基于光流的运动图像分析研究进展
A Survey of Motion Estimation Based on Optical Flow
DOI: 10.12677/AIRR.2017.61002, PDF, HTML, XML, 下载: 2,395  浏览: 6,563 
作者: 邵晓芳, 叶灵伟, 李大龙:海军航空工程学院青岛校区,山东 青岛
关键词: 光流场运动估计光流约束条件Optical Flow Motion Estimation Restriction Conditions of Optical Flow
摘要: 基于光流的运动图像分析是解决目标跟踪、视频压缩等许多机器视觉问题的关键技术之一。从光流场的含义和求解思路入手,对运动图像分析问题和现有研究工作进行了较为全面的描述和分析,最后展望了未来的研究方向,并推荐一些比较好的网络资源。
Abstract: Motion estimation is one of the key technologies for solving many machine vision problems such as object tracking and video compression. Starting from the description and resolution of optical flow, this paper gives a comprehensive presentation and analysis on the motion estimation problem and previous works. At last, future research directions are suggested and some good network resources are recommended.
文章引用:邵晓芳, 叶灵伟, 李大龙. 基于光流的运动图像分析研究进展[J]. 人工智能与机器人研究, 2017, 6(1): 9-15. https://doi.org/10.12677/AIRR.2017.61002

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