基于改进生成对抗网络的图像去雾算法

H. Zhong, Jin Wu
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引用次数: 1

摘要

在雾天条件下,设备采集的图像和视频模糊不清,成像效果不佳,极大地影响了后续目标检测和识别等视觉任务的准确性。目前,暗通道、AOD- Net等基于中间变量估计的除雾方法仍存在除雾不完全、颜色误差大等问题。为此,提出了一种基于生成对抗网络的图像去雾方法。发生器采用逐层连接的密集块结构,提高去雾图像的细节。鉴别器使用PatchGAN进行块确定并优化图像分辨率。同时,对生成的去雾图像和真实的无雾图像进行训练,并用对比法进行对比。在合成数据集上改进了该方法的峰值信噪比和结构相似度,生成的图像保留了人眼观察到的更好的细节和清晰度。
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Image dehazing algorithm based on improved generative adversarial network
Under foggy conditions, the images and videos collected by the device are blurred and poorly imaged, which greatly impacts the accuracy of subsequent visual tasks such as target detection and recognition. At present, the dehazing methods such as dark channel and AOD- Net based on estimating intermediate variables still have problems such as incomplete dehazing and large color error. Therefore, an image dehazing method based on the generative adversarial network is proposed. The generator adopts a dense block structure connected layer by layer to improve the details of the dehazed image. The discriminator uses PatchGAN to perform block determination and optimize the image resolution. Meanwhile, the generated dehazed image and the real fog-free image are trained and compared with the comparison method. The peak signal-to-noise ratio and structural similarity of the proposed method are improved on synthetic datasets, and the generated images retain better detail and clarity as observed by the human eye.
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