A Boosting Method to Face Image Super-resolution
Shanjun Mao, Da Zhou, Yiping Zhang, Zhihong Zhang, Jingjing Cao

TL;DR
This paper introduces a weighted-patch face image super-resolution method using AdaBoost, which adaptively emphasizes more informative facial patches to improve reconstruction quality over existing methods.
Contribution
A novel AdaBoost-based weighted patch approach for face super-resolution that dynamically prioritizes critical facial regions during training.
Findings
Outperforms state-of-the-art methods in objective metrics.
Achieves better visual quality in reconstructed face images.
Effectively highlights important facial patches for improved super-resolution.
Abstract
Recently sparse representation has gained great success in face image super-resolution. The conventional sparsity-based methods enforce sparse coding on face image patches and the representation fidelity is measured by -norm. Such a sparse coding model regularizes all facial patches equally, which however ignores distinct natures of different facial patches for image reconstruction. In this paper, we propose a new weighted-patch super-resolution method based on AdaBoost. Specifically, in each iteration of the AdaBoost operation, each facial patch is weighted automatically according to the performance of the model on it, so as to highlight those patches that are more critical for improving the reconstruction power in next step. In this way, through the AdaBoost training procedure, we can focus more on the patches (face regions) with richer information. Various experimental…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Image and Signal Denoising Methods · Advanced Vision and Imaging
