Author:
Wen Qiang,Chen Lele,Jin Jingwen,Huang Jianhao,Wan HeLin
Abstract
Purpose
Fixed mode noise and random mode noise always exist in the image sensor, which affects the imaging quality of the image sensor. The charge diffusion and color mixing between pixels in the photoelectric conversion process belong to fixed mode noise. This study aims to improve the image sensor imaging quality by processing the fixed mode noise.
Design/methodology/approach
Through an iterative training of an ergoable long- and short-term memory recurrent neural network model, the authors obtain a neural network model able to compensate for image noise crosstalk. To overcome the lack of differences in the same color pixels on each template of the image sensor under flat-field light, the data before and after compensation were used as a new data set to further train the neural network iteratively.
Findings
The comparison of the images compensated by the two sets of neural network models shows that the gray value distribution is more concentrated and uniform. The middle and high frequency components in the spatial spectrum are all increased, indicating that the compensated image edges change faster and are more detailed (Hinton and Salakhutdinov, 2006; LeCun et al., 1998; Mohanty et al., 2016; Zang et al., 2023).
Originality/value
In this paper, the authors use the iterative learning color image pixel crosstalk compensation method to effectively alleviate the incomplete color mixing problem caused by the insufficient filter rate and the electric crosstalk problem caused by the lateral diffusion of the optical charge caused by the adjacent pixel potential trap.
Reference22 articles.
1. Advances on CMOS image sensors;Sensor Review,2016
2. A digital arbitrary size kernel convolution smart image sensor based on in-pixel pulse width processors;Sensor Review,2017
3. Reducing the dimensionality of data with neural networks;Science,2006
4. Gradient-based learning applied to document recognition;Proceedings of the IEEE,1998
5. An adaptive self-guided wavelet convolutional neural network with compound loss for low-dose CT denoising;Biomedical Signal Processing and Control,2022