TL;DR
This paper introduces a deep learning-based anti-aliasing framework for light field rendering that effectively addresses large disparity and non-Lambertian effects, outperforming previous methods in view synthesis and extrapolation.
Contribution
It proposes a novel image domain anti-aliasing approach integrated into a deep neural network to unify the handling of large disparity and non-Lambertian challenges in light field rendering.
Findings
Outperforms state-of-the-art methods in view interpolation.
Effectively handles large disparity and non-Lambertian effects.
Benefits light field view extrapolation.
Abstract
The light field (LF) reconstruction is mainly confronted with two challenges, large disparity and the non-Lambertian effect. Typical approaches either address the large disparity challenge using depth estimation followed by view synthesis or eschew explicit depth information to enable non-Lambertian rendering, but rarely solve both challenges in a unified framework. In this paper, we revisit the classic LF rendering framework to address both challenges by incorporating it with advanced deep learning techniques. First, we analytically show that the essential issue behind the large disparity and non-Lambertian challenges is the aliasing problem. Classic LF rendering approaches typically mitigate the aliasing with a reconstruction filter in the Fourier domain, which is, however, intractable to implement within a deep learning pipeline. Instead, we introduce an alternative framework to…
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