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Gaussian scale-space dense disparity estimation with anisotropic disparity-field diffusion

机译:各向异性视差场扩散的高斯尺度空间稠密视差估计

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We present a new reliable dense disparity estimation algorithm which employs Gaussian scale-space with anisotropic disparity-field diffusion. This algorithm estimates edge-preserving dense disparity vectors using a diffusive method on iteratively Gaussian-filtered images with a scale, i.e. the Gaussian scale-space. While a Gaussian filter kernel generates a coarser resolution from stereo image pairs, only strong and meaningful boundaries are adoptively selected on the resolution of the filtered images. Then, coarse global disparity vectors are initialized using the boundary constraint. The per-pixel disparity vectors are iteratively obtained by the local adjustment of the global disparity vectors using an energy-minimization framework. The proposed algorithm preserves the boundaries while inner regions are smoothed using anisotropic disparity-field diffusion. In this work, the Gaussian scale-space efficiently avoids illegal matching on a large baseline by the restriction of the range. Moreover, it prevents the computation from iterating into local minima of ill-posed diffusion on large gradient areas e.g. shadow and texture region, etc. The experimental results prove the excellent localization performance preserving the disparity discontinuity of each object.
机译:我们提出了一种新的可靠的稠密视差估计算法,该算法采用具有各向异性视差场扩散的高斯尺度空间。该算法使用扩散方法在具有比例即高斯比例空间的迭代高斯滤波图像上估计保留边缘的密集视差矢量。尽管高斯滤波器内核会从立体图像对生成较粗糙的分辨率,但是在滤波后的图像的分辨率上只能选择强而有意义的边界。然后,使用边界约束初始化粗略全局视差矢量。通过使用能量最小化框架对全局视差矢量进行局部调整来迭代获得每个像素的视差矢量。该算法保留了边界,同时使用各向异性视差场扩散对内部区域进行了平滑处理。在这项工作中,高斯比例空间有效地避免了由于范围限制而在较大的基线上进行非法匹配。而且,它防止了计算迭代到大梯度区域(例如,大范围)上的不适定扩散的局部极小值。实验结果证明了优异的定位性能,可以保留每个物体的视差不连续性。

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