Efficient large-scale multi-view stereo for ultra high-resolution image sets

被引:2
|
作者
Engin Tola
Christoph Strecha
Pascal Fua
机构
[1] Aurvis Ltd,
[2] Computer Vision Laboratory,undefined
[3] EPFL,undefined
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关键词
Multi-view stereo; 3D reconstruction; DAISY; High-resolution images;
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学科分类号
摘要
We present a new approach for large-scale multi-view stereo matching, which is designed to operate on ultra high-resolution image sets and efficiently compute dense 3D point clouds. We show that, using a robust descriptor for matching purposes and high-resolution images, we can skip the computationally expensive steps that other algorithms require. As a result, our method has low memory requirements and low computational complexity while producing 3D point clouds containing virtually no outliers. This makes it exceedingly suitable for large-scale reconstruction. The core of our algorithm is the dense matching of image pairs using DAISY descriptors, implemented so as to eliminate redundancies and optimize memory access. We use a variety of challenging data sets to validate and compare our results against other algorithms.
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页码:903 / 920
页数:17
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