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Estimation of disparity maps by compressive sensing

机译:通过压缩感测估计视差图

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Compressive sensing enables the reconstruction of a signal from its small number of samples in a sparse domain. It is advantageous to use compressive sensing to achieve dense signals in situations where measurements are costly, as in the case of disparity maps. In this study, disparity values are reconstructed from samples taken of the ground truth values in frequency domain via Gaussian, Uniform distributions and along star-shaped 22 radial lines using total variation minimization. The results are compared in terms of accuracy and speed. The results of each method are shown with four commonly used images in the Middlebury dataset. The accuracies for the methods are changing according to the frequency content of the image used. The sampling matrix of 22 radial lines is the most successful among the methods proposed in this study in terms of speed and accuracy.
机译:通过压缩感测,可以从稀疏域中的少量样本中重建信号。在视差图的情况下,在测量成本很高的情况下,使用压缩感测来获得密集信号是有利的。在这项研究中,使用总变化最小化,通过高斯,均匀分布并沿着星形22条径向线从频域的地面真实值样本中重构视差值。比较结果的准确性和速度。每种方法的结果均以Middlebury数据集中的四个常用图像显示。这些方法的准确性根据所使用图像的频率内容而变化。就速度和准确性而言,在本研究提出的方法中,22条径向线的采样矩阵是最成功的。

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