Jian Kang, R. Fernández-Beltran, Puhong Duan, Xudong Kang, A. Plaza
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引用次数: 2
摘要
遥感场景的手动和自动标注是一项非常复杂的任务,在大型档案中不可避免地会引入一定程度的误标注。在这方面,噪声标注成为基于深度度量学习的RS表征方法的一个重要约束,因为它们大多数都是以监督的方式训练的。为了解决这个问题,我们研究了使用深度度量学习来描述带有噪声标签的RS场景。具体来说,我们考虑了归一化的Softmax Loss,并开发了一个鲁棒扩展,即鲁棒归一化的Softmax Loss (RNSL),以便有效地捕获具有错误标记的地面真值信息的RS场景之间的语义关系。使用K-NN分类器和两个基准RS图像档案进行的实验表明,相对于其他最先进的方法,所提出的方法具有潜力。
Robust Deep Metric Learning for Remote Sensing Images with Noisy Annotations
Manual and automatic annotation of Remote Sensing (RS) scenes are rather complex tasks which may unavoidably introduce some degree of mislabeled data in large-scale archives. In this regard, noisy annotations become an important constraint for deep metric learning-based RS characterization methods since most of them are trained in a supervised way. To address this problem, here we investigate the use of deep metric learning for characterizing RS scenes with noisy labels. Specifically, we consider the Normalized Softmax Loss and develop a robust extension, i.e., the Robust Normalized Softmax Loss (RNSL), in order to effectively capture the semantic relationships among RS scenes with mislabeled ground-truth information. The conducted experiments, using the K-NN classifier and two benchmark RS image archives, show the potential of the proposed approach with respect to other state-of-the-art methods.