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Multi-Images Restoration Method with a Mixed-Regularization Approach for Cognitive Informatics

机译:混合正则化的认知信息学多图像恢复方法

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Cognitive image processing is an important part of cognitive informatics. High quality images are crucial for cognitive image processing, especially in small object recognition and image segmentation. Multi-images restoration provides an alternative approach for these problems. For example, with image denoising and image deblurring, the raw images can be better provided to improve the result of cognitive image processing. The improvement of imaging device's sampling rate provides a clue to design a common approach for multi-images restoration. This paper concerns with a mixed-regularization approach for solving multi-images (MRMI) restoration problems. The MRMI algorithm generalizes the original total variation (TV) based algorithm by fusing multiple noisy images to maximize the useful information restored from the degraded images. The proposed approach combines$ell_{1}$regularizer and$mathbf{TV}_{p}$regularizer to restore a latent image, which operates on two different domains, i.e., pixel and gradient. This mixed-regularization method can simultaneously exploit the sparsity of natural signal. The resulting problem is solved by the adaptation of generalized accelerated proximal gradient (GAPG) method. The effectiveness of our approach is validated in the context of multi-images denoising, deblurring and inpainting. Compared with some iterative shrinkage-thresholding algorithms, the experimental results indicates that our approach can restore a better image.
机译:认知图像处理是认知信息学的重要组成部分。高质量图像对于认知图像处理至关重要,特别是在小物体识别和图像分割中。多图像恢复为这些问题提供了另一种方法。例如,通过图像去噪和图像去模糊,可以更好地提供原始图像以改善认知图像处理的结果。成像设备采样率的提高为设计一种通用的多图像恢复方法提供了线索。本文涉及一种用于解决多图像(MRMI)还原问题的混合正则化方法。 MRMI算法通过融合多个噪点图像以最大化从降级图像恢复的有用信息,从而概括了基于原始总变异(TV)的算法。提议的方法结合了 $ \ ell_ {1} $ 正则化器和 $ \ mathbf {TV} _ {p} $ 归一化器以还原潜像,该潜像在两个不同的域(即像素和渐变)上运行。这种混合正则化方法可以同时利用自然信号的稀疏性。通过采用广义加速近端梯度(GAPG)方法解决了由此产生的问题。我们的方法的有效性在多图像降噪,去模糊和修复的背景下得到了验证。与一些迭代收缩阈值算法相比,实验结果表明我们的方法可以恢复更好的图像。

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