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DeepISP: Toward Learning an End-to-End Image Processing Pipeline

机译:DeepISP:走向学习端到端图像处理管道

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摘要

We present DeepISP, a full end-to-end deep neural model of the camera image signal processing pipeline. Our model learns a mapping from the raw low-light mosaiced image to the final visually compelling image and encompasses low-level tasks, such as demosaicing and denoising, as well as higher-level tasks, such as color correction and image adjustment. The training and evaluation of the pipeline were performed on a dedicated data set containing pairs of low-light and well-lit images captured by a Samsung S7 smartphone camera in both raw and processed JPEG formats. The proposed solution achieves the state-of-the-art performance in objective evaluation of peak signal-to-noise ratio on the subtask of joint denoising and demosaicing. For the full end-to-end pipeline, it achieves better visual quality compared to the manufacturer ISP, in both a subjective human assessment and when rated by a deep model trained for assessing image quality.
机译:我们介绍了DeepISP,这是摄像机图像信号处理管道的完整的端到端深度神经模型。我们的模型学习从原始的弱光马赛克图像到最终的视觉吸引力图像的映射,并包含低级任务(例如去马赛克和去噪)以及高级任务(例如颜色校正和图像调整)。管道的培训和评估是在专用数据集上执行的,该数据集包含由Samsung S7智能手机相机以原始和处理的JPEG格式捕获的成对的弱光和光线充足的图像。提出的解决方案在联合去噪和去马赛克的子任务上实现了峰值信噪比的客观评估中的最新性能。对于完整的端到端流水线,无论是在主观的人工评估还是在经过深度评估以评估图像质量的深层模型进行评估时,与制造商ISP相比,它都能获得更好的视觉质量。

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