Water Gauge Image Augmentation based on Generative Adversarial Network

Zhengzhuo Han, Ning Lv, Xiaojian Ai, Yang Zhou, Jiange Jiang, Chen Chen
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Abstract

Water level monitoring based on water gauge is a very widely used way because of its cheapness and portability. However, the insufficiency and low quality of water gauge images restrict the performance of water level measuring task based on deep learning methods such as object detection and semantic segmentation. In this article, we proposed a generative adversarial network (GAN) named Contextual adjustment GAN (CA-GAN) for data augmentation of water gauge images obtained from Wuyuan, Jiangxi Province in China, i.e. CA-GAN can generate high-quality images containing various scales and types water gauge, which provide image data for application such as deep-learning based water level measuring method. First, a improved downsampling module is designed with the help of segmentation map for the semantic activation modulation. Then, the Unet++ structure with the improved downsampling module is applied in the generator. Finally, to modulate the semantic relationship, a contextual adjustment scheme is de-signed between adjacent layers. This article conducts detailed experiments, proving that the improved downsampling module contributes to the maintenance of semantic information of water gauge images. It is illustrated that the water gauge images generated by CA-GAN have higher quality comparing with other three GAN models. And our method is expected to promote the water level measurement and hydrological monitoring application development.
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基于生成对抗网络的水表图像增强
基于水位计的水位监测具有价格低廉、便于携带等优点,是一种应用非常广泛的监测方式。然而,水位计图像的不足和低质量限制了基于深度学习方法的水位测量任务的性能,如目标检测和语义分割。本文提出了一种生成对抗网络(GAN)——上下文调整GAN (CA-GAN),用于对江西婺源水表图像进行数据增强,即CA-GAN可以生成包含各种尺度和类型水表的高质量图像,为基于深度学习的水位测量方法等应用提供图像数据。首先,基于语义激活调制的分割映射,设计了改进的下采样模块。然后,将un++结构与改进的下采样模块应用于发生器中。最后,为了调节语义关系,设计了相邻层之间的上下文调整方案。本文进行了详细的实验,证明改进的下采样模块有助于水表图像语义信息的维护。结果表明,与其他三种GAN模型相比,CA-GAN模型生成的水位计图像质量更高。该方法有望促进水位测量和水文监测应用的发展。
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