CVFeb 1, 2024

Diffusion-based Light Field Synthesis

arXiv:2402.00575v16 citationsh-index: 17ECCV Workshops
AI Analysis

This work addresses the problem of efficient light field synthesis for applications in 3D reconstruction, virtual reality, and computational photography, representing an incremental improvement with novel components tailored for this domain.

The paper tackles the challenge of time-consuming and resource-intensive light field acquisition by introducing LFdiff, a diffusion-based generative framework that synthesizes light fields from a single RGB image, achieving visually pleasing and disparity-controllable results with enhanced generalization capability.

Light fields (LFs), conducive to comprehensive scene radiance recorded across angular dimensions, find wide applications in 3D reconstruction, virtual reality, and computational photography.However, the LF acquisition is inevitably time-consuming and resource-intensive due to the mainstream acquisition strategy involving manual capture or laborious software synthesis.Given such a challenge, we introduce LFdiff, a straightforward yet effective diffusion-based generative framework tailored for LF synthesis, which adopts only a single RGB image as input.LFdiff leverages disparity estimated by a monocular depth estimation network and incorporates two distinctive components: a novel condition scheme and a noise estimation network tailored for LF data.Specifically, we design a position-aware warping condition scheme, enhancing inter-view geometry learning via a robust conditional signal.We then propose DistgUnet, a disentanglement-based noise estimation network, to harness comprehensive LF representations.Extensive experiments demonstrate that LFdiff excels in synthesizing visually pleasing and disparity-controllable light fields with enhanced generalization capability.Additionally, comprehensive results affirm the broad applicability of the generated LF data, spanning applications like LF super-resolution and refocusing.

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