改进了RAW图像的照明和传感器之间的映射。

IF 1.5 3区 物理与天体物理 Q3 OPTICS
Abhijith Punnappurath, Luxi Zhao, Hoang Le, Abdelrahman Abdelhamed, SaiKiran Kumar Tedla, Michael S Brown
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引用次数: 0

摘要

RAW图像是未经处理的相机传感器输出,具有基于传感器彩色滤光片光谱灵敏度的传感器特定RGB值。由于传感器对场景照明的光谱特性的响应,RAW图像还会产生强烈的偏色。RAW图像的传感器和照明特定性质使得为深度学习方法捕获RAW数据集具有挑战性,因为需要在广泛的照明范围内为每个传感器捕获场景。对于给定传感器的照明增强方法和在传感器之间映射RAW图像的能力对于减少数据捕获的负担非常重要。为了探索这个问题,我们引入了我们认为是第一个此类数据集,其中包括在大范围照明下精心捕获的场景。具体来说,我们使用可调照明光谱的定制灯箱,用不同的相机捕捉多个场景。我们的照明和传感器映射数据集有390个照明,4个摄像头和18个场景。使用该数据集,我们引入了一种轻量级的神经网络方法,用于照明和传感器映射,该方法优于竞争对手的方法。我们展示了我们的方法在训练神经ISP的下游任务上的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved mapping between illuminations and sensors for RAW images.

RAW images are unprocessed camera sensor output with sensor-specific RGB values based on the sensor's color filter spectral sensitivities. RAW images also incur strong color casts due to the sensor's response to the spectral properties of scene illumination. The sensor- and illumination-specific nature of RAW images makes it challenging to capture RAW datasets for deep learning methods, as scenes need to be captured for each sensor and under a wide range of illumination. Methods for illumination augmentation for a given sensor and the ability to map RAW images between sensors are important for reducing the burden of data capture. To explore this problem, we introduce what we believe to be a first-of-its-kind dataset comprising carefully captured scenes under a wide range of illumination. Specifically, we use a customized lightbox with tunable illumination spectra to capture several scenes with different cameras. Our illumination and sensor mapping dataset has 390 illuminations, four cameras, and 18 scenes. Using this dataset, we introduce a lightweight neural network approach for illumination and sensor mapping that outperforms competing methods. We demonstrate the utility of our approach on the downstream task of training a neural ISP.

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来源期刊
CiteScore
3.40
自引率
10.50%
发文量
417
审稿时长
3 months
期刊介绍: The Journal of the Optical Society of America A (JOSA A) is devoted to developments in any field of classical optics, image science, and vision. JOSA A includes original peer-reviewed papers on such topics as: * Atmospheric optics * Clinical vision * Coherence and Statistical Optics * Color * Diffraction and gratings * Image processing * Machine vision * Physiological optics * Polarization * Scattering * Signal processing * Thin films * Visual optics Also: j opt soc am a.
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