In this study, the authors address the challenge of removing wrinkled transparent films to reveal obscured information for industrial recognition systems. They introduce an end-to-end framework that utilizes polarization information to decouple specular highlights and other degradations from the film. By creating a practical dataset and conducting extensive experiments, they demonstrate superior performance in image reconstruction and downstream tasks like QR code reading and text OCR.
The study focuses on modeling the imaging of wrinkled transparent films into specular highlight and diffuse reflection components. The proposed framework includes an angle estimation network to optimize polarization angles for minimizing specular highlights, leading to better reconstruction results. The authors emphasize the importance of a practical dataset capturing paired images with and without transparent film in real industrial environments.
Furthermore, the authors conduct ablation studies to validate the effectiveness of their proposed polarization dataset and key components like AoP, DoP, and polarized prior in improving network performance. The results show that these components significantly contribute to enhancing the robustness and accuracy of the framework.
Overall, this research provides valuable insights into addressing challenges related to removing interference from wrinkled transparent films in industrial settings using innovative approaches based on polarization information.
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by Jiaqi Tang,R... о arxiv.org 03-08-2024
https://arxiv.org/pdf/2403.04368.pdfГлибші Запити