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Autores principales: Ichimaru, Kazuto, Thomas, Diego, Iwaguchi, Takafumi, Kawasaki, Hiroshi
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2410.15378
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author Ichimaru, Kazuto
Thomas, Diego
Iwaguchi, Takafumi
Kawasaki, Hiroshi
author_facet Ichimaru, Kazuto
Thomas, Diego
Iwaguchi, Takafumi
Kawasaki, Hiroshi
contents Active 3D measurement, especially structured light (SL) has been widely used in various fields for its robustness against textureless or equivalent surfaces by low light illumination. In addition, reconstruction of large scenes by moving the SL system has become popular, however, there have been few practical techniques to obtain the system's precise pose information only from images, since most conventional techniques are based on image features, which cannot be retrieved under textureless environments. In this paper, we propose a simultaneous shape reconstruction and pose estimation technique for SL systems from an image set where sparsely projected patterns onto the scene are observed (i.e. no scene texture information), which we call Active SfM. To achieve this, we propose a full optimization framework of the volumetric shape that employs neural signed distance fields (Neural-SDF) for SL with the goal of not only reconstructing the scene shape but also estimating the poses for each motion of the system. Experimental results show that the proposed method is able to achieve accurate shape reconstruction as well as pose estimation from images where only projected patterns are observed.
format Preprint
id arxiv_https___arxiv_org_abs_2410_15378
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Neural Active Structure-from-Motion in Dark and Textureless Environment
Ichimaru, Kazuto
Thomas, Diego
Iwaguchi, Takafumi
Kawasaki, Hiroshi
Computer Vision and Pattern Recognition
Active 3D measurement, especially structured light (SL) has been widely used in various fields for its robustness against textureless or equivalent surfaces by low light illumination. In addition, reconstruction of large scenes by moving the SL system has become popular, however, there have been few practical techniques to obtain the system's precise pose information only from images, since most conventional techniques are based on image features, which cannot be retrieved under textureless environments. In this paper, we propose a simultaneous shape reconstruction and pose estimation technique for SL systems from an image set where sparsely projected patterns onto the scene are observed (i.e. no scene texture information), which we call Active SfM. To achieve this, we propose a full optimization framework of the volumetric shape that employs neural signed distance fields (Neural-SDF) for SL with the goal of not only reconstructing the scene shape but also estimating the poses for each motion of the system. Experimental results show that the proposed method is able to achieve accurate shape reconstruction as well as pose estimation from images where only projected patterns are observed.
title Neural Active Structure-from-Motion in Dark and Textureless Environment
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2410.15378