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Abstract:
Rainy images can affect the performance and accuracy of computer vision tasks. Rainy images often contain raindrops or rain marks from different directions,sizes,and shapes. When removing these raindrops and rain marks,the existing methods often do not take into account the feature information of rainy images at different fine scales,and only use a single scale. There is a big defect in image deraining,and it is impossible to restore a clear enough image for visual tasks. Therefore,benefiting from the powerful feature extraction capability of the convolutional neural network architecture,an end-to-end multi-cascade progressive convolution structure operator is proposed,which consists of four convolutional layers connected through a ladder to form an overall module. This module can extract and integrate rainy weather features in multi-scale scenes. The operator module is embedded into the progressive recurrent network structure,the recurrent structure is used to remove rain streaks many times, and finally the rain- free image close to the real image is effectively restored. The method is compared with the existing artificially synthesized rain image datasets Rain100H,Rain100L,Rain800 and the synthetic rain image dataset BDD1000 in the field of automatic driving. The experiment results shows that the PSNR values of the algorithm on the four datasets reach 30. 70,37. 91,27. 63,35. 74 dB,and the SSIM values reach 0. 914,0. 980,0. 894,0. 977. Through the visual display of the rain removal results of the real rain map dataset,the effectiveness of the method in this paper on the rain removal task is fully verified.
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CHINESE JOURNAL OF LIQUID CRYSTALS AND DISPLAYS
ISSN: 1007-2780
CN: 22-1259/O4
Year: 2023
Issue: 10
Volume: 38
Page: 1409-1422
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JCR@2023
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JCR@2023
JCR Journal Grade:3
CAS Journal Grade:4
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ESI Highly Cited Papers on the List: 0 Unfold All
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30 Days PV: 2
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