Method for Removing Motion Blur from Images of Harmful Biological Organisms in Power Places Based on Improved Cyclegan

Dongyang Ye, Shangping Zhong, Jiahao Zhuang, Li Chen
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引用次数: 1

Abstract

Nowadays, the automatic detection of harmful organisms in power places has attracted attention due to the extensive unattended way of power places. However, surveillance pictures are prone to motion blurring and harmful organisms cannot be effectively detected due to their frequent and fast movements in power places. On the basis of the improved Cycle-Consistent Adversarial Networks (CycleGAN) model, we propose a method for removing motion blur from the images of harmful biological organisms in power places. This method does not require paired blurred and real sharp images for training, which is consistent with actual requirements. In addition, our method improves the classical CycleGAN model by combining cycle consistency and perceptual loss to enhance the detail authenticity of image texture restoration and improve the detection accuracy. The model uses Wasserstein GAN with gradient penalty (WGAN-GP) as a loss function to train the depth model. Given the existence of the GAN itself, the entire real image distribution space is difficult to fill with the generated image distribution space. Experimental results show that the proposed method effectively improves the detection accuracy of harmful organisms in power places.
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基于改进Cyclegan的电力场所有害生物图像运动模糊去除方法
目前,由于电力场所普遍采用无人值守的方式,电力场所有害生物的自动检测受到了人们的关注。然而,由于电力场所中有害生物活动频繁、速度快,监控画面容易出现运动模糊,无法有效检测出有害生物。在改进的周期一致对抗网络(CycleGAN)模型的基础上,提出了一种去除电力场所有害生物图像运动模糊的方法。该方法不需要对模糊和真实的锐利图像进行配对训练,符合实际需求。此外,我们的方法通过结合周期一致性和感知损失对经典CycleGAN模型进行改进,增强了图像纹理恢复的细节真实性,提高了检测精度。该模型使用Wasserstein梯度惩罚GAN (WGAN-GP)作为损失函数来训练深度模型。由于GAN本身的存在,生成的图像分布空间很难填充整个实数图像分布空间。实验结果表明,该方法有效地提高了电力场所有害生物的检测精度。
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