A Comparative Study of Deep Learning Loss Functions for Multi-Label Remote Sensing Image Classification

Hichame Yessou, Gencer Sumbul, B. Demir
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引用次数: 24

Abstract

This paper analyzes and compares different deep learning loss functions in the framework of multi-label remote sensing (RS) image scene classification problems. We consider seven loss functions: 1) cross-entropy loss; 2) focal loss; 3) weighted cross-entropy loss; 4) Hamming loss; 5) Huber loss; 6) ranking loss; and 7) sparseMax loss. All the considered loss functions are analyzed for the first time in RS. After a theoretical analysis, an experimental analysis is carried out to compare the considered loss functions in terms of their: 1) overall accuracy; 2) class imbalance awareness (for which the number of samples associated to each class significantly varies); 3) convexibility and differentiability; and 4) learning efficiency (i.e., convergence speed). On the basis of our analysis, some guidelines are derived for a proper selection of a loss function in multi-label RS scene classification problems.
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深度学习损失函数在多标签遥感图像分类中的比较研究
本文对多标签遥感图像场景分类问题框架下不同的深度学习损失函数进行了分析和比较。我们考虑7种损失函数:1)交叉熵损失;2)焦损;3)加权交叉熵损失;4)汉明损失;5)胡贝尔损失;6)排名损失;7) sparseMax损耗。所有考虑的损失函数都是首次在RS中进行分析,在进行理论分析之后,进行实验分析,比较考虑的损失函数:1)总体精度;2)类不平衡意识(每个类对应的样本数量有显著差异);3)凸性和可微性;4)学习效率(即收敛速度)。在此基础上,提出了多标签遥感场景分类中损失函数选择的指导原则。
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