Multi-view Stereo Reconstruction for Internet Photos

Sijiao Yu, Yue Qi, Xukun Shen
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Abstract

This paper develops a multi-view stereo approach to reconstruct the shape of a 3D object from a set of Internet photos. The stereo matching technique adopts region growing approach, starting from a set of sparse 3D points reconstructed from structure-from-motion (Sfm), then propagates to the neighbouring areas by the best-first strategy, and produces dense 3D points. View selection and filter algorithms are proposed considering the characteristics of Internet images. Specifically, for each 3D point, we choose a reference image at first which determines the right subset images from unordered sets for optimization. Two filter algorithms, namely Sfm points filter and quality filter which is based on the assumption that depth changes smoothly, are designed to eliminate low-quality reconstructions. We demonstrate our algorithms with several datasets which show that they perform robustly.
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互联网照片的多视角立体重建
本文提出了一种多视点立体方法,用于从一组网络照片中重建三维物体的形状。立体匹配技术采用区域生长的方法,从一组由结构-运动(Sfm)重建的稀疏三维点开始,通过最优优先策略向邻近区域传播,生成密集的三维点。针对网络图像的特点,提出了视图选择和滤波算法。具体来说,对于每个三维点,我们首先选择一个参考图像,从无序集中确定正确的子集图像进行优化。为了消除低质量重构,设计了两种滤波算法,即Sfm点滤波和基于深度平滑变化假设的质量滤波。我们用几个数据集证明了算法的鲁棒性。
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