Learned Focused Plenoptic Image Compression with Microimage Preprocessing and Global Attention

April 30, 2023 ยท Entered Twilight ยท ๐Ÿ› IEEE transactions on multimedia

๐Ÿ’ค TWILIGHT: Eternal Rest
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Repo contents: .gitignore, Inference.py, Inference.sh, LICENSE, Network, RDResults, README.md, Rendering, Update.sh, asserts, requirements.txt, setup.py, train.py, updata.py, utils.py

Authors Kedeng Tong, Xin Jin, Yuqing Yang, Chen Wang, Jinshi Kang, Fan Jiang arXiv ID 2305.00489 Category cs.CV: Computer Vision Cross-listed cs.MM Citations 8 Venue IEEE transactions on multimedia Repository https://github.com/VincentChandelier/GACN โญ 8 Last Checked 2 months ago
Abstract
Focused plenoptic cameras can record spatial and angular information of the light field (LF) simultaneously with higher spatial resolution relative to traditional plenoptic cameras, which facilitate various applications in computer vision. However, the existing plenoptic image compression methods present ineffectiveness to the captured images due to the complex micro-textures generated by the microlens relay imaging and long-distance correlations among the microimages. In this paper, a lossy end-to-end learning architecture is proposed to compress the focused plenoptic images efficiently. First, a data preprocessing scheme is designed according to the imaging principle to remove the sub-aperture image ineffective pixels in the recorded light field and align the microimages to the rectangular grid. Then, the global attention module with large receptive field is proposed to capture the global correlation among the feature maps using pixel-wise vector attention computed in the resampling process. Also, a new image dataset consisting of 1910 focused plenoptic images with content and depth diversity is built to benefit training and testing. Extensive experimental evaluations demonstrate the effectiveness of the proposed approach. It outperforms intra coding of HEVC and VVC by an average of 62.57% and 51.67% bitrate reduction on the 20 preprocessed focused plenoptic images, respectively. Also, it achieves 18.73% bitrate saving and generates perceptually pleasant reconstructions compared to the state-of-the-art end-to-end image compression methods, which benefits the applications of focused plenoptic cameras greatly. The dataset and code are publicly available at https://github.com/VincentChandelier/GACN.
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