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Devon: Deformable Volume Network for Learning Optical Flow

机译:Devon:用于学习光流的可变形体网络

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State-of-the-art neural network models estimate large displacement optical flow in multi-resolution and use warping to propagate the estimation between two resolutions. Despite their impressive results, it is known that there are two problems with the approach. First, the multi-resolution estimation of optical flow fails in situations where small objects move fast. Second, warping creates artifacts when occlusion or dis-occlusion happens. In this paper, we propose a new neural network module, Deformable Cost Volume, which alleviates the two problems. Based on this module, we designed the Deformable Volume Network (Devon) which can estimate multi-scale optical flow in a single high resolution. Experiments show Devon is more suitable in handling small objects moving fast and achieves comparable results to the state-of-the-art methods in public benchmarks.
机译:最新的神经网络模型以多分辨率估算大位移光流,并使用翘曲在两个分辨率之间传播估算结果。尽管取得了令人印象深刻的结果,但是已知该方法存在两个问题。首先,在小物体快速移动的情况下,光流的多分辨率估计失败。其次,当发生遮挡或解除遮挡时,翘曲会产生伪影。在本文中,我们提出了一个新的神经网络模块,可变形成本量,可以缓解这两个问题。基于此模块,我们设计了可变形体网络(Devon),该网络可在单个高分辨率下估计多尺度光流。实验表明,德文郡更适合处理快速移动的小物体,并且可以获得与公共基准测试中的最新方法相当的结果。

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