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Stereo matching with VG-RAM Weightless Neural Networks

机译:借助VG-RAM失重神经网络进行立体匹配

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摘要

Virtual Generalizing Random Access Memory Weightless Neural Networks (VG-RAM WNN) is an effective machine learning technique that offers simple implementation and fast training and test. We examined the performance of VG-RAM WNN on binocular dense stereo matching using the Middlebury Stereo Datasets. Our experimental results showed that, even without tackling occlusions and discontinuities in the stereo image pairs examined, our VG-RAM WNN architecture for stereo matching was able to rank at 114th position in the Middlebury Stereo Evaluation system. This result is promising, because the difference in performance among approaches ranked in distinct positions is very small.
机译:虚拟通用随机存取存储器失重神经网络(VG-RAM WNN)是一种有效的机器学习技术,可提供简单的实现以及快速的培训和测试。我们使用Middlebury Stereo数据集检查了VG-RAM WNN在双目密集立体声匹配上的性能。我们的实验结果表明,即使在所检查的立体图像对中没有解决遮挡和不连续性,我们用于立体匹配的VG-RAM WNN架构也能够在Middlebury立体声评估系统中排名第114位。该结果很有希望,因为排名在不同位置的方法之间的性能差异非常小。

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