Abstract

To fuse infrared and visible images in wireless applications, the extraction and transmission of characteristic information security is an important task. The fused image quality depends on the effectiveness of feature extraction and the transmission of image pair characteristics. However, most fusion approaches based on deep learning do not make effective use of the features for image fusion, which results in missing semantic content in the fused image. In this paper, a novel trustworthy image fusion method is proposed to address these issues, which applies convolutional neural networks for feature extraction and blockchain technology to protect sensitive information. The new method can effectively reduce the loss of feature information by making the output of the feature extraction network in each convolutional layer to be fed to the next layer along with the production of the previous layer, and in order to ensure the similarity between the fused image and the original image, the original input image feature map is used as the input of the reconstruction network in the image reconstruction network. Compared to other methods, the experimental results show that our proposed method can achieve better quality and satisfy human perception.

Highlights

  • It is a big research challenge to fuse infrared and visible images to provide high-quality images for wireless applications, such as target recognition, visual enhancement, and cyber surveillance

  • We train our proposed method with 5000 input images that we choose from MS-COCO dataset [26]; the learning rate is set to 10−4; the batch size is set 24

  • Our experiment compares our model with even state-of-art image fusion methods in VIFB [27] with the particular consideration of wireless applications including object recognition and cyber resilience

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Summary

Introduction

It is a big research challenge to fuse infrared and visible images to provide high-quality images for wireless applications, such as target recognition, visual enhancement, and cyber surveillance. The visible light sensor collects visible images to represent rich texture details, usually with higher resolution. Still, it is affected by imaging conditions (such as weather conditions, and lighting) [1]. The thermal radiation information of the infrared image and the texture information of the visible image can be fused to obtain an image with better visual quality and more information, which is the primary purpose of the fusion of infrared and visible images. Device can analyse the image which are been fused with computer vision and processing

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