Research on Crosstalk and Color Aliasing Compensation of Color Image Sensor Based on Artificial Neural Network

oleh: Qiang Wen, Yanqiu Liu, Ting Luo, Lele Chen, Jianhao Huang, Desen Song, Jingwen Jin

Format: Article
Diterbitkan: IEEE 2022-01-01

Deskripsi

In this paper, the image sensor compensation frameworks are established based on the correlation of pixel response characteristics; The pixel response model is established, and a method to measure the crosstalk of adjacent pixels of color image sensor under flat field light is proposed; at the same time, an artificial neural network training set is constructed by using the measured values and theoretical values of pixel response generated by combined exposures; a compensation method of using neural network compensation framework to replace high-dimensional neural network to traverse the image is proposed, which reduces the scale and training complexity of neural network; Finally, the corresponding spatial arrangement data of pixels are transformed into the frequency domain through the Fourier expansion algorithm, and the compensation effect is evaluated according to the change of high-frequency components. According to the experimental results, this method can effectively suppress color aliasing and crosstalk noise of the color image sensor. This paper provides a new method to compensate color aliasing and crosstalk noise.