Light Field Synthesis from a Monocular Image using Variable LDI

CVPR Workshops(2023)

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摘要
Recent advancements in learning-based novel view synthesis enable users to synthesize light field from a monocular image without special equipment. Moreover, the state-of-the-art techniques including multiplane image (MPI) show outstanding performance in synthesizing accurate light field from a monocular image. In this study, we propose a new variable layered depth image (VLDI) representation to generate precise light field synthesis results using only a few layers. Our method exploits LDI representation built on a new two-stream halfway fusion network and transformation process. This framework has an efficient structure that directly generates the region that does not require network prediction from inputs. As a result, the proposed method allows us to acquire high-quality light field easily and quickly. Experimental results show that the proposed method outperforms the previous works quantitatively and qualitatively for diverse examples.
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关键词
accurate light field,high-quality light field,LDI representation,learning-based novel view synthesis,monocular image,multiplane image,precise light field synthesis results,transformation process,two-stream halfway fusion network,variable layered depth image representation,variable LDI
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