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Determining 3D Flow Fields via Multi-camera Light Field Imaging
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Deep Sparse-to-Dense Inbetweening for Multi-View Light Fields.

Yifan Mao, Zeyu Xiao, Ping An

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    This study introduces sparse-to-dense inbetweening for light field (LF) imaging, generating dense views from sparse inputs. The novel method enhances LF view synthesis and data robustness, setting a new benchmark.

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    Area of Science:

    • Computer Vision
    • Image Processing
    • Computational Photography

    Background:

    • Light field (LF) imaging captures intensity and directional light information, surpassing traditional methods.
    • Existing LF view synthesis struggles with sparse inputs and single-view robustness.
    • Sparse-to-dense inbetweening addresses these limitations by generating dense views from sparse LF data.

    Purpose of the Study:

    • Introduce and define the sparse-to-dense inbetweening task for LF imaging.
    • Develop a robust method for generating dense novel views from sparse multi-view LFs.
    • Establish a benchmark dataset and baseline method for this new task.

    Main Methods:

    • Constructed a high-quality multi-view LF dataset (60 indoor, 59 outdoor scenes).
    • Proposed a baseline method featuring adaptive alignment, multi-level feature decoupling, and refinement modules.
    • Introduced an artifact-aware loss function for visual quality enhancement.

    Main Results:

    • The proposed method significantly outperforms existing approaches in sparse-to-dense inbetweening.
    • Demonstrated enhanced LF view synthesis by filling interperspective gaps and increasing data robustness.
    • Established a new benchmark for the sparse-to-dense inbetweening task.

    Conclusions:

    • The novel sparse-to-dense inbetweening task and baseline method advance LF imaging capabilities.
    • The developed dataset and method provide a foundation for future research in LF view synthesis.
    • The approach effectively handles sparse inputs and improves the robustness and quality of synthesized LF views.