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A Memory- and Accuracy-Aware Gaussian Parameter-Based Stereo Matching Using Confidence Measure

机译:使用置信度测量的基于存储器和准确性的高斯参数的立体声匹配

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Accurate stereo matching requires a large amount of memory at a high bandwidth, which restricts its use in resource-limited systems such as mobile devices. This problem is compounded by the recent trend of applications requiring significantly high pixel resolution and disparity levels. To alleviate this, we present a memory-efficient and robust stereo matching algorithm. For cost aggregation, we employ the semiglobal parametric approach, which significantly reduces the memory bandwidth by representing the costs of all disparities as a Gaussian mixture model. All costs on multiple paths in an image are aggregated by updating the Gaussian parameters. The aggregation is performed during the scanning in the forward and backward directions. To reduce the amount of memory for the intermediate results during the forward scan, we suggest to store only the Gaussian parameters which contribute significantly to the final disparity selection. We also propose a method to enhance the overall procedure through a learning-based confidence measure. The random forest framework is used to train various features which are extracted from the cost and intensity profile. The experimental results on KITTI dataset show that the proposed method reduces the memory requirement to less than 3 percent of that of semiglobal matching (SGM) while providing a robust depth map compared to those of state-of-the-art SGM-based algorithms.
机译:准确的立体声匹配需要大量内存在高带宽,这限制了其在诸如移动设备之类的资源限制系统中的使用。通过最近需要显着高的像素分辨率和视差水平的应用趋势,该问题复杂化。为了缓解这一点,我们提出了一种节省了内存高效且坚固的立体声匹配算法。对于成本聚集,我们采用半球形参数方法,通过表示作为高斯混合模型的所有差异的成本,显着降低了内存带宽。通过更新高斯参数来聚合图像中多个路径上的所有成本。在扫描前向和向后方向期间执行聚合。为了减少前进扫描期间中间结果的内存量,我们建议仅存储对最终视差选择的高斯参数。我们还提出了一种通过基于学习的置信度量来提升整体过程的方法。随机森林框架用于培训从成本和强度分布中提取的各种特征。基提数据集的实验结果表明,该方法将内存要求降低到半球匹配匹配(SGM)的内存要求,同时提供了与最先进的基于SGM的算法相比提供了坚固的深度图。

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