论文标题
卫星图像的开放式土地覆盖分类的代表性歧视学习
Representative-Discriminative Learning for Open-set Land Cover Classification of Satellite Imagery
论文作者
论文摘要
卫星图像的土地覆盖分类是分析地球表面的重要一步。现有模型假设一个封闭设置的设置,其中培训和测试类都属于同一标签集。但是,由于卫星图像的独特特征具有极大的多功能覆盖材料,因此训练数据注定是非代表性的。在本文中,我们研究了开放式土地覆盖分类的问题,该分类在测试过程中识别属于未知类别的样本,同时保持已知类别的性能。尽管本质上是一个分类问题,但仍需要利用代表性和歧视性方面的方面,以便更好地将未知类别与已知类别区分开。我们提出了一个代表性的歧义开放式识别(RDOSR)框架,1)将数据从原始图像空间传播到嵌入特征空间,以促进相似的类别,然后再提高2)通过转换到所谓的丰富空间来增强代表性和歧视能力。对多个卫星基准的实验证明了该方法的有效性。我们还通过使用RGB图像在开放集分类任务上实现有希望的结果来展示所提出方法的普遍性。
Land cover classification of satellite imagery is an important step toward analyzing the Earth's surface. Existing models assume a closed-set setting where both the training and testing classes belong to the same label set. However, due to the unique characteristics of satellite imagery with an extremely vast area of versatile cover materials, the training data are bound to be non-representative. In this paper, we study the problem of open-set land cover classification that identifies the samples belonging to unknown classes during testing, while maintaining performance on known classes. Although inherently a classification problem, both representative and discriminative aspects of data need to be exploited in order to better distinguish unknown classes from known. We propose a representative-discriminative open-set recognition (RDOSR) framework, which 1) projects data from the raw image space to the embedding feature space that facilitates differentiating similar classes, and further 2) enhances both the representative and discriminative capacity through transformation to a so-called abundance space. Experiments on multiple satellite benchmarks demonstrate the effectiveness of the proposed method. We also show the generality of the proposed approach by achieving promising results on open-set classification tasks using RGB images.