论文标题
操纵无人机图像进行卫星模型培训,校准和测试
Manipulating UAV Imagery for Satellite Model Training, Calibration and Testing
论文作者
论文摘要
现代牲畜养殖越来越多地驱动数据,并且经常依靠有效的遥感来收集大型区域的数据。高分辨率卫星图像就是这样的数据源,随着覆盖范围的增加和成本下降,农民变得越来越容易获得。这些图像可用于检测和追踪动物,监测牧场的变化并了解土地使用。许多数据驱动的模型应用于这些任务,都需要在比卫星所能提供的要高的分辨率上进行地面解析。同时,缺乏可用的空中图像,重点是几天或几周(例如牛群运动)发生的农田变化。考虑到这个目标,我们提出了一个新的高分辨率无人机图像的多阶段数据集,该数据集人为地降级以匹配卫星数据质量。经验模糊度量用于针对该区域的实际卫星图像校准降解过程。针对特定的农场,无人机调查反复进行了几周的反复进行。这个5cm/像素数据足以准确地扎根牛位置以及其他因素,例如草覆盖。从33个宽面积无人机调查中,提取了1869个斑块,并使用精确的卫星光学模型人为地降解以模拟卫星数据。来自多个时间段的地理补丁被对齐并显示为集合,提供了一个多阶乘数据集,可用于检测农场的变化。公开提供了地理参考图像和27,853个手动注释的牛标签。
Modern livestock farming is increasingly data driven and frequently relies on efficient remote sensing to gather data over wide areas. High resolution satellite imagery is one such data source, which is becoming more accessible for farmers as coverage increases and cost falls. Such images can be used to detect and track animals, monitor pasture changes, and understand land use. Many of the data driven models being applied to these tasks require ground truthing at resolutions higher than satellites can provide. Simultaneously, there is a lack of available aerial imagery focused on farmland changes that occur over days or weeks, such as herd movement. With this goal in mind, we present a new multi-temporal dataset of high resolution UAV imagery which is artificially degraded to match satellite data quality. An empirical blurring metric is used to calibrate the degradation process against actual satellite imagery of the area. UAV surveys were flown repeatedly over several weeks, for specific farm locations. This 5cm/pixel data is sufficiently high resolution to accurately ground truth cattle locations, and other factors such as grass cover. From 33 wide area UAV surveys, 1869 patches were extracted and artificially degraded using an accurate satellite optical model to simulate satellite data. Geographic patches from multiple time periods are aligned and presented as sets, providing a multi-temporal dataset that can be used for detecting changes on farms. The geo-referenced images and 27,853 manually annotated cattle labels are made publicly available.