论文标题
使用自我监督和半监督的计算机视觉的空中遥感图像中的城市功能分析
Urban feature analysis from aerial remote sensing imagery using self-supervised and semi-supervised computer vision
论文作者
论文摘要
使用计算机视觉对间接费用的分析是一个在学术文献中引起了很大关注的问题。在这个领域运行的大多数技术都高度专业化,并且需要大型数据集的昂贵手动注释。这些问题通过开发更通用的框架来解决这些问题,并结合了代表性学习的进步,这可以在分析具有有限标记数据的新图像类别时具有更大的灵活性。首先,根据动量对比机制创建了未标记的空中图像数据集的强大表示。随后,通过构建只有200个标签图像的准确分类器来专门针对不同的任务。从6000万个未标记的图像中,在10年内对城市基础设施进化的成功低水平检测表明了我们进步定量城市研究的巨大潜力。
Analysis of overhead imagery using computer vision is a problem that has received considerable attention in academic literature. Most techniques that operate in this space are both highly specialised and require expensive manual annotation of large datasets. These problems are addressed here through the development of a more generic framework, incorporating advances in representation learning which allows for more flexibility in analysing new categories of imagery with limited labeled data. First, a robust representation of an unlabeled aerial imagery dataset was created based on the momentum contrast mechanism. This was subsequently specialised for different tasks by building accurate classifiers with as few as 200 labeled images. The successful low-level detection of urban infrastructure evolution over a 10-year period from 60 million unlabeled images, exemplifies the substantial potential of our approach to advance quantitative urban research.