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Block-Wise MAP Disparity Estimation for Intermediate View Reconstruction

机译:中间视图重构的逐块MAP视差估计

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A dense disparity map is required in the application of intermediate view reconstruction from stereoscopic images. A popular approach to obtaining a dense disparity map is maximum a-posteriori (MAP) disparity estimation. The MAP approach requires statistical models for modeling both a likelihood term and an a-priori term. Normally, a Gaussian model is used. In this contribution, block-wise MAP disparity estimation using different statistical models are compared in terms of Peak Signal-to-Noise Ratio (PSNR) of disparity-compensation errors and number of corresponding matches. It was found that, among the Cauchy, Laplacian, and Gaussian models, the Laplacian model is the best for the likelihood term while the Cauchy model is the best for the a-priori term. Experimental results show that reconstruction algorithm with the MAP disparity estimation using the determined models can improve image quality of the intermediate views reconstructed from stereoscopic image pairs.
机译:从立体图像重构中间视图时,需要密集的视差图。获得密集视差图的一种流行方法是最大后验(MAP)视差估计。 MAP方法需要用于对似然项和先验项进行建模的统计模型。通常,使用高斯模型。在此贡献中,根据视差补偿误差的峰值信噪比(PSNR)和相应匹配项的数量,比较了使用不同统计模型的逐块MAP视差估计。发现在柯西模型,拉普拉斯算子和高斯模型中,拉普拉斯模型最适合似然项,而柯西模型最适合先验项。实验结果表明,使用确定的模型进行MAP视差估计的重建算法可以提高从立体图像对重建的中间视图的图像质量。

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