Images captured under extremely low light conditions are noise-limited, which can cause existing robotic vision algorithms to fail. In this paper we develop an image processing technique for aiding 3D reconstruction from images acquired in low light conditions. Our technique, based on burst photography, uses direct methods for image registration within bursts of short exposure time images to improve the robustness and accuracy of feature-based structure-from-motion (SfM). We demonstrate improved SfM performance in challenging light-constrained scenes, including quantitative evaluations that show improved feature performance and camera pose estimates. Additionally, we show that our method converges more frequently to correct reconstructions than the state-of-the-art. Our method is a significant step towards allowing robots to operate in low light conditions, with potential applications to robots operating in environments such as underground mines and night time operation.
翻译:在极低光条件下拍摄的图像有噪音限制,这可能导致现有机器人视觉算法失败。在本文中,我们开发了一种图像处理技术,用在低光条件下获得的图像协助三维重建。我们基于爆破摄影技术,在短接触时间短的图像中直接使用图像登记方法,以提高基于地貌结构的自动(SfM)的坚固性和准确性。我们展示了SfM在挑战受光限制的场景方面表现的改善,包括量化评估,显示特征性能的改善和相机产生的估计。此外,我们显示,我们的方法比最新技术更频繁地结合,以纠正重建。我们的方法是朝着允许机器人在低光度条件下运行迈出的重要一步,有可能在地下矿井和夜间运行的环境中操作机器人。