视频中附着雨滴的检测和去除

Shaodi You, R. Tan, Rei Kawakami, K. Ikeuchi
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引用次数: 66

摘要

雨滴粘附在挡风玻璃或窗户玻璃上,会显著降低场景的能见度。因此,检测和去除雨滴将有利于许多计算机视觉应用,特别是户外监控系统和智能车辆系统。本文介绍了一种自动检测和去除附着雨滴的方法。其核心思想是利用雨滴的局部时空导数。首先,它根据输入视频的运动和强度时间导数来检测雨滴。其次,该方法基于雨滴部分区域完全遮挡场景,而其余区域仅部分遮挡的分析,将两种类型的区域分别去除。对于部分遮挡区域,它通过尽可能多地检索场景信息,即利用时间强度变化对检测到的部分遮挡区域求解混合函数来恢复。对于完全闭塞的区域,它使用视频补全技术来恢复它们。实验结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adherent Raindrop Detection and Removal in Video
Raindrops adhered to a windscreen or window glass can significantly degrade the visibility of a scene. Detecting and removing raindrops will, therefore, benefit many computer vision applications, particularly outdoor surveillance systems and intelligent vehicle systems. In this paper, a method that automatically detects and removes adherent raindrops is introduced. The core idea is to exploit the local spatio-temporal derivatives of raindrops. First, it detects raindrops based on the motion and the intensity temporal derivatives of the input video. Second, relying on an analysis that some areas of a raindrop completely occludes the scene, yet the remaining areas occludes only partially, the method removes the two types of areas separately. For partially occluding areas, it restores them by retrieving as much as possible information of the scene, namely, by solving a blending function on the detected partially occluding areas using the temporal intensity change. For completely occluding areas, it recovers them by using a video completion technique. Experimental results using various real videos show the effectiveness of the proposed method.
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