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Feature classification for multi-focus image fusion

机译:用于多焦点图像融合的特征分类

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Image processing techniques have witnessed increased usage in various real world applications. For any image processing technique, such as image segmentation, restoration, edge detection, stereo matching etc., to be applied successfully, the image under consideration must contain all of the scene objects in focus. Usually, due to inadequate depth of field of optical lenses, especially with larger focal length, it becomes impossible to obtain an image in which all of the objects are in focus. Image fusion deals with creating an image by combining portions from other images to obtain an image in which all of the objects are in focus. 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. The results of extensive experimentation performed are presented to highlight the efficiency and usefulness of the proposed technique.
机译:图像处理技术已经在各种现实应用中得到了越来越多的使用。对于要成功应用的任何图像处理技术,例如图像分割,还原,边缘检测,立体匹配等,要考虑的图像必须包含所有聚焦的场景对象。通常,由于光学透镜的景深不足,特别是具有较大的焦距时,变得不可能获得所有被摄体都对准焦点的图像。图像融合通过合并其他图像的部分以获得所有对象都处于焦点的图像来创建图像。在本文中,提出了一种新的特征级多焦点图像融合技术,该技术利用分类融合多焦点图像。首先将十对多焦点图像分成块。自适应地找到每个图像的最佳块大小。块特征向量被馈送到前馈神经网络。然后,将训练有素的神经网络用于融合任何一对多焦点图像。进行了广泛的实验结果,以突出提出的技术的效率和实用性。

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