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Exact Feature Extraction Using Finite Rate of Innovation Principles With an Application to Image Super-Resolution

机译:基于有限创新速率原理的精确特征提取及其在图像超分辨率中的应用

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摘要

The accurate registration of multiview images is of central importance in many advanced image processing applications. Image super-resolution, for example, is a typical application where the quality of the super-resolved image is degrading as registration errors increase. Popular registration methods are often based on features extracted from the acquired images. The accuracy of the registration is in this case directly related to the number of extracted features and to the precision at which the features are located: images are best registered when many features are found with a good precision. However, in low-resolution images, only a few features can be extracted and often with a poor precision. By taking a sampling perspective, we propose in this paper new methods for extracting features in low-resolution images in order to develop efficient registration techniques. We consider, in particular, the sampling theory of signals with finite rate of innovation and show that some features of interest for registration can be retrieved perfectly in this framework, thus allowing an exact registration. We also demonstrate through simulations that the sampling model which enables the use of finite rate of innovation principles is well suited for modeling the acquisition of images by a camera. Simulations of image registration and image super-resolution of artificially sampled images are first presented, analyzed and compared to traditional techniques. We finally present favorable experimental results of super-resolution of real images acquired by a digital camera available on the market.
机译:在许多高级图像处理应用程序中,多视图图像的准确配准至关重要。例如,图像超分辨率是典型的应用,其中超配准图像的质量会随着配准误差的增加而下降。流行的注册方法通常基于从所获取图像中提取的特征。在这种情况下,配准的准确性与提取的特征的数量以及特征定位的精度直接相关:当找到许多具有良好精度的特征时,图像的配准最佳。但是,在低分辨率图像中,只能提取少数特征,并且通常精度较差。通过采样的角度,我们提出了一种在低分辨率图像中提取特征的新方法,以开发有效的配准技术。我们特别考虑具有有限创新率的信号采样理论,并表明可以在此框架中完美检索某些感兴趣的注册特征,从而实现精确注册。我们还通过仿真演示了能够使用有限创新率原理的采样模型非常适合对相机拍摄的图像进行建模。首先介绍,分析了人工采样图像的图像配准和图像超分辨率,并将其与传统技术进行了比较。我们最终提出了由市场上出售的数码相机获得的真实图像超分辨率的良好实验结果。

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