Vision‐based displacement measurement enhanced by super‐resolution using generative adversarial networks

Chujin Sun, Donglian Gu, Yi Zhang, Xinzheng Lu
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引用次数: 10

Abstract

Monitoring the deformation or displacement response of buildings is critical for structural safety. Recently, the development of computer vision has led to extensive research on the application of vision‐based measurements in the structural monitoring. This enables the use of urban surveillance video cameras, which are widely installed and can produce numerous images and videos of urban scenes to measure the structural displacement. However, the structural displacement measurement may be inaccurate owing to the limited hardware resolution of the surveillance video cameras or the long distance from the cameras to the monitored targets. To this end, this study proposes a method to improve the displacement measurement accuracy using a deep learning super‐resolution model based on generative adversarial networks. The proposed method achieves texture detail enhancement of low‐resolution images or videos by supplementing high‐resolution photographs of the target, thus improving the accuracy of the vision‐based displacement measurement. The proposed method shows good accuracy and stability in both the static and dynamic experimental validations compared with the original low‐resolution images/video and interpolation‐based super‐resolution images/video. In conclusion, the proposed method can support the displacement measurement of buildings and infrastructures based on urban surveillance video cameras.
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使用生成对抗网络的超分辨率增强的基于视觉的位移测量
监测建筑物的变形或位移响应对结构安全至关重要。近年来,随着计算机视觉的发展,基于视觉的测量方法在结构监测中的应用得到了广泛的研究。这使得城市监控摄像机得以使用,这些摄像机被广泛安装,可以产生大量的城市场景图像和视频来测量结构位移。然而,由于监控摄像机的硬件分辨率有限或摄像机与被监控目标的距离较远,结构位移测量可能不准确。为此,本研究提出了一种基于生成对抗网络的深度学习超分辨率模型来提高位移测量精度的方法。该方法通过补充目标的高分辨率照片来增强低分辨率图像或视频的纹理细节,从而提高了基于视觉的位移测量的精度。与原始的低分辨率图像/视频和基于插值的超分辨率图像/视频相比,该方法在静态和动态实验验证中都显示出良好的精度和稳定性。综上所述,该方法可以支持基于城市监控摄像机的建筑物和基础设施的位移测量。
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