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DeepMatching: Hierarchical Deformable Dense Matching

机译:深度匹配:分层可变形密集匹配

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摘要

We introduce a novel matching algorithm, called DeepMatching, to compute dense correspondences between images. DeepMatching relies on a hierarchical, multi-layer, correlational architecture designed for matching images and was inspired by deep convolutional approaches. The proposed matching algorithm can handle non-rigid deformations and repetitive textures and efficiently determines dense correspondences in the presence of significant changes between images. We evaluate the performance of DeepMatching, in comparison with state-of-the-art matching algorithms, on the Mikolajczyk (Mikolajczyk et al. A comparison of affine region detectors, 2005), the MPI-Sintel (Butler et al. A naturalistic open source movie for optical flow evaluation, 2012) and the Kitti (Geiger et al. Vision meets robotics: The KITTI dataset, 2013) datasets. DeepMatching outperforms the state-of-the-art algorithms and shows excellent results in particular for repetitive textures. We also apply DeepMatching to the computation of optical flow, called DeepFlow, by integrating it in the large displacement optical flow (LDOF) approach of Brox and Malik (Large displacement optical flow: descriptor matching in variational motion estimation, 2011). Additional robustness to large displacements and complex motion is obtained thanks to our matching approach. DeepFlow obtains competitive performance on public benchmarks for optical flow estimation.
机译:我们引入了一种称为DeepMatching的新颖匹配算法,以计算图像之间的密集对应关系。 DeepMatching依赖于为匹配图像而设计的分层,多层,相关架构,并受到深度卷积方法的启发。所提出的匹配算法可以处理非刚性变形和重复纹理,并在图像之间存在显着变化的情况下有效地确定密集的对应关系。与最新的匹配算法相比,我们在Mikolajczyk(Mikolajczyk等人,仿射区域检测器的比较,2005),MPI-Sintel(Butler等人,自然开放)上评估了DeepMatching的性能。影片用于光流评估,2012年)和Kitti(Geiger等人的《 Vision见机器人》:KITTI数据集,2013年)数据集。 DeepMatching优于最新的算法,并显示出优异的效果,尤其是对于重复纹理。我们还通过将DeepMatching集成到Brox和Malik的大位移光流(LDOF)方法中(大位移光流:变分运动估计中的描述符匹配,2011年),将DeepMatching应用到称为DeepFlow的光流计算中。得益于我们的匹配方法,它对于大位移和复杂运动具有更高的鲁棒性。 DeepFlow在光流量估算的公共基准上获得了竞争性性能。

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