As an essential component for many autonomous driving and robotic activities such as ego-motion estimation, obstacle avoidance and scene understanding, monocular depth estimation (MDE) has attracted great attention from the computer vision and robotics communities. Over the past decades, a large number of methods have been developed. To the best of our knowledge, however, there is not a comprehensive survey of MDE. This paper aims to bridge this gap by reviewing 197 relevant articles published between 1970 and 2021. In particular, we provide a comprehensive survey of MDE covering various methods, introduce the popular performance evaluation metrics and summarize publically available datasets. We also summarize available open-source implementations of some representative methods and compare their performances. Furthermore, we review the application of MDE in some important robotic tasks. Finally, we conclude this paper by presenting some promising directions for future research. This survey is expected to assist readers to navigate this research field.
翻译:作为许多自主驾驶和机器人活动的基本组成部分,如自我感动估计、避免障碍和了解场景,单深度估计吸引了计算机视觉和机器人界的极大关注,在过去几十年中,开发了大量方法,但据我们所知,没有对MDE进行全面调查。本文的目的是通过审查1970年至2021年期间出版的197篇相关文章来弥补这一差距。我们尤其对MDE进行了全面调查,调查了各种方法,引入了大众业绩评价指标,并总结了公开可得的数据集。我们还总结了一些具有代表性的方法的公开来源执行情况,并比较了这些方法的绩效。此外,我们审查了MDE在一些重要机器人任务中的应用情况。最后,我们通过为今后的研究提出一些有希望的方向来完成本文件。预计这项调查将有助于读者了解这一研究领域。