论文标题
使用深厚的增强学习有效的贫困制图
Efficient Poverty Mapping using Deep Reinforcement Learning
论文作者
论文摘要
高分辨率卫星图像和机器学习的结合已被证明在许多与可持续性有关的任务中有用,包括贫困预测,基础设施测量和森林监测。但是,高分辨率图像提供的准确性是有代价的,因为这样的图像在大规模购买非常昂贵。这为基于高分辨率的方法的有效缩放和广泛采用带来了重大障碍。为了在保持准确性的同时降低采集成本,我们提出了一种加强学习方法,在该方法中,在进行高分辨率图像的深度学习任务之前,使用自由的低分辨率图像来动态地确定在哪里获取昂贵的高分辨率图像。我们将这种方法应用于乌干达的贫困预测任务,以一种早期的方法来使用对象检测来计算对象并使用这些计数来预测贫困。我们的方法超过了此任务的先前性能基准,同时使用了80%的高分辨率图像。我们的方法可以在需要高分辨率图像的许多可持续性领域中应用。
The combination of high-resolution satellite imagery and machine learning have proven useful in many sustainability-related tasks, including poverty prediction, infrastructure measurement, and forest monitoring. However, the accuracy afforded by high-resolution imagery comes at a cost, as such imagery is extremely expensive to purchase at scale. This creates a substantial hurdle to the efficient scaling and widespread adoption of high-resolution-based approaches. To reduce acquisition costs while maintaining accuracy, we propose a reinforcement learning approach in which free low-resolution imagery is used to dynamically identify where to acquire costly high-resolution images, prior to performing a deep learning task on the high-resolution images. We apply this approach to the task of poverty prediction in Uganda, building on an earlier approach that used object detection to count objects and use these counts to predict poverty. Our approach exceeds previous performance benchmarks on this task while using 80% fewer high-resolution images. Our approach could have application in many sustainability domains that require high-resolution imagery.