多发生器MS-DCGAN生成图像的混合检测方法

IF 5.1 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Selim Sürücü , Banu Diri
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引用次数: 0

摘要

在过去几年中,遥感技术取得了重大进展,大大扩大了利用遥感系统可以进行的研究范围。从农业到国防应用的各个领域都使用遥感图像,这些图像主要由安装在卫星和无人机等车辆上的传感器获取。除了遥感技术的进步外,深度学习也取得了重大进展。近年来,对这两个课题的研究有了实质性的增加。生成对抗网络(GAN)技术是人工智能和深度学习研究的另一个领域,它将人造卫星图像的生成提升到了一个新的水平。用户可以将这些人工图像用于各种目的,包括信息隐藏和数据扩展。恶意使用生成的假图像可能引发国际危机。本文提出了一种新的伪卫星图像生成与检测方法。提出了多光谱深度卷积GAN (MS-DCGAN)模型来生成伪多光谱图像,并提出了TransStacking模型来区分伪图像和真实图像。该模型作为单发电机和多发电机模型进行了测试。TransStacking (DenseNet201+stacking)模型显示出非常高的成功率,单发电机和多发电机MS-DCGAN的准确率分别达到100%和98%。该模型是一种先进的混合模型,可以在多光谱图像中提供最佳的结果,并可应用于不同的领域。由于TransStacking模型是一个模块化混合模型,它可以与许多不同的新旧模型一起使用。此外,通过对DenseNet201+堆垛模型进行烧蚀分析,分析了堆垛模块基部模型对结果的影响,得到了最佳的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid approach for the detection of images generated with multi generator MS-DCGAN
Over the past few years, there have been significant advances in remote sensing technology that have considerably expanded the range of research that can be conducted using remote sensing systems. Various fields, from agriculture to defense applications, use remote sensing imagery, primarily acquired by sensors mounted on vehicles like satellites and UAVs. In addition to advances in remote sensing technology, there have also been major advancements in deep learning. In recent years, there has been a substantial increase in the studies on these two topics. Generative Adversarial Networks (GAN) technology, another area of artificial intelligence and deep learning research, has taken the generation of fake satellite images to a new level. Users can use these artificial images for a variety of purposes, including information concealment and data expansion. Malicious uses of the generated fake images could trigger international crises. In this paper, we propose a new method for the generation and detection of fake satellite images. The MultiSpectral Deep Convolutional GAN (MS-DCGAN) model is developed to generate fake multispectral images, and the TransStacking model is proposed to distinguish between fake images and real images. This model is tested both as a single generator and multi generator model. The TransStacking (DenseNet201+stacking) model showed a very high success rate achieving 100% accuracy for single generator and 98% accuracy for multi generator MS-DCGAN, respectively. The proposed model is an advanced hybrid model that provides the best results in multi-spectral images and can be applied in diverse domains. Since the TransStacking model is a modular hybrid model, it can be used with many different old and new models. Furthermore, the effect of the models in the base part of the stacking module on the results was also analyzed by performing ablation analysis on the DenseNet201+stacking model, where the best results were obtained.
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来源期刊
Engineering Science and Technology-An International Journal-Jestech
Engineering Science and Technology-An International Journal-Jestech Materials Science-Electronic, Optical and Magnetic Materials
CiteScore
11.20
自引率
3.50%
发文量
153
审稿时长
22 days
期刊介绍: Engineering Science and Technology, an International Journal (JESTECH) (formerly Technology), a peer-reviewed quarterly engineering journal, publishes both theoretical and experimental high quality papers of permanent interest, not previously published in journals, in the field of engineering and applied science which aims to promote the theory and practice of technology and engineering. In addition to peer-reviewed original research papers, the Editorial Board welcomes original research reports, state-of-the-art reviews and communications in the broadly defined field of engineering science and technology. The scope of JESTECH includes a wide spectrum of subjects including: -Electrical/Electronics and Computer Engineering (Biomedical Engineering and Instrumentation; Coding, Cryptography, and Information Protection; Communications, Networks, Mobile Computing and Distributed Systems; Compilers and Operating Systems; Computer Architecture, Parallel Processing, and Dependability; Computer Vision and Robotics; Control Theory; Electromagnetic Waves, Microwave Techniques and Antennas; Embedded Systems; Integrated Circuits, VLSI Design, Testing, and CAD; Microelectromechanical Systems; Microelectronics, and Electronic Devices and Circuits; Power, Energy and Energy Conversion Systems; Signal, Image, and Speech Processing) -Mechanical and Civil Engineering (Automotive Technologies; Biomechanics; Construction Materials; Design and Manufacturing; Dynamics and Control; Energy Generation, Utilization, Conversion, and Storage; Fluid Mechanics and Hydraulics; Heat and Mass Transfer; Micro-Nano Sciences; Renewable and Sustainable Energy Technologies; Robotics and Mechatronics; Solid Mechanics and Structure; Thermal Sciences) -Metallurgical and Materials Engineering (Advanced Materials Science; Biomaterials; Ceramic and Inorgnanic Materials; Electronic-Magnetic Materials; Energy and Environment; Materials Characterizastion; Metallurgy; Polymers and Nanocomposites)
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