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Beyond Synthetic Data: A Blind Deraining Quality Assessment Metric Towards Authentic Rain Image

机译:超越综合数据:针对真实降雨图像的盲目排水质量评估指标

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Deraining quality assessment (DQA) plays an important role in evaluating and guiding the design of the image deraining algorithm. Due to the absence of rain-free image in the real rainy weather, the existing deraining algorithms are typically tested on several synthetic data by simulating very limited types of rain streaks, which are far from sufficient to measure the practicability of a deraining algorithm. In this paper, we first build a subjective DQA database that collects diverse authentic rain images and their derained versions. Then, a blind quality metric is developed to predict the deraining quality. Since the deraining artifacts are anisotropic and variable, we propose to describe the image via a bi-directional gated fusion network (B-GFN), which adaptively integrates the multi-scale cues of deraining artifact. Experiments confirm the effectiveness of the proposed method and its superiority with respect to many state-of-the-art blind image quality metrics.
机译:排水质量评估(DQA)在评估和指导图像排水算法的设计中起着重要作用。由于在实际的阴雨天气中没有无雨图像,因此通常通过模拟非常有限的雨条纹类型来对几种合成数据进行测试,以对现有的排水算法进行测试,这远远不足以衡量排水算法的实用性。在本文中,我们首先建立一个主观的DQA数据库,该数据库收集各种真实的降雨图像及其排水版本。然后,开发了盲质量度量来预测排水质量。由于排水伪像是各向异性且可变的,因此我们建议通过双向门控融合网络(B-GFN)来描述图像,该网络自适应地整合了排水伪像的多尺度提示。实验证实了该方法的有效性及其相对于许多最新的盲图像质量指标的优越性。

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