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Main Authors: Xu, Tianhan, Ikeda, Takuya, Nishiwaki, Koichi
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.09426
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author Xu, Tianhan
Ikeda, Takuya
Nishiwaki, Koichi
author_facet Xu, Tianhan
Ikeda, Takuya
Nishiwaki, Koichi
contents In this paper, we propose a method to segment and recover a static, clean background and multiple 360$^\circ$ objects from observations of scenes at different timestamps. Recent works have used neural radiance fields to model 3D scenes and improved the quality of novel view synthesis, while few studies have focused on modeling the invisible or occluded parts of the training images. These under-reconstruction parts constrain both scene editing and rendering view selection, thereby limiting their utility for synthetic data generation for downstream tasks. Our basic idea is that, by observing the same set of objects in various arrangement, so that parts that are invisible in one scene may become visible in others. By fusing the visible parts from each scene, occlusion-free rendering of both background and foreground objects can be achieved. We decompose the multi-scene fusion task into two main components: (1) objects/background segmentation and alignment, where we leverage point cloud-based methods tailored to our novel problem formulation; (2) radiance fields fusion, where we introduce visibility field to quantify the visible information of radiance fields, and propose visibility-aware rendering for the fusion of series of scenes, ultimately obtaining clean background and 360$^\circ$ object rendering. Comprehensive experiments were conducted on synthetic and real datasets, and the results demonstrate the effectiveness of our method.
format Preprint
id arxiv_https___arxiv_org_abs_2404_09426
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle ViFu: Multiple 360$^\circ$ Objects Reconstruction with Clean Background via Visible Part Fusion
Xu, Tianhan
Ikeda, Takuya
Nishiwaki, Koichi
Computer Vision and Pattern Recognition
In this paper, we propose a method to segment and recover a static, clean background and multiple 360$^\circ$ objects from observations of scenes at different timestamps. Recent works have used neural radiance fields to model 3D scenes and improved the quality of novel view synthesis, while few studies have focused on modeling the invisible or occluded parts of the training images. These under-reconstruction parts constrain both scene editing and rendering view selection, thereby limiting their utility for synthetic data generation for downstream tasks. Our basic idea is that, by observing the same set of objects in various arrangement, so that parts that are invisible in one scene may become visible in others. By fusing the visible parts from each scene, occlusion-free rendering of both background and foreground objects can be achieved. We decompose the multi-scene fusion task into two main components: (1) objects/background segmentation and alignment, where we leverage point cloud-based methods tailored to our novel problem formulation; (2) radiance fields fusion, where we introduce visibility field to quantify the visible information of radiance fields, and propose visibility-aware rendering for the fusion of series of scenes, ultimately obtaining clean background and 360$^\circ$ object rendering. Comprehensive experiments were conducted on synthetic and real datasets, and the results demonstrate the effectiveness of our method.
title ViFu: Multiple 360$^\circ$ Objects Reconstruction with Clean Background via Visible Part Fusion
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2404.09426