Removal of stripe noise with spatially adaptive unidirectional total variation |
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Authors: | Gang Zhou Houzhang Fang Luxin Yan Tianxu Zhang Jing Hu |
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Affiliation: | Science and Technology on Multispectral Information Processing Laboratory, School of Automation, Huazhong University of Science and Technology, Wuhan, Hubei 430074, China |
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Abstract: | Multi-detectors imaging system often suffers from the problem of the stripe noise, which greatly degrades the quality of the resulting images. To better remove stripe noise and preserve the edge and texture information, a robust destriping algorithm with spatially adaptive unidirectional total variation (SAUTV) model is introduced. The spatial information of the striping noise is detected by using the stripe indicator called difference eigenvalue, and a weighted parameter determined by the difference eigenvalue information is added to constrain the regularization strength of the UTV regularization. The proposed algorithm can effectively remove the stripe noise and preserve the edge and detailed information. Moreover, it becomes more robust with the change of the regularization parameter. Split Bregman method is utilized to efficiently solve the resulting minimization problem. Comparative results on simulated and real striped images taken with two kinds of imaging systems are reported. |
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Keywords: | Striping noise removal Spatially adaptive unidirectional total variation Stripe indicator Split Bregman method |
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