Hashing has been widely used in approximate nearest neighbor search for its storage and computational efficiency. Deep supervised hashing methods are not widely used because of the lack of labeled data, especially when the domain is transferred. Meanwhile, unsupervised deep hashing models can hardly achieve satisfactory performance due to the lack of reliable similarity signals. To tackle this problem, we propose a novel deep unsupervised hashing method, namely Distilled Smooth Guidance (DSG), which can learn a distilled dataset consisting of similarity signals as well as smooth confidence signals. To be specific, we obtain the similarity confidence weights based on the initial noisy similarity signals learned from local structures and construct a priority loss function for smooth similarity-preserving learning. Besides, global information based on clustering is utilized to distill the image pairs by removing contradictory similarity signals. Extensive experiments on three widely used benchmark datasets show that the proposed DSG consistently outperforms the state-of-the-art search methods.
翻译:在近邻近邻搜寻其储存和计算效率时,广泛使用了散列法。由于缺乏标签数据,特别是当域域被转移时,没有严密监督的散列法没有被广泛使用。与此同时,由于缺少可靠的相似信号,未经监督的深度散列模型很难取得令人满意的性能。为了解决这一问题,我们提议了一种全新的未经监督的深层散列法,即蒸馏式平滑指导(DSG),它可以学习由相似信号和光滑的信心信号组成的精精炼数据集。具体地说,我们根据从当地结构中学到的初始噪音相似信号获得相似性信任权重,并为平滑的类似性保存学习建立一个优先损失功能。此外,基于集群的全球信息被用来通过消除相互矛盾的相似信号来蒸馏成成成对图像。对三大广泛使用的基准数据集的广泛实验表明,拟议的DSG始终超越了最新搜索方法。