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Research on optimal skip connection scale in learning-based scattering imaging

Authors :
Shi Yingjie
Jing Han
Gu Jie
Enlai Guo
Shuo Zhu
Lianfa Bai
Source :
Seventh Symposium on Novel Photoelectronic Detection Technology and Applications.
Publication Year :
2021
Publisher :
SPIE, 2021.

Abstract

Strong scattering media bring difficulties to imaging in many fields such as medicine and astronomy. The deep learning method has a powerful fitting ability, which can be better applied in reconstructing the target behind the scattering medium. But the detail of the reconstructed target is often inaccurate. In this paper, the skip connection is added in the neural network to improve the accuracy of the reconstructed detail. This network can combine pixel-level information with high-level semantic information, and the information missed during the encoding process can be more involved in the final reconstruction process. 1100 handwritten characters are used as the targets hidden behind the ground glass. It is found that the quality of the reconstructed target is different when the skip connection is added to the network at different scales. The feature map visualization method is used to help us analyze the role of the skip connection. Meanwhile, PSNR (Peak Signal to Noise Ratio) is also used as an objective evaluation standard to evaluate the quality of reconstructed targets. According to subjective and objective evaluation criteria, conclusions can be drawn that the detail of targets can be better retained when the skip connection is added between the convolutional layer corresponding to the feature map of the size 64*64, and the average PSNR can be enhanced 1 dB compared with the network without skip connections. This work provides a reference for the fusion methods of different scale features in the computational optical imaging.

Details

Database :
OpenAIRE
Journal :
Seventh Symposium on Novel Photoelectronic Detection Technology and Applications
Accession number :
edsair.doi...........e009fe2098eca4528262ac015ba7b571
Full Text :
https://doi.org/10.1117/12.2586177