NT2I Company, 42000 Saint-Etienne, France.
Hubert Curien Laboratory, Jean Monnet University, 42000 Saint-Etienne, France.
Sensors (Basel). 2021 Nov 27;21(23):7906. doi: 10.3390/s21237906.
Using a sensor in variable lighting conditions, especially very low-light conditions, requires the application of image enhancement followed by denoising to retrieve correct information. The limits of such a process are explored in the present paper, with the objective of preserving the quality of enhanced images. The LIP (Logarithmic Image Processing) framework was initially created to process images acquired in transmission. The compatibility of this framework with the human visual system makes possible its application to images acquired in reflection. Previous works have established the ability of the LIP laws to perform a precise simulation of exposure time variation. Such a simulation permits the enhancement of low-light images, but a denoising step is required, realized by using a CNN (Convolutional Neural Network). A main contribution of the paper consists of using rigorous tools (metrics) to estimate the enhancement reliability in terms of noise reduction, visual image quality, and color preservation. Thanks to these tools, it has been established that the standard exposure time can be significantly reduced, which considerably enlarges the use of a given sensor. Moreover, the contribution of the LIP enhancement and denoising step are evaluated separately.
在可变光照条件下,特别是在极低光照条件下使用传感器,需要应用图像增强,然后进行去噪以检索正确的信息。本文探讨了这一过程的局限性,目的是保持增强图像的质量。LIP(对数图像处理)框架最初是为处理透射中获取的图像而创建的。该框架与人类视觉系统的兼容性使得其可以应用于反射中获取的图像。先前的工作已经证明,LIP 定律能够精确模拟曝光时间的变化。这种模拟允许增强低光图像,但需要进行降噪步骤,这可以通过使用 CNN(卷积神经网络)来实现。本文的一个主要贡献在于使用严格的工具(指标)来评估增强的可靠性,包括降噪、视觉图像质量和颜色保留。借助这些工具,已经确定可以显著减少标准曝光时间,这极大地扩大了给定传感器的使用范围。此外,还分别评估了 LIP 增强和去噪步骤的贡献。