Simultaneous underwater visibility assessment, enhancement and improved stereo

Robotics and Automation(2014)

引用 93|浏览39
暂无评分
摘要
Vision-based underwater navigation and obstacle avoidance demands robust computer vision algorithms, particularly for operation in turbid water with reduced visibility. This paper describes a novel method for the simultaneous underwater image quality assessment, visibility enhancement and disparity computation to increase stereo range resolution under dynamic, natural lighting and turbid conditions. The technique estimates the visibility properties from a sparse 3D map of the original degraded image using a physical underwater light attenuation model. Firstly, an iterated distance-adaptive image contrast enhancement enables a dense disparity computation and visibility estimation. Secondly, using a light attenuation model for ocean water, a color corrected stereo underwater image is obtained along with a visibility distance estimate. Experimental results in shallow, naturally lit, high-turbidity coastal environments show the proposed technique improves range estimation over the original images as well as image quality and color for habitat classification. Furthermore, the recursiveness and robustness of the technique allows implementation onboard an Autonomous Underwater Vehicle for improving navigation and obstacle avoidance performance.
更多
查看译文
关键词
autonomous underwater vehicles,collision avoidance,image enhancement,image resolution,robot vision,stereo image processing,autonomous underwater vehicle,color corrected stereo underwater image,dense disparity computation,habitat classification,high-turbidity coastal environments,improved stereo,iterated distance-adaptive image contrast enhancement,natural lighting,obstacle avoidance,robust computer vision algorithms,simultaneous underwater visibility assessment,sparse 3d map,stereo range resolution,turbid water,underwater image quality assessment,visibility distance estimate,visibility enhancement,visibility estimation,vision-based underwater navigation
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要