Khan Asim, Khan Muhammad Umar Karim, Kyung Chong-Min
Opt Express. 2018 Feb 19;26(4):4096-4111. doi: 10.1364/OE.26.004096.
Reliable and efficient stereo matching is a challenging task due to the presence of multiple radiometric variations. In stereo matching, correspondence between left and right images can become hard owing to low correlation between radiometric changes in left and right images. Previously presented cost metrics are not robust enough against intensive radiometric variations and/or are computationally expensive. In this work, we propose a new similarity metric coined as Intensity Guided Cost Metric (IGCM). IGCM turns out to significantly contribute to the depth accuracy by rejecting outliers and reducing the edge-fattening effect in object boundaries. IGCM is further combined explicitly with a color formation model to handle various radiometric changes that occur between stereo images. Experimental results on Middlebury dataset show 13.8%, 22.8%, 20.9%, 19.5 % and 9.1% decrease in average error rate compared to Adaptive Normalized Cross-Correlation (ANCC), Dense Adaptive Self-Correlation (DASC), Adaptive Descriptor(AD), Fast Cost Volume Filtering (FCVF) and Iterative Guided Filter (IGF)-based methods, respectively. Moreover, using integral images IGCM can achieve a speedup of 20x, 6x, 41x, 25x and 45x compared to the aforementioned methods.
由于存在多种辐射度变化,可靠且高效的立体匹配是一项具有挑战性的任务。在立体匹配中,由于左右图像辐射度变化之间的低相关性,左右图像之间的对应关系可能会变得困难。先前提出的代价度量对强烈的辐射度变化不够鲁棒,和/或计算成本高昂。在这项工作中,我们提出了一种新的相似性度量,称为强度引导代价度量(IGCM)。IGCM通过剔除异常值并减少物体边界处的边缘加粗效应,对深度精度有显著贡献。IGCM进一步与颜色形成模型明确结合,以处理立体图像之间发生的各种辐射度变化。在Middlebury数据集上的实验结果表明,与自适应归一化互相关(ANCC)、密集自适应自相关(DASC)、自适应描述符(AD)、快速代价体滤波(FCVF)和基于迭代引导滤波器(IGF)的方法相比,平均错误率分别降低了13.8%、22.8%、20.9%、19.5%和9.1%。此外,与上述方法相比,使用积分图像IGCM可以实现20倍、6倍、41倍、25倍和45倍的加速。