Vision-Based Rain Gauge for Dynamic Scenes

Cheen-Hau Tan, Jie Chen, Yun Ni, Lap-Pui Chau, L. M. Soh
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Abstract

In this paper we develop a vision-based rain intensity measurement method for dynamic scenes. The method first measures the area density of rain by analyzing temporal changes in pixel values in the video input. The area density, represented as a binary rain map, is then mapped to a rain intensity value using linear regression. To ensure temporal consistency of scene content across frames in dynamic scenes, we applied superpixel-based content alignment. Potential false detections in the binary rain map are removed using directional morphological opening. Experiments show that both superpixel-based content alignment and morphological opening are important for good rain map generation and rain intensity estimation
基于视觉的动态场景雨量计
本文提出了一种基于视觉的动态场景雨强测量方法。该方法首先通过分析视频输入中像素值的时间变化来测量雨的面积密度。区域密度表示为二值雨图,然后使用线性回归将其映射为雨强度值。为了确保动态场景中场景内容跨帧的时间一致性,我们应用了基于超像素的内容对齐。在二值雨图中潜在的错误检测被使用定向形态学打开去除。实验表明,基于超像素的内容对齐和形态开放对于生成良好的雨图和估计雨强都很重要
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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