Pre-processing for UAV Based Wildfire Detection: A Loss U-net Enhanced GAN for Image Restoration

Linhan Qiao, Youmin Zhang, Y. Qu
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引用次数: 3

Abstract

In this paper, a U-net with feature loss enhanced generative adversarial network (GAN) is designed for the wildfire or smoke images restoration which is captured by unmanned aerial vehicles in a serious environment. Based on the concepts of GAN, feature loss, and fastai API, we firstly crappy the target images, and train a U-net architecture based generator, then load the adaptive loss of discriminator and the mean square error together to train the GAN model. After the GAN, a second U-net grabs the feature loss from an Imagenet pre-trained loss network to generate the GAN output images with one more step. This U-net enhanced the generator of GAN and helped to get the main features in human conception. Comparing with other restoration methods, this model used the adaptive loss to train the GAN and perceptual loss to train the next U-net. Learning rate with simulation annealing helped jumping out of the local minimum. The result proved the good performance of this model.
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基于无人机野火检测的预处理:用于图像恢复的损失U-net增强GAN
针对恶劣环境下无人机捕获的野火或烟雾图像,设计了一种特征损失增强生成对抗网络(GAN)。基于GAN、特征损失和fastai API的概念,首先对目标图像进行预处理,训练基于U-net架构的生成器,然后加载鉴别器的自适应损失和均方误差一起训练GAN模型。在GAN之后,第二个U-net从Imagenet预训练的损失网络中获取特征损失,再经过一步生成GAN输出图像。该U-net增强了GAN的生成器,有助于获得人类概念的主要特征。与其他恢复方法相比,该模型使用自适应损失训练GAN,使用感知损失训练下一个U-net。模拟退火的学习率有助于跳出局部最小值。结果证明了该模型的良好性能。
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