论文标题
朝着关键点指导的自我监督深度估计
Towards Keypoint Guided Self-Supervised Depth Estimation
论文作者
论文摘要
本文提议将关键点用作自学线索,以从输入图像集合中学习深度图估算。由于很难获得实际图像的地面真理深度,因此已经提出了许多无监督和自我监督的方法。这些无监督的方法中的大多数都使用深度图和自我感动估计将像素从当前图像从图像集合中重新投射到相邻图像中。根据对应体原始像素和重新注射的像素之间的像素强度差异评估深度和自我运动估计。我们建议首先选择两个图像中的图像关键点,然后再重新投影并比较两个图像的通讯关键点。关键点应该很好地描述独特的图像特征。通过学习有或没有关键点提取技术的深层模型,我们表明使用按键可以改善深度估计学习。我们还提出了一些未来的指导,以引导结构 - 动作问题的结构学习。
This paper proposes to use keypoints as a self-supervision clue for learning depth map estimation from a collection of input images. As ground truth depth from real images is difficult to obtain, there are many unsupervised and self-supervised approaches to depth estimation that have been proposed. Most of these unsupervised approaches use depth map and ego-motion estimations to reproject the pixels from the current image into the adjacent image from the image collection. Depth and ego-motion estimations are evaluated based on pixel intensity differences between the correspondent original and reprojected pixels. Instead of reprojecting the individual pixels, we propose to first select image keypoints in both images and then reproject and compare the correspondent keypoints of the two images. The keypoints should describe the distinctive image features well. By learning a deep model with and without the keypoint extraction technique, we show that using the keypoints improve the depth estimation learning. We also propose some future directions for keypoint-guided learning of structure-from-motion problems.