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Learning Patch Reconstructability for Accelerating Multi-view Stereo

机译:学习补丁可重构性,以加速多视图立体声

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We present an approach to accelerate multi-view stereo (MVS) by prioritizing computation on image patches that are likely to produce accurate 3D surface reconstructions. Our key insight is that the accuracy of the surface reconstruction from a given image patch can be predicted significantly faster than performing the actual stereo matching. The intuition is that non-specular, fronto-parallel, in-focus patches are more likely to produce accurate surface reconstructions than highly specular, slanted, blurry patches - and that these properties can be reliably predicted from the image itself. By prioritizing stereo matching on a subset of patches that are highly reconstructable and also cover the 3D surface, we are able to accelerate MVS with minimal reduction in accuracy and completeness. To predict the reconstructability score of an image patch from a single view, we train an image-to-reconstructability neural network: the I2RNet. This reconstructability score enables us to efficiently identify image patches that are likely to provide the most accurate surface estimates before performing stereo matching. We demonstrate that the I2RNet, when trained on the ScanNet dataset, generalizes to the DTU and Tanks & Temples MVS datasets. By using our I2RNet with an existing MVS implementation, we show that our method can achieve more than a 30× speed-up over the baseline with only an minimal loss in completeness.
机译:我们提出了一种通过优先考虑可能会产生准确的3D表面重建的图像斑块上的计算来加速多视图立体声(MVS)的方法。我们的主要见识在于,与执行实际的立体匹配相比,可以明显更快地预测从给定图像斑块重建表面的准确性。直觉是,与高镜面,倾斜,模糊的色块相比,非镜面,与正面平行,对焦的色块更可能产生准确的表面重建,并且可以从图像本身可靠地预测这些属性。通过在高度可重构并覆盖3D表面的子集上优先考虑立体声匹配,我们能够以最小的准确性和完整性降低来加速MVS。为了从单个视图预测图像补丁的可重构性得分,我们训练了图像到可重构性神经网络:I2RNet。这个可重构性分数使我们能够在执行立体匹配之前有效地识别出可能提供最准确的表面估计的图像块。我们证明,当在ScanNet数据集上进行训练时,I2RNet可以推广到DTU和Tanks&Temples MVS数据集。通过将我们的I2RNet与现有的MVS实现一起使用,我们证明了我们的方法可以比基线提高30倍以上的速度,而完整性的损失却很小。

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