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Learning a Confidence Measure for Optical Flow

机译:学习光流的置信度

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摘要

We present a supervised learning-based method to estimate a per-pixel confidence for optical flow vectors. Regions of low texture and pixels close to occlusion boundaries are known to be difficult for optical flow algorithms. Using a spatiotemporal feature vector, we estimate if a flow algorithm is likely to fail in a given region. Our method is not restricted to any specific class of flow algorithm and does not make any scene specific assumptions. By automatically learning this confidence, we can combine the output of several computed flow fields from different algorithms to select the best performing algorithm per pixel. Our optical flow confidence measure allows one to achieve better overall results by discarding the most troublesome pixels. We illustrate the effectiveness of our method on four different optical flow algorithms over a variety of real and synthetic sequences. For algorithm selection, we achieve the top overall results on a large test set, and at times even surpass the results of the best algorithm among the candidates.
机译:我们提出了一种基于监督学习的方法来估计光流向量的每像素置信度。众所周知,对于光流算法而言,低纹理区域和接近遮挡边界的像素很困难。使用时空特征向量,我们估计流量算法是否可能在给定区域内失败。我们的方法不限于任何特定的流算法类,也没有进行任何场景特定的假设。通过自动学习此置信度,我们可以组合来自不同算法的多个计算流场的输出,以选择每个像素性能最佳的算法。我们的光流置信度测量可以通过丢弃最麻烦的像素来获得更好的总体效果。我们说明了我们的方法在各种实际和合成序列上对四种不同的光流算法的有效性。对于算法选择,我们在大型测试集上获得了最高的总体结果,有时甚至超过了候选算法中最佳算法的结果。

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