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An Effective Image Denoising Method for UAV Images via Improved Generative Adversarial Networks

机译:通过改进的生成对抗网络对无人机图像进行有效的图像去噪

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摘要

Unmanned aerial vehicles (UAVs) are an inexpensive platform for collecting remote sensing images, but UAV images suffer from a content loss problem caused by noise. In order to solve the noise problem of UAV images, we propose a new methods to denoise UAV images. This paper introduces a novel deep neural network method based on generative adversarial learning to trace the mapping relationship between noisy and clean images. In our approach, perceptual reconstruction loss is used to establish a loss equation that continuously optimizes a min-max game theoretic model to obtain better UAV image denoising results. The generated denoised images by the proposed method enjoy clearer ground objects edges and more detailed textures of ground objects. In addition to the traditional comparison method, denoised UAV images and corresponding original clean UAV images were employed to perform image matching based on local features. At the same time, the classification experiment on the denoised images was also conducted to compare the denoising results of UAV images with others. The proposed method had achieved better results in these comparison experiments.
机译:无人机(UAV)是用于收集遥感图像的廉价平台,但是UAV图像存在由噪声引起的内容损失问题。为了解决无人机图像的噪声问题,我们提出了一种对无人机图像进行去噪的新方法。本文介绍了一种新的基于生成对抗学习的深度神经网络方法,以跟踪噪声图像和清晰图像之间的映射关系。在我们的方法中,使用感知重建损失来建立损失方程,该方程不断优化最小-最大博弈理论模型以获得更好的无人机图像降噪结果。通过所提出的方法产生的去噪图像享有更清晰的地面物体边缘和更详细的地面物体纹理。除传统的比较方法外,还使用降噪后的无人机图像和相应的原始干净无人机图像进行基于局部特征的图像匹配。同时,还对降噪后的图像进行了分类实验,以比较无人机图像的降噪结果。在这些比较实验中,该方法取得了较好的结果。

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