CVMar 29, 2019

Synthesizing a 4D Spatio-Angular Consistent Light Field from a Single Image

arXiv:1903.12364v110 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of light field synthesis for applications like depth estimation and refocusing, offering a more robust and generalizable approach compared to conventional methods.

The paper tackles the problem of synthesizing a densely sampled light field from a single image by introducing a method based on appearance flow and novel loss functions, achieving qualitative and quantitative improvements over previous models.

Synthesizing a densely sampled light field from a single image is highly beneficial for many applications. The conventional method reconstructs a depth map and relies on physical-based rendering and a secondary network to improve the synthesized novel views. Simple pixel-based loss also limits the network by making it rely on pixel intensity cue rather than geometric reasoning. In this study, we show that a different geometric representation, namely, appearance flow, can be used to synthesize a light field from a single image robustly and directly. A single end-to-end deep neural network that does not require a physical-based approach nor a post-processing subnetwork is proposed. Two novel loss functions based on known light field domain knowledge are presented to enable the network to preserve the spatio-angular consistency between sub-aperture images effectively. Experimental results show that the proposed model successfully synthesizes dense light fields and qualitatively and quantitatively outperforms the previous model . The method can be generalized to arbitrary scenes, rather than focusing on a particular class of object. The synthesized light field can be used for various applications, such as depth estimation and refocusing.

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