3D Reconstruction through Measure Based Image Selection

Chao Yang, F. Zhou, X. Bai
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引用次数: 8

Abstract

3D reconstruction is one of the research focus of computer vision and widely applied in various fields. The main steps of 3D reconstruction include image acquisition, image selection, feature point extraction and matching, calculation of camera parameters and 3D coordinates of the scene, and production of dense 3D scene models. Of all the steps, the image selection step is necessary and important. In this paper, a new 3D reconstruction algorithm consisting of four main steps is proposed and its main contribution is that the image selection step uses a new effective method. The new image selection method first uses structure-from-motion (SFM) algorithms to calculate the position and attitude of each camera, and then calculates the contributed value to 3D reconstruction of each image, finally selects images according to the contributed value of each image and their effects on contributed values of other images. Experimental results show that the 3D reconstruction algorithm proposed in this paper can reconstruct target scenes very well.
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基于度量的图像选择三维重建
三维重建是计算机视觉的研究热点之一,广泛应用于各个领域。三维重建的主要步骤包括图像采集、图像选择、特征点提取与匹配、摄像机参数和场景三维坐标计算、生成密集的三维场景模型。在所有步骤中,图像选择步骤是必要和重要的。本文提出了一种由四个主要步骤组成的三维重建算法,其主要贡献在于图像选择步骤采用了一种新的有效方法。新的图像选择方法首先利用运动结构(SFM)算法计算每个摄像机的位置和姿态,然后计算每个图像对三维重建的贡献值,最后根据每个图像的贡献值及其对其他图像贡献值的影响选择图像。实验结果表明,本文提出的三维重建算法可以很好地重建目标场景。
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