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首页> 外文期刊>Pattern Analysis and Machine Intelligence, IEEE Transactions on >Fusion of Range and Stereo Data for High-Resolution Scene-Modeling
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Fusion of Range and Stereo Data for High-Resolution Scene-Modeling

机译:融合距离和立体声数据以实现高分辨率场景建模

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摘要

This paper addresses the problem of range-stereo fusion, for the construction of high-resolution depth maps. In particular, we combine low-resolution depth data with high-resolution stereo data, in a maximum a posteriori (MAP) formulation. Unlike existing schemes that build on MRF optimizers, we infer the disparity map from a series of local energy minimization problems that are solved hierarchically, by growing sparse initial disparities obtained from the depth data. The accuracy of the method is not compromised, owing to three properties of the data-term in the energy function. First, it incorporates a new correlation function that is capable of providing refined correlations and disparities, via subpixel correction. Second, the correlation scores rely on an adaptive cost aggregation step, based on the depth data. Third, the stereo and depth likelihoods are adaptively fused, based on the scene texture and camera geometry. These properties lead to a more selective growing process which, unlike previous seed-growing methods, avoids the tendency to propagate incorrect disparities. The proposed method gives rise to an intrinsically efficient algorithm, which runs at 3FPS on 2.0 MP images on a standard desktop computer. The strong performance of the new method is established both by quantitative comparisons with state-of-the-art methods, and by qualitative comparisons using real depth-stereo data-sets.
机译:本文解决了距离-立体融合的问题,用于构建高分辨率深度图。特别是,我们以最大的后验(MAP)公式结合了低分辨率深度数据和高分辨率立体数据。与基于MRF优化器的现有方案不同,我们通过增加从深度数据获得的稀疏初始视差,从一系列局部解决的局部能量最小化问题推断出视差图。由于能量函数中数据项的三个属性,因此该方法的准确性不会受到影响。首先,它合并了一个新的相关函数,该函数可以通过子像素校正提供精确的相关和视差。第二,相关度得分基于深度数据,依赖于自适应成本汇总步骤。第三,基于场景纹理和相机几何形状,自适应地融合了立体和深度似然。这些特性导致了更具选择性的生长过程,与以前的种子种植方法不同,该过程避免了传播不正确差异的趋势。所提出的方法产生了一种本质上高效的算法,该算法在标准台式计算机上以2.0映像上的3FPS运行。通过与最先进方法的定量比较,以及通过使用真实深度-立体声数据集的定性比较,可以建立新方法的强大性能。

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