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Learning to remove multipath distortions in Time-of-Flight range images for a robotic arm setup

机译:学习如何消除飞行时间范围图像中的多路径畸变,从而实现机械臂设置

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Range images captured by Time-of-Flight (ToF) cameras are corrupted with multipath distortions due to interaction between modulated light signals and scenes. The interaction is often complicated, which makes a model-based solution elusive. We propose a learning-based approach for removing the multipath distortions for a ToF camera in a robotic arm setup. Our approach is based on deep learning. We use the robotic arm to automatically collect a large amount of ToF range images containing various multipath distortions. The training images are automatically labeled by leveraging a high precision structured light sensor available only in the training time. In the test time, we apply the learned model to remove the multipath distortions. This allows our robotic arm setup to enjoy the speed and compact form of the ToF camera without compromising with its range measurement errors. We conduct extensive experimental validations and compare the proposed method to several baseline algorithms. The experiment results show that our method achieves 55% error reduction in range estimation and largely outperforms the baseline algorithms.
机译:飞行时间(ToF)相机捕获的距离图像由于调制的光信号和场景之间的相互作用而受到多路径失真的破坏。交互通常很复杂,这使得基于模型的解决方案变得难以捉摸。我们提出了一种基于学习的方法,可以消除机械臂设置中ToF相机的多路径失真。我们的方法基于深度学习。我们使用机械臂自动收集大量包含各种多径失真的ToF范围图像。利用仅在训练时间内可用的高精度结构化光传感器自动标记训练图像。在测试期间,我们应用学习的模型来消除多径失真。这使我们的机械臂设置可以享受ToF相机的速度和紧凑型外观,而不会影响其范围测量误差。我们进行了广泛的实验验证,并将所提出的方法与几种基准算法进行了比较。实验结果表明,我们的方法在距离估计中减少了55%的误差,并且大大优于基线算法。

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