Advances in high resolution remote sensing image analysis are currently hampered by the difficulty of gathering enough annotated data for training deep learning methods, giving rise to a variety of small datasets and associated dataset-specific methods. Moreover, typical tasks such as classification and retrieval lack a systematic evaluation on standard benchmarks and training datasets, which make it hard to identify durable and generalizable scientific contributions. We aim at unifying remote sensing image retrieval and classification with a new large-scale training and testing dataset, SF300, including both vertical and oblique aerial images and made available to the research community, and an associated fine-tuning method. We additionally propose a new adversarial fine-tuning method for global descriptors. We show that our framework systematically achieves a boost of retrieval and classification performance on nine different datasets compared to an ImageNet pretrained baseline, with currently no other method to compare to.
翻译:高分辨率遥感图像分析的进展目前受到阻碍,因为难以收集足够多的附加说明的数据,用于培训深层学习方法,从而产生各种小数据集和相关的特定数据集方法;此外,分类和检索等典型任务缺乏对标准基准和培训数据集的系统评价,因此难以确定持久和可普遍适用的科学贡献;我们的目标是将遥感图像检索和分类与新的大规模培训和测试数据集SF300(包括垂直和斜空图像)统一起来,并提供给研究界,以及相关的微调方法;我们还建议为全球标本提出新的对抗性微调方法;我们表明,我们的框架系统地提高了9个不同数据集的检索和分类绩效,而不像图象网预先培训的基线那样,目前没有其他方法可以比较。