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Image Reconstruction via Manifold Constrained Convolutional Sparse Coding for Image Sets

机译:通过流形约束卷积稀疏编码对图像集进行图像重建

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摘要

Convolution sparse coding (CSC) has attracted much attention recently due to its advantages in image reconstruction and enhancement. However, the coding process suffers from perturbations caused by variations of input samples, as the consistence of features from similar input samples are not well addressed in the existing literature. In this paper, we will tackle this feature consistence problem from a set of samples via a proposed manifold constrained convolutional sparse coding (MCSC) method. The core idea of MCSC is to use the intrinsic manifold (Laplacian) structure of the input data to regularize the traditional CSC such that the consistence between features extracted from input samples can be well preserved. To implement the proposed MCSC method efficiently, the alternating direction method of multipliers (ADMM) approach is employed, which can consistently integrate the underlying Laplacian constraints during the optimization process. With this regularized data structure constraint, the MCSC can achieve a much better solution which is robust to the variance of the input samples against over-complete filters. We demonstrate the capacity of MCSC by providing the state-of-the-art results when applied it to the task of reconstructing light fields. Finally, we show that the proposed MCSC is a generic approach as it also achieves better results than the state-of-the-art approaches based on convolutional sparse coding in other image reconstruction tasks, such as face reconstruction, digit reconstruction and image restoration.
机译:卷积稀疏编码(CSC)由于其在图像重建和增强方面的优势,最近引起了广泛关注。然而,由于现有文献中没有很好地解决来自相似输入样本的特征的一致性,因此编码过程遭受由输入样本的变化引起的干扰。在本文中,我们将通过提出的流形约束卷积稀疏编码(MCSC)方法从一组样本中解决此特征一致性问题。 MCSC的核心思想是使用输入数据的固有流形(拉普拉斯)结构来规范化传统CSC,以便可以很好地保留从输入样本中提取的特征之间的一致性。为了有效地实现所提出的MCSC方法,采用了交替方向乘数方法(ADMM),该方法可以在优化过程中一致地整合基础拉普拉斯约束。借助这种规范化的数据结构约束,MCSC可以实现更好的解决方案,该解决方案对于输入样本相对于过完整滤波器的方差具有鲁棒性。通过提供将其应用于重建光场的最新结果,我们证明了MCSC的能力。最后,我们证明了所提出的MCSC是一种通用方法,因为在其他图像重建任务(例如人脸重建,数字重建和图像恢复)中,它比基于卷积稀疏编码的最新方法还可以获得更好的结果。

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