Wenpeng Xing, Jie Chen, Yike Guo. Robust Local Light Field Synthesis via Occlusion-aware Sampling and Deep Visual Feature Fusion[J]. Machine Intelligence Research, 2023, 20(3): 408-420. DOI: 10.1007/s11633-022-1381-9
Citation: Wenpeng Xing, Jie Chen, Yike Guo. Robust Local Light Field Synthesis via Occlusion-aware Sampling and Deep Visual Feature Fusion[J]. Machine Intelligence Research, 2023, 20(3): 408-420. DOI: 10.1007/s11633-022-1381-9

Robust Local Light Field Synthesis via Occlusion-aware Sampling and Deep Visual Feature Fusion

  • Novel view synthesis has attracted tremendous research attention recently for its applications in virtual reality and immersive telepresence. Rendering a locally immersive light field (LF) based on arbitrary large baseline RGB references is a challenging problem that lacks efficient solutions with existing novel view synthesis techniques. In this work, we aim at truthfully rendering local immersive novel views/LF images based on large baseline LF captures and a single RGB image in the target view. To fully explore the precious information from source LF captures, we propose a novel occlusion-aware source sampler (OSS) module which efficiently transfers the pixels of source views to the target view′s frustum in an occlusion-aware manner. An attention-based deep visual fusion module is proposed to fuse the revealed occluded background content with a preliminary LF into a final refined LF. The proposed source sampling and fusion mechanism not only helps to provide information for occluded regions from varying observation angles, but also proves to be able to effectively enhance the visual rendering quality. Experimental results show that our proposed method is able to render high-quality LF images/novel views with sparse RGB references and outperforms state-of-the-art LF rendering and novel view synthesis methods.
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