Nonlinear Optimization of Light Field Point Cloud

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Abstract

The problem of accurate three-dimensional reconstruction is important for many research and industrial applications. Light field depth estimation utilizes many observations of the scene and hence can provide accurate reconstruction. We present a method, which enhances existing reconstruction algorithm with per-layer disparity filtering and consistency-based holes filling. Together with that we reformulate the reconstruction result to a form of point cloud from different light field viewpoints and propose a non-linear optimization of it. The capability of our method to reconstruct scenes with acceptable quality was verified by evaluation on a publicly available dataset.

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APA

Anisimov, Y., Rambach, J. R., & Stricker, D. (2022). Nonlinear Optimization of Light Field Point Cloud. Sensors, 22(3). https://doi.org/10.3390/s22030814

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