Detection and classification of objects in overhead images are two important and challenging problems in computer vision. Among various research areas in this domain, the task of fine-grained classification of objects in overhead images has become ubiquitous in diverse real-world applications, due to recent advances in high-resolution satellite and airborne imaging systems. The small inter-class variations and the large intra class variations caused by the fine grained nature make it a challenging task, especially in low-resource cases. In this paper, we introduce COFGA a new open dataset for the advancement of fine-grained classification research. The 2,104 images in the dataset are collected from an airborne imaging system at 5 15 cm ground sampling distance, providing higher spatial resolution than most public overhead imagery datasets. The 14,256 annotated objects in the dataset were classified into 2 classes, 15 subclasses, 14 unique features, and 8 perceived colors a total of 37 distinct labels making it suitable to the task of fine-grained classification more than any other publicly available overhead imagery dataset. We compare COFGA to other overhead imagery datasets and then describe some distinguished fine-grain classification approaches that were explored during an open data-science competition we have conducted for this task.
翻译:高分辨率卫星和空中成像系统最近的进展导致高分辨率卫星和空中成像系统的进展,因此,对高分辨率图像中的物体进行细微分类的任务在各种现实应用中变得无处不在。由于小类间变异和细粒性质造成的大类内变异,使得它是一项具有挑战性的任务,特别是在低资源案例中。在本文件中,我们为推进细度分类研究引入了CoFGA新开放数据集。数据集中的2 104个图像是从空中成像系统收集的,在5个15厘米的地面取样距离上,空间分辨率高于大多数公共高空图像数据集。数据集中的14 256个附加说明的物体被分为2类、15个亚类、14个独特特征和8个可见的颜色,共37个不同的标签,使得它比任何其他公开提供的高分辨率图像数据集更适合精密分类的任务。我们将COFGA与其他高分辨率图像数据集进行比较,然后描述一些显著的开放性精确的方法,以便在我们进行这种竞争时探索。