View Synthesis from multi-view RGB data using multilayered representation and volumetric estimation

Background: Aiming at free-view exploration of complicated scenes, this paper presents a method for interpolating views among multi RGB cameras. Methods: In this study, we combine the idea of cost volume, which represent 3D information, and 2D semantic segmentation of the scene, to accomplish view s...

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Bibliographic Details
Main Authors: Zhaoqi Su, Tiansong Zhou, Kun Li, David Brady, Yebin Liu
Format: Article
Language:English
Published: KeAi Communications Co., Ltd. 2020-02-01
Series:Virtual Reality & Intelligent Hardware
Online Access:http://www.sciencedirect.com/science/article/pii/S2096579620300024
Description
Summary:Background: Aiming at free-view exploration of complicated scenes, this paper presents a method for interpolating views among multi RGB cameras. Methods: In this study, we combine the idea of cost volume, which represent 3D information, and 2D semantic segmentation of the scene, to accomplish view synthesis of complicated scenes. We use the idea of cost volume to estimate the depth and confidence map of the scene, and use a multi-layer representation and resolution of the data to optimize the view synthesis of the main object. Results: /Conclusions By applying different treatment methods on different layers of the volume, we can handle complicated scenes containing multiple persons and plentiful occlusions. We also propose the view-interpolation→multi-view reconstruction→view interpolation pipeline to iteratively optimize the result. We test our method on varying data of multi-view scenes and generate decent results. Keywords: View interpolation, Cost volume, Multi-layer processing, Multi-view reconstruction, Iterative optimization
ISSN:2096-5796