawn considerable attraction owing to its low-memory storage and hardware-level logical computing which is doomed to be greatly applicable to quantities of large-scale and practical scenarios, such as information retrieval, computer vision and natural language processing. However, most existing hashing methods concentrate either on images only or on pairwise image-texts (labels, short documents) and rarely utilize more common sentences. In this paper, we propose Diversity Regularized Latent Semantic Match for Hashing (DRLSMH), a new multinlodal hashing method that projects images and sentences into a shared latent semantic spate with label-supervised semantic constraints to proceed on multimodal retrieval. Notably, soft orthogonality is induced as a novel regularizer to preserve diverse hashing functions for compact and accurate representations; what's more, this kind of regularization also benefits the derivations of closed-form solutions with some proper relaxations under iterative optimization framework. Extensive experiments on two public datasets demonstrate the advantages of our method over some state-of-the-art baselines under cross-modal retrieval both on image-query-image, image-query-text and text query-image tasks.
机译:基于散列的近似最近邻(ANN)搜索由于其低内存存储和硬件级逻辑计算而吸引了相当大的吸引力,它注定将极大地适用于大量大规模和实际情况,例如信息检索,计算机视觉和自然语言处理。但是,大多数现有的散列方法仅集中于图像或成对的图像文本(标签,简短文档),很少使用更常见的句子。在本文中,我们提出了一种用于散列的新型正则化潜在散列语义匹配算法(DRLSMH),它是一种新的多节点散列方法,该方法将图像和句子投影到带有标签监督语义约束的共享潜伏语义序列中,以进行多模式检索。值得注意的是,软正交性是一种新颖的正则化器,可以保留各种散列函数以实现紧凑而准确的表示。更重要的是,这种正则化还有利于在迭代优化框架下适当放松的闭合形式解的派生。在两个公共数据集上进行的广泛实验证明,在图像查询图像,图像查询文本和文本查询图像任务的交叉模式检索下,我们的方法相对于一些最新基准具有优势。

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