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PWC-Net: CNNs for Optical Flow Using Pyramid, Warping, and Cost Volume

机译:PWC-Net:使用金字塔,翘曲和成本量的光流CNN

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We present a compact but effective CNN model for optical flow, called PWC-Net. PWC-Net has been designed according to simple and well-established principles: pyramidal processing, warping, and the use of a cost volume. Cast in a learnable feature pyramid, PWC-Net uses the current optical flow estimate to warp the CNN features of the second image. It then uses the warped features and features of the first image to construct a cost volume, which is processed by a CNN to estimate the optical flow. PWC-Net is 17 times smaller in size and easier to train than the recent FlowNet2 model. Moreover, it outperforms all published optical flow methods on the MPI Sintel final pass and KITTI 2015 benchmarks, running at about 35 fps on Sintel resolution (1024 Ã × 436) images. Our models are available on our project website.
机译:我们提出了一种紧凑而有效的用于光流的CNN模型,称为PWC-Net。 PWC-Net是根据简单且公认的原则进行设计的:金字塔处理,翘曲和使用成本量。 PWC-Net投射在一个可学习的特征金字塔中,使用当前的光流估计值来扭曲第二幅图像的CNN特征。然后,它使用扭曲的特征和第一张图像的特征来构建成本量,然后由CNN处理该成本量以估算光流。与最新的FlowNet2模型相比,PWC-Net的尺寸小17倍,并且易于训练。此外,它的性能优于MPI Sintel最终通过和KITTI 2015基准上所有已发布的光流方法,在Sintel分辨率(1024×436)图像上,其运行速度约为35 fps。我们的模型可以在我们的项目网站上找到。

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