Toward Blind Flare Removal Using Knowledge-Driven Flare-Level Estimator

Haoyou Deng;Lida Li;Feng Zhang;Zhiqiang Li;Bin Xu;Qingbo Lu;Changxin Gao;Nong Sang
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Abstract

Lens flare is a common phenomenon when strong light rays arrive at the camera sensor and a clean scene is consequently mixed up with various opaque and semi-transparent artifacts. Existing deep learning methods are always constrained with limited real image pairs for training. Though recent synthesis-based approaches are found effective, synthesized pairs still deviate from the real ones as the mixing mechanism of flare artifacts and scenes in the wild always depends on a line of undetermined factors, such as lens structure, scratches, etc. In this paper, we present a new perspective from the blind nature of the flare removal task in a knowledge-driven manner. Specifically, we present a simple yet effective flare-level estimator to predict the corruption level of a flare-corrupted image. The estimated flare-level can be interpreted as additive information of the gap between corrupted images and their flare-free correspondences to facilitate a network at both training and testing stages adaptively. Besides, we utilize a flare-level modulator to better integrate the estimations into networks. We also devise a flare-aware block for more accurate flare recognition and reconstruction. Additionally, we collect a new real-world flare dataset for benchmarking, namely WiderFlare. Extensive experiments on three benchmark datasets demonstrate that our method outperforms state-of-the-art methods quantitatively and qualitatively.
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利用知识驱动的耀斑级估计器实现盲目耀斑消除
镜头眩光是一种常见现象,当强光射入相机传感器时,干净的场景会因此混入各种不透明和半透明的伪影。现有的深度学习方法总是受限于有限的真实图像对训练。尽管最近基于合成的方法被认为是有效的,但合成的图像对仍然与真实图像对有偏差,因为耀斑伪影与野生场景的混合机制总是取决于一系列不确定因素,如镜头结构、划痕等。在本文中,我们以知识驱动的方式,从去除耀斑任务的盲目性中提出了一个新的视角。具体来说,我们提出了一种简单而有效的耀斑级别估算器,用于预测耀斑损坏图像的损坏级别。估算的耀斑级别可以解释为损坏图像与其无耀斑对应图像之间差距的加法信息,从而促进网络在训练和测试阶段的自适应。此外,我们还利用耀斑级调制器将估算结果更好地整合到网络中。我们还设计了一个耀斑感知块,以实现更准确的耀斑识别和重建。此外,我们还收集了一个新的真实耀斑数据集(即 WiderFlare)作为基准。在三个基准数据集上进行的广泛实验表明,我们的方法在数量和质量上都优于最先进的方法。
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