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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Sparse representation over discriminative dictionary for stereo matching
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Sparse representation over discriminative dictionary for stereo matching

机译:对立体声匹配的歧视性词典的稀疏表示

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摘要

We propose a novel data-driven matching cost for dense correspondence based on sparse theory. The ability of sparse coding to selectively express the sources of influence on stereo images allows us to learn a discriminative dictionary. The dictionary learning process is incorporated with discriminative learning and weighted sparse coding to enhance the discrimination of sparse coefficients and weaken the influence of radiometric changes. Then, the sparse representations over the learned discriminative dictionary are utilized to measure the dissimilarity between image patches. Semi-global cost aggregation and postprocessings are finally enforced to further improve the matching accuracy. Extensive experimental comparisons demonstrate that: the proposed matching cost outperforms traditional matching costs, the discriminative dictionary learning model is more suitable than previous dictionary learning models for stereo matching, and the proposed stereo method ranks the third place on the Middlebury benchmark v3 in quarter resolution up to the submitting, and achieves the best accuracy on 30 classic stereo images. (C) 2017 Elsevier Ltd. All rights reserved.
机译:我们提出了一种基于稀疏理论的密集对应的新型数据驱动匹配成本。稀疏编码选择性地表达对立体图像的影响源的能力允许我们学习判别词典。字典学习过程与鉴别的学习和加权稀疏编码结合在一起,以增强稀疏系数的辨别,并削弱辐射变化的影响。然后,利用来自学习鉴别性词典的稀疏表示来测量图像斑块之间的不相似性。最终强制执行半全局成本聚集和后处理,以进一步提高匹配的准确性。广泛的实验比较表明:提出的匹配成本优于传统的匹配成本,鉴别性词典学习模型比先前的立体声匹配更适合于先前的字典学习模型,并且所提出的立体声方法在四分之一分辨率中排名第三位。四分之一分辨率提交,并在30个经典立体图像上实现最佳准确性。 (c)2017 Elsevier Ltd.保留所有权利。

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