双曝光四拜耳模式联合去噪和去模糊建模

Yuzhi Zhao;Lai-Man Po;Xin Ye;Yongzhe Xu;Qiong Yan
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摘要

由于硬件和方法的限制,噪声和模糊引起的图像退化仍然是成像系统中一个持续的挑战。单图像解决方案面临噪声降低和运动模糊之间的固有权衡。虽然短曝光可以捕捉到清晰的运动,但它们会受到噪声放大的影响。长时间曝光可以减少噪点,但会产生模糊。基于学习的单图像增强器由于信息有限,往往过于平滑。使用连拍模式的多图像解决方案通过捕获更多的时空信息来避免这种权衡,但经常与相机/场景运动的不对准作斗争。为了解决这些限制,我们提出了一种基于物理模型的图像恢复方法,利用一种新型的双曝光Quad-Bayer模式传感器。通过在同一起始点捕获不同持续时间的短曝光和长曝光对,该方法在单个图像中集成了互补的噪声模糊信息。我们进一步引入了一种四元拜耳合成方法(B2QB)来模拟来自拜耳模式的传感器数据,以方便训练。基于这种双曝光传感器模型,我们设计了一种称为QRNet的分层卷积神经网络来恢复高质量的RGB图像。该网络结合了输入增强块和多级特征提取,提高了恢复质量。实验证明了在合成和真实世界数据集上优于最先进的去模糊和去噪方法的性能。代码、模型和数据集可以在https://github.com/zhaoyuzhi/QRNet上公开获得。
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Modeling Dual-Exposure Quad-Bayer Patterns for Joint Denoising and Deblurring
Image degradation caused by noise and blur remains a persistent challenge in imaging systems, stemming from limitations in both hardware and methodology. Single-image solutions face an inherent tradeoff between noise reduction and motion blur. While short exposures can capture clear motion, they suffer from noise amplification. Long exposures reduce noise but introduce blur. Learning-based single-image enhancers tend to be over-smooth due to the limited information. Multi-image solutions using burst mode avoid this tradeoff by capturing more spatial-temporal information but often struggle with misalignment from camera/scene motion. To address these limitations, we propose a physical-model-based image restoration approach leveraging a novel dual-exposure Quad-Bayer pattern sensor. By capturing pairs of short and long exposures at the same starting point but with varying durations, this method integrates complementary noise-blur information within a single image. We further introduce a Quad-Bayer synthesis method (B2QB) to simulate sensor data from Bayer patterns to facilitate training. Based on this dual-exposure sensor model, we design a hierarchical convolutional neural network called QRNet to recover high-quality RGB images. The network incorporates input enhancement blocks and multi-level feature extraction to improve restoration quality. Experiments demonstrate superior performance over state-of-the-art deblurring and denoising methods on both synthetic and real-world datasets. The code, model, and datasets are publicly available at https://github.com/zhaoyuzhi/QRNet.
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