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Joint Image Denoising and Disparity Estimation via Stereo Structure PCA and Noise-Tolerant Cost

机译:通过立体结构PCA和抗噪声成本的联合图像去噪和视差估计

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摘要

Stereo cameras are now commonly available on cars and mobile phones. However, the captured images may suffer from low image quality under noisy conditions, producing inaccurate disparity. In this paper, we aim at jointly restoring a clean image pair and estimating the corresponding disparity. To this end, we propose a new joint framework that iteratively optimizes these two different tasks in a multi-scale fashion. First, structure information between the stereo pair is utilized to denoise the images using a non-local means strategy. Second, a new noise-tolerant cost function is proposed for noisy stereo matching. These two terms are integrated into a multi-scale framework in which cross-scale information is leveraged to further improve both denoising and stereo matching. Extensive experiments on datasets captured from indoor, outdoor, and low-light conditions show that the proposed method achieves superior performance than the state-of-the-art image denoising and disparity estimation methods. While it outperforms multi-image denoising methods by about 2 dB on average, it achieves a 50% error reduction over radiometric-change-robust stereo matching on the challenging KITTI dataset.
机译:立体声相机现在常用于汽车和手机上。然而,捕获的图像可能在噪声条件下遭受低图像质量,产生不准确的视差。在本文中,我们的目的旨在共同恢复清洁图像对并估计相应的差异。为此,我们提出了一种新的联合框架,以便以多尺寸方式迭代地优化这两个不同的任务。首先,使用立体对之间的结构信息用于使用非局部装置策略来表示图像。其次,提出了一种新的耐受性成本函数,用于嘈杂的立体声匹配。这两个术语集成到多尺度框架中,其中利用交叉量程信息进一步改善去噪和立体匹配。在室内,室外和低光条件捕获的数据集上的广泛实验表明,该方法的性能优于最先进的图像去噪和差距估计方法。虽然它平均优于多图像去噪方法,但它平均达到大约2 dB,而在挑战基蒂数据集上的辐射变化 - 强大的立体声匹配达到50%的误差减少。

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