Progressive Unsupervised Learning of Local Descriptors

Wu‐ru Wang, Lei Zhang, Hua Huang
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Abstract

Training tuple construction is a crucial step in unsupervised local descriptor learning. Existing approaches perform this step relying on heuristics, which suffer from inaccurate supervision signals and struggle to achieve the desired performance. To address the problem, this work presents DescPro, an unsupervised approach that progressively explores both accurate and informative training tuples for model optimization without using heuristics. Specifically, DescPro consists of a Robust Cluster Assignment (RCA) method to infer pairwise relationships by clustering reliable samples with the increasingly powerful CNN model, and a Similarity-weighted Positive Sampling (SPS) strategy to select informative positive pairs for training tuple construction. Extensive experimental results show that, with the collaboration of the above two modules, DescPro can outperform state-of-the-art unsupervised local descriptors and even rival competitive supervised ones on standard benchmarks.
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局部描述符的渐进无监督学习
训练元组构造是无监督局部描述符学习的关键步骤。现有的方法依靠启发式来执行这一步骤,这种方法受到不准确的监督信号的影响,难以达到预期的性能。为了解决这个问题,这项工作提出了DescPro,这是一种无监督的方法,可以在不使用启发式的情况下逐步探索模型优化的准确和信息训练元组。具体来说,DescPro由鲁棒聚类分配(RCA)方法和相似加权正采样(SPS)策略组成,前者通过使用日益强大的CNN模型聚类可靠样本来推断成对关系,后者选择信息丰富的正对来构建训练元组。大量的实验结果表明,在上述两个模块的协作下,DescPro可以在标准基准上优于最先进的无监督局部描述符,甚至可以与竞争的有监督局部描述符相媲美。
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