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Dense Scene Flow Based on Depth and Multi-channel Bilateral Filter

机译:基于深度和多通道双边滤波器的密集场景流

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There is close relationship between depth information and scene flow. However, it's not fully utilized in most of scene flow estimators. In this paper, we propose a method to estimate scene flow with monocular appearance images and corresponding depth images. We combine a global energy optimization and a bilateral filter into a two-step framework. Occluded pixels are detected by the consistency of appearance and depth, and the corresponding data errors are excluded from the energy function. The appearance and depth information are also utilized in anisotropic regularization to suppress over-smoothing. The multi-channel bilateral filter is introduced to correct scene flow with various information in non-local areas. The proposed approach is tested on Middlebury dataset and the sequences captured by KINECT. Experiment results show that it can estimate dense and accurate scene flow in challenging environments and keep the discontinuity around motion boundaries.
机译:深度信息和场景流之间有着密切的关系。但是,大多数场景流估计器中并未充分利用它。在本文中,我们提出了一种用单眼外观图像和相应深度图像估计场景流的方法。我们将全球能源优化和双边过滤器组合为两步框架。通过外观和深度的一致性来检测被遮挡的像素,并从能量函数中排除相应的数据错误。外观和深度信息还用于各向异性正则化中,以抑制过度平滑。引入了多通道双边滤波器,以利用非局部区域中的各种信息来校正场景流。该方法在Middlebury数据集和KINECT捕获的序列上进行了测试。实验结果表明,该算法可以估算出挑战性环境中密集而准确的场景流,并保持运动边界附近的不连续性。

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