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Back to Basics: Unsupervised Learning of Optical Flow via Brightness Constancy and Motion Smoothness

机译:返回基础:通过亮度恒定和运动平滑度无监督的光学流动学习

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Recently, convolutional networks (convnets) have proven useful for predicting optical flow. Much of this success is predicated on the availability of large datasets that require expensive and involved data acquisition and laborious labeling. To bypass these challenges, we propose an unsupervised approach (i.e., without leveraging groundtruth flow) to train a convnet end-to-end for predicting optical flow between two images. We use a loss function that combines a data term that measures photometric constancy over time with a spatial term that models the expected variation of flow across the image. Together these losses form a proxy measure for losses based on the groundtruth flow. Empirically, we show that a strong convnet baseline trained with the proposed unsupervised approach outperforms the same network trained with supervision on the KITTI dataset.
机译:最近,卷积网络(Courmnets)已被证明可用于预测光学流量。这一成功的大部分是关于需要昂贵和涉及数据采集和费力标记的大型数据集的可用性。为了绕过这些挑战,我们提出了一种无监督的方法(即,在不利用TountTruth流程的情况下)来训练ConvNet端到端以预测两个图像之间的光流。我们使用一个损失函数,该损失函数将测量光度恒定的数据项随时间的空间术语模拟图像跨越图像的预期变化。这些损失在一起形成基于地面流量的损失的代理度量。凭经验,我们表明,随着拟议的无监督方法培训的强大的Convnet基线优于与Kitti DataSet的监督接受过的同一网络。

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