Multi-Level Generative Chaotic Recurrent Network For Image Inpainting

2021 IEEE WINTER CONFERENCE ON APPLICATIONS OF COMPUTER VISION WACV 2021(2021)

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摘要
This paper presents a novel multi-level generative chaotic Recurrent Neural Network (RNN) for image inpainting. This technique utilizes a general framework with multiple chaotic RNN that makes learning the image prior from a single corrupted image more robust and efficient. The proposed network utilizes a randomly-initialized process for parameterization, along with a unique quad-directional encoder structure, chaotic state transition, and adaptive importance for multi-level RNN updating. The efficacy of the approach has been validated through multiple experiments. In spite of a much lower computational load, quantitative comparisons reveal that the proposed approach exceeds the performance of several image-restoration benchmarks.
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关键词
image inpainting,multiple chaotic RNN,corrupted image,unique quad-directional encoder structure,chaotic state transition,multilevel RNN updating,image restoration,multilevel generative chaotic recurrent neural network
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