论文标题
深层视觉刺耳仪的方法,挑战和应用:朝着复杂和新兴区域
Approaches, Challenges, and Applications for Deep Visual Odometry: Toward to Complicated and Emerging Areas
论文作者
论文摘要
视觉进程(VO)是处理相对本地化问题的普遍方法,该问题变得越来越成熟和准确,但是在充满挑战的环境下,它往往脆弱。与基于经典几何方法的方法相比,基于深度学习的方法可以自动学习有效且可靠的表示,例如深度,光流,特征,自我感动等,而无需显式计算。然而,仍然缺乏对基于深度学习的VO(Deep Vo)的最新进展的彻底回顾。因此,本文旨在深入了解深度学习如何获利和优化VO系统。我们首先筛选出许多资格,包括准确性,效率,可伸缩性,动态性,可实用性和可扩展性,并用作标准。然后,使用提供的标准作为统一测量值,我们详细介绍并讨论了深度学习如何从深度估计,特征提取和匹配的方面提高VO的性能,姿势估计。我们还总结了深层VO的复杂和新兴领域,例如移动机器人,医疗机器人,增强现实和虚拟现实等。通过文献分解,分析和比较,我们终于提出了许多开放问题,并在该领域提出了一些未来的研究方向。
Visual odometry (VO) is a prevalent way to deal with the relative localization problem, which is becoming increasingly mature and accurate, but it tends to be fragile under challenging environments. Comparing with classical geometry-based methods, deep learning-based methods can automatically learn effective and robust representations, such as depth, optical flow, feature, ego-motion, etc., from data without explicit computation. Nevertheless, there still lacks a thorough review of the recent advances of deep learning-based VO (Deep VO). Therefore, this paper aims to gain a deep insight on how deep learning can profit and optimize the VO systems. We first screen out a number of qualifications including accuracy, efficiency, scalability, dynamicity, practicability, and extensibility, and employ them as the criteria. Then, using the offered criteria as the uniform measurements, we detailedly evaluate and discuss how deep learning improves the performance of VO from the aspects of depth estimation, feature extraction and matching, pose estimation. We also summarize the complicated and emerging areas of Deep VO, such as mobile robots, medical robots, augmented reality and virtual reality, etc. Through the literature decomposition, analysis, and comparison, we finally put forward a number of open issues and raise some future research directions in this field.