TL;DR
FastDeRain is a fast and effective video rain streak removal method that leverages directional gradient priors and sparsity to outperform existing techniques in both accuracy and speed.
Contribution
The paper introduces a novel rain removal approach using directional gradient priors and a split augmented Lagrangian algorithm, achieving superior efficiency and effectiveness.
Findings
Outperforms state-of-the-art methods in rain streak removal
Demonstrates high efficiency and speed in processing
Effective on both synthetic and real data
Abstract
Rain streak removal is an important issue in outdoor vision systems and has recently been investigated extensively. In this paper, we propose a novel video rain streak removal approach FastDeRain, which fully considers the discriminative characteristics of rain streaks and the clean video in the gradient domain. Specifically, on the one hand, rain streaks are sparse and smooth along the direction of the raindrops, whereas on the other hand, clean videos exhibit piecewise smoothness along the rain-perpendicular direction and continuity along the temporal direction. Theses smoothness and continuity results in the sparse distribution in the different directional gradient domain, respectively. Thus, we minimize 1) the norm to enhance the sparsity of the underlying rain streaks, 2) two norm of unidirectional Total Variation (TV) regularizers to guarantee the anisotropic…
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