Imaging under photon-scarce situations introduces challenges to many applications as the captured images are with low signal-to-noise ratio and poor luminance. In this paper, we investigate the raw image restoration under low-photon-count conditions by simulating the imaging of quanta image sensor (QIS). We develop a lightweight framework, which consists of a multi-level pyramid denoising network (MPDNet) and a luminance adjustment (LA) module to achieve separate denoising and luminance enhancement. The main component of our framework is the multi-skip attention residual block (MARB), which integrates multi-scale feature fusion and attention mechanism for better feature representation. Our MPDNet adopts the idea of Laplacian pyramid to learn the small-scale noise map and larger-scale high-frequency details at different levels, and feature extractions are conducted on the multi-scale input images to encode richer contextual information. Our LA module enhances the luminance of the denoised image by estimating its illumination, which can better avoid color distortion. Extensive experimental results have demonstrated that our image restorer can achieve superior performance on the degraded images with various photon levels by suppressing noise and recovering luminance and color effectively.
翻译:光蚀情况下的图像成像给许多应用带来了挑战,因为所捕到的图像的信号到噪音比率低且亮度差,因此给许多应用带来了挑战。 在本文中,我们通过模拟夸坦图像传感器(QIS)成像来调查低光计条件下的原始图像恢复情况。我们开发了一个轻量框架,其中包括一个多层次的金字塔分解网络(MPDNet)和一个发光调整模块(LA),以实现单独的分解和发光增强。我们框架的主要组成部分是多斯基关注残余块(MARB),它整合了多层特征聚合和关注机制,以更好地体现地貌。我们的MPDNet采用了拉普拉肯金字塔的想法,在不同级别学习小型噪音图和大尺度高频细节,并且对多尺度的输入图像进行提取,以编码更丰富的背景信息。我们的LA模块通过估计其分解图像的光度来增强光度的光度,从而更好地避免色彩扭曲。广泛的实验结果表明,我们图像的恢复和彩色恢复能够有效地恢复各种图像的优等。