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首页> 外文期刊>Wireless communications & mobile computing >A Heterogeneous Image Fusion Method Based on DCT and Anisotropic Diffusion for UAVs in Future 5G IoT Scenarios
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A Heterogeneous Image Fusion Method Based on DCT and Anisotropic Diffusion for UAVs in Future 5G IoT Scenarios

机译:基于DCT的异构图像融合方法,在未来的5G IOT场景中的无人机的各向异性扩散

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Unmanned aerial vehicles, with their inherent fine attributes, such as flexibility, mobility, and autonomy, play an increasingly important role in the Internet of Things (IoT). Airborne infrared and visible image fusion, which constitutes an important data basis for the perception layer of IoT, has been widely used in various fields such as electric power inspection, military reconnaissance, emergency rescue, and traffic management. However, traditional infrared and visible image fusion methods suffer from weak detail resolution. In order to better preserve useful information from source images and produce a more informative image for human observation or unmanned aerial vehicle vision tasks, a novel fusion method based on discrete cosine transform (DCT) and anisotropic diffusion is proposed. First, the infrared and visible images are denoised by using DCT. Second, anisotropic diffusion is applied to the denoised infrared and visible images to obtain the detail and base layers. Third, the base layers are fused by using weighted averaging, and the detail layers are fused by using the Karhunen–Loeve transform, respectively. Finally, the fused image is reconstructed through the linear superposition of the base layer and detail layer. Compared with six other typical fusion methods, the proposed approach shows better fusion performance in both objective and subjective evaluations.
机译:无人驾驶飞行器,具有固有的精细属性,例如灵活性,移动性和自主权,在物联网(物联网)中起着越来越重要的作用。空中红外和可见的图像融合,这构成了IOT的感知层的重要数据基础,已广泛用于各种领域,如电力检测,军事侦察,应急救援和交通管理。然而,传统的红外和可见图像融合方法遭受弱细节分辨率。为了更好地从源图像中保留有用的信息并产生用于人类观察或无人驾驶飞行器视觉任务的更具信息性的图像,提出了一种基于离散余弦变换(DCT)和各向异性扩散的新型融合方法。首先,红外和可见图像通过使用DCT来抵抗。其次,将各向异性扩散施加到被去噪的红外和可见图像中以获得细节和基层。第三,通过使用加权平均来融合基础层,并分别通过使用Karhunen-Loeve变换来融合细节层。最后,通过基层和细节层的线性叠加重建熔合图像。与六种其他典型的融合方法相比,所提出的方法在客观和主观评估中表现出更好的融合性能。

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