A New Robust Multi focus image fusion Method

Hafiz Muhammad Tayyab Khushi
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Abstract

In today's digital era, multi focus picture fusion is a critical problem in the field of computational image processing. In the field of fusion information, multi-focus picture fusion has emerged as a significant research subject. The primary objective of multi focus image fusion is to merge graphical information from several images with various focus points into a single image with no information loss. We provide a robust image fusion method that can combine two or more degraded input photos into a single clear resulting output image with additional detailed information about the fused input images. The targeted item from each of the input photographs is combined to create a secondary image output. The action level quantities and the fusion rule are two key components of picture fusion, as is widely acknowledged. The activity level values are essentially implemented in either the "spatial domain" or the "transform domain" in most common fusion methods, such as wavelet. The brightness information computed from various source photos is compared to the laws developed to produce brightness / focus maps by using local filters to extract high-frequency characteristics. As a result, the focus map provides integrated clarity information, which is useful for a variety of Multi focus picture fusion problems. Image fusion with several modalities, for example. Completing these two jobs, on the other hand. As a consequence, we offer a strategy for achieving good fusion performance in this study paper. A Convolutional Neural Network (CNN) was trained on both high-quality and blurred picture patches to represent the mapping. The main advantage of this idea is that it can create a CNN model that can provide both the Activity level Measurement" and the Fusion rule, overcoming the limitations of previous fusion procedures. Multi focus image fusion is demonstrated using microscopic images, medical imaging, computer visualization, and Image information improvement is also a benefit of multi-focus image fusion. Greater precision is necessary in terms of target detection and identification. Face recognition" and a more compact work load, as well as enhanced system consistency, are among the new features.
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一种新的鲁棒多焦点图像融合方法
在当今数字时代,多焦点图像融合是计算图像处理领域的一个关键问题。在信息融合领域,多焦点图像融合已成为一个重要的研究课题。多焦点图像融合的主要目标是将具有不同焦点的多幅图像中的图形信息融合为一幅图像,使图像信息不丢失。我们提供了一种鲁棒的图像融合方法,可以将两个或多个退化的输入照片组合成一个清晰的输出图像,并提供有关融合输入图像的额外详细信息。将每个输入照片中的目标项目组合起来,以创建二次图像输出。动作水平量和融合规则是图像融合的两个关键组成部分。在大多数常见的融合方法(如小波)中,活动水平值基本上是在“空间域”或“变换域”中实现的。利用局部滤波器提取高频特征,将从各种源照片中计算的亮度信息与生成亮度/焦点图的规律进行比较。因此,焦点图提供了完整的清晰度信息,可用于各种多焦点图像融合问题。例如,几种模式的图像融合。另一方面,完成这两项工作。因此,我们在本研究论文中提供了一种实现良好融合性能的策略。卷积神经网络(CNN)在高质量和模糊图像斑块上进行训练来表示映射。这个想法的主要优点是,它可以创建一个既可以提供“活动水平测量”又可以提供融合规则的CNN模型,克服了以前融合过程的局限性。多焦点图像融合在显微图像、医学成像、计算机可视化等方面得到了广泛的应用,同时多焦点图像融合也有利于图像信息的改善。在目标探测和识别方面,需要更高的精度。新功能包括“人脸识别”和更紧凑的工作负荷,以及增强的系统一致性。
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