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首页> 外文期刊>IEEE Transactions on Systems, Man, and Cybernetics >A Full Density Stereo Matching System Based on the Combination of CNNs and Slanted-Planes
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A Full Density Stereo Matching System Based on the Combination of CNNs and Slanted-Planes

机译:基于CNN和倾斜平面相结合的全密度立体匹配系统

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Stereo matching methods consist of matching cost computation and several post processing steps. Deep learning methods have greatly raised the accuracy of matching cost and achieved the lowest error rate on several public datasets. However, their generality capabilities are not the best due to potential overfitting, which is the common problem of supervised learning approaches. This paper proposes a convolutional neural network (CNN) based cost estimation method for computing the similarity of image patches. In consideration of accuracy and generalization capability, small size convolution kernels are chosen in the convolution layer and dropout in the decision layer is used for preventing overfitting. After obtaining stereo matching cost from the output of the CNN, several post-processing operations are adopted for disparity optimization, which includes semi-global matching in 1-D from different directions, a left-right consistency check, and the slanted plane smoothing method. The method is evaluated on KITTI 2012, KITTI 2015, and Middlebury stereo datasets and the experimental results on the KITTI benchmark demonstrate the competitive accuracy performance of the approach. Additionally, to test the generalization of the method, a series of extended crossover experiments are conducted in which the training samples and testing samples come from different datasets. The results indicate superior generalization capability of our method than other supervised learning methods.
机译:立体匹配方法包括匹配成本计算和几个后处理步骤。深度学习方法极大地提高了匹配成本的准确性,并在多个公共数据集上实现了最低的错误率。但是,由于潜在的过度拟合,它们的通用性并不是最好的,这是监督学习方法的普遍问题。提出了一种基于卷积神经网络(CNN)的成本估计方法,用于计算图像补丁的相似度。考虑到准确性和泛化能力,在卷积层中选择小尺寸的卷积核,并在决策层中使用辍学来防止过拟合。从CNN的输出中获得立体匹配成本后,采用了几种后处理操作来进行视差优化,包括从不同方向在一维中进行半全局匹配,左右一致性检查以及倾斜平面平滑方法。该方法在KITTI 2012,KITTI 2015和Middlebury立体数据集上进行了评估,在KITTI基准上的实验结果证明了该方法的竞争力。另外,为了测试该方法的通用性,进行了一系列扩展的交叉实验,其中训练样本和测试样本来自不同的数据集。结果表明我们的方法具有比其他监督学习方法更好的泛化能力。

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