Thanks to the efficient retrieval speed and low storage consumption, learning to hash has been widely used in visual retrieval tasks. However, existing hashing methods assume that the query and retrieval samples lie in homogeneous feature space within the same domain. As a result, they cannot be directly applied to heterogeneous cross-domain retrieval. In this paper, we propose a Generalized Image Transfer Retrieval (GITR) problem, which encounters two crucial bottlenecks: 1) the query and retrieval samples may come from different domains, leading to an inevitable {domain distribution gap}; 2) the features of the two domains may be heterogeneous or misaligned, bringing up an additional {feature gap}. To address the GITR problem, we propose an Asymmetric Transfer Hashing (ATH) framework with its unsupervised/semi-supervised/supervised realizations. Specifically, ATH characterizes the domain distribution gap by the discrepancy between two asymmetric hash functions, and minimizes the feature gap with the help of a novel adaptive bipartite graph constructed on cross-domain data. By jointly optimizing asymmetric hash functions and the bipartite graph, not only can knowledge transfer be achieved but information loss caused by feature alignment can also be avoided. Meanwhile, to alleviate negative transfer, the intrinsic geometrical structure of single-domain data is preserved by involving a domain affinity graph. Extensive experiments on both single-domain and cross-domain benchmarks under different GITR subtasks indicate the superiority of our ATH method in comparison with the state-of-the-art hashing methods.
翻译:由于高效率的检索速度和低存储消耗量,在视觉检索任务中广泛使用了散列学习。然而,现有的散列方法假定查询和检索样本位于同一域内的同质特性空间。 因此,无法直接应用于不同跨域检索。 在本文中,我们提议了一个通用图像传输检索(GITR)问题, 遇到两个关键的瓶颈:(1) 查询和检索样本可能来自不同领域, 导致不可避免的{ 域分布差距} ;(2) 两个域的特征可能是混杂或错配, 带来额外的{ 功能差距} 。 为了解决GITR问题, 我们提议一个非监督/ 半监督/ 监督的检索( GITR) 框架。 具体地说, ATHTH通过两种不对称功能之间的差异来描述域分布差距, 并尽可能缩小在跨域数据上的新适应性双部分分布图的特征差距, 通过共同优化对等值功能进行匹配, 并且通过双部分域域域域的精确度对比, 只能通过同步的单个数据传输, 只能通过同步的单一域域图来减少数据。