基于块的特征级多焦点图像融合

Abdul Basit Siddiqui, M. Jaffar, Ayyaz Hussain, A. M. Mirza
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引用次数: 23

摘要

近年来,图像处理的应用得到了极大的发展。通常由于光学镜头的景深有限,特别是在焦距较大的情况下,不可能获得所有物体都在焦点上的图像。图像融合处理的是创建一个所有物体都在焦点上的图像。因此,它在图像分割、边缘检测、立体匹配和图像增强等图像处理的其他任务中起着重要的作用。本文提出了一种基于分类的特征级多焦点图像融合技术。首先将10对多聚焦图像分成块。自适应地找到每个图像的最优块大小。将块特征向量馈送到前馈神经网络中。然后将训练好的神经网络用于融合任意一对多焦点图像。我们还介绍了大量实验的结果,以突出所提出技术的效率和实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Block-Based Feature-Level Multi-Focus Image Fusion
In recent times, the applications of image processing have grown immensely. Usually due to limited depth of field of optical lenses especially with greater focal length, it becomes impossible to obtain an image where all the objects are in focus. Image fusion deals with creating an image in which all the objects are in focus. Thus it plays an important role to perform other tasks of image processing such as image segmentation, edge detection, stereo matching and image enhancement. In this paper, a novel feature-level multi-focus image fusion technique has been proposed which fuses multi-focus images using classification. Ten pairs of multi-focus images are first divided into blocks. The optimal block size for every image is found adaptively. The block feature vectors are fed to feed forward neural network. The trained neural network is then used to fuse any pair of multi-focus images. We have also presented the results of extensive experimentation performed to highlight the efficiency and utility of the proposed technique.
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