会议专题

A Two-Step Approach to See-Through Bad Weather for Surveillance Video Quality Enhancement

Adverse weather conditions such as snow, fog or heavy rain greatly reduce the visual quality of outdoor surveillance videos. Video quality enhancement can improve the visual quality of surveillance videos providing clearer images with more details. Existing work in this area mainly focuses on quality enhancement for high resolution videos or still images, but few algorithms are developed for enhancing surveillance videos, which normally have low resolution, high noise and compression artifacts. In addition, for snow or rain conditions, the image quality of near-filed view is degraded by the obscuration of apparent snowflakes and raindrops, while the quality of farfield view is degraded by the obscuration of fog-like snowflakes or raindrops. Very few video quality enhancement algorithms have been developed to handle both problems. In this paper, we propose a novel video quality enhancement algorithm for see-through snow, fog or heavy rain. The proposed algorithm has two major steps: 1. the near-field enhancement algorithm identifies obscuration pixels by snow or rain in the near-field view and removes these pixels as snowflakes or raindrops; different from state-of-the-art methods, the algorithm in this step can detect snowflakes on foreground object and background, and choose different methods to fill in the removed regions. 2. the far-field enhancement algorithm restores the image’s contrast information not only to reveal more details in the far-field view but also to enhance the overall image’s quality; in this step, the proposed algorithm adaptively enhances the global and local contrast, which is inspired on the human visual system, and accounts for the perceptual sensitivity to noise, compression artifacts, and the texture of image content. From our extensive testing, the proposed approach significantly improves the visual quality of surveillance videos by removing snow/fog/rain effects.

Zhen Jia Hongcheng Wang Rodrigo Caballero Ziyou Xiong Jianwei Zhao Alan Finn

United Technologies Research Center (China) Ltd.,Shanghai World Financial Center,100 Century Avenue, United Technologies Research Center,411 Silver Lane,East Hartford,CT 06118,USA

国际会议

2011 IEEE International Conference on Robotics and Automation(2011年IEEE世界机器人与自动化大会 ICRA 2011)

上海

英文

5309-5314

2011-05-09(万方平台首次上网日期,不代表论文的发表时间)