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首页> 外文期刊>Japanese Journal of Applied Physics. Part 1, Regular Papers, Brief Communications & Review Papers >Regularized Stereo Matching Scheme using Adaptive Disparity Estimation
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Regularized Stereo Matching Scheme using Adaptive Disparity Estimation

机译:使用自适应视差估计的正则化立体声匹配方案

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In this paper, a regularized stereo matching scheme using adaptive disparity estimation is proposed. That is, by adaptively predicting the mutual correlation between stereo image pair using the proposed algorithm, the bandwidth of an input stereo image pair can be compressed to the level of a conventional two-dimensional (2D) image and a predicted image can also be effectively reconstructed using a reference image and disparity vectors. In the adaptive disparity estimation method, feature values are extracted from an input stereo image pair and a matching window for stereo matching is adaptively selected depending on the magnitude of the feature values. Accordingly, this adaptive window matching algorithm (AMA) could improve the overall performance of stereo matching by reducing the mismatch of disparity vectors, which occurs in the conventional dense disparity estimation with a small matching window, and also by reducing a blocking effect, which occurs in the coarse disparity estimation with a large matching window. However, it still has problems of overlap and disallocation of matching windows. Therefore, to alleviate those problems, a new regularized adaptive disparity estimation method is proposed in this paper. That is, the estimated disparity vector is regularized with the neighboring disparity vectors; as a result, the predicted stereo image is found to be more effectively reconstructed. Some experiments with stereo sequences of "Man", "Hoon", "Yong", and "Car" reveal that the proposed algorithm improves the peak signal-to-noise ratios (PSNRs) of the reconstructed images by 8.47 and 1.53 dB, on average, compared with those in the cases of feature and pixel-based window matching algorithm (FPMA) and AMA, respectively.
机译:本文提出了一种基于自适应视差估计的正则化立体声匹配方案。也就是说,通过使用所提出的算法自适应地预测立体图像对之间的相互相关性,可以将输入立体图像对的带宽压缩到常规二维(2D)图像的水平,并且也可以有效地预测图像使用参考图像和视差矢量重建。在自适应视差估计方法中,从输入的立体图像对中提取特征值,并根据特征值的大小来自适应地选择用于立体匹配的匹配窗口。因此,此自适应窗口匹配算法(AMA)可以通过减少视差矢量的不匹配(在传统的密集视差估计中以较小的匹配窗口出现)以及通过减少出现的阻塞效应来改善立体声匹配的整体性能。大匹配窗口的粗视差估计中但是,它仍然存在匹配窗口重叠和不匹配的问题。因此,为缓解这些问题,本文提出了一种新的正则化自适应视差估计方法。即,将估计的视差矢量与相邻的视差矢量进行正则化。结果,发现预测的立体图像被更有效地重建。对“ Man”,“ Hoon”,“ Yong”和“ Car”的立体声序列进行的一些实验表明,该算法将重构图像的峰值信噪比(PSNR)提高了8.47和1.53 dB,分别与基于特征和基于像素的窗口匹配算法(FPMA)和AMA相比。

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