BRIDGE SLAB ANOMALY DETECTOR USING U-NET GENERATOR WITH PATCH DISCRIMINATOR FOR ROBUST PROGNOSIS

Takato Yasuno, Junichiro Fujii, Michihiro Nakajima, Kazuhiro Noda
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引用次数: 3

Abstract

More than 50 years aging civil infrastructures have deteriorated, then structural diagnosis and periodic prognosis become critical for predictive maintenance. In terms of the bridge inspection every 5 years in Japan, we have collected a lot of human eye inspection. In context of digital structural monitoring, in addition to the past human inspection we make the most of drone flight images. However, human subjective judge includes individual bias, then a measurable objective score should be quantified using a unified anomaly distance from a health condition. Supervised learning, e.g. classification and semantic segmentation method is not always robust for unseen data. If we address the unlearned blind feature without any experience, prediction error might be a higher hurdle to overcome low precision and less recall problem. The generative anomaly detection via unsupervised learning has been growing in various fields, e.g. medical, manufacturing, food, and materials. If the distance and angle to the target damage interest could be controlled among a feasible range, and if the background noise could be removed and relaxed, then concrete surface damage and steel paint peel or corrosion would enable to discriminate them for predictive maintenance. In this paper, we propose a steel anomaly detector method to compute anomalous scores automatically, where we customize several U-shape skip-connected generator network with patch GAN discriminator. Exactly, we have create an encoder-decoder network using the VGG19 based U-Net generator with a patch discriminator. Furthermore, we explore robust unified anomaly score indicator for the target concrete and painted steel parts to analyze deterioration prognosis, so as to monitor the current status far from a health condition. Finally, focusing on the bridge slab, we exploit toward the inspection images with the number of 10,400, where they contains reinforcement concrete slab at 400 bridges under the direct control of national managers. In order to be stable learning and robust structural health monitoring, we demonstrate to visualize several anomalous feature map for precisely and full-covered digital inspection.
桥板异常检测器采用带补丁鉴别器的u-net发生器进行鲁棒预测
超过50年的老化民用基础设施已经老化,因此结构诊断和定期预测成为预测性维护的关键。在日本每5年的桥梁检查中,我们收集了大量的人眼检查。在数字结构监测的背景下,除了过去的人工检查外,我们还充分利用了无人机飞行图像。然而,人类的主观判断包含个体偏差,那么一个可测量的客观评分应该使用统一的异常距离来量化健康状况。监督学习,例如分类和语义分割方法,对于不可见的数据并不总是鲁棒的。如果我们在没有任何经验的情况下解决未学习的盲特征,预测误差可能会成为克服低精度和低召回问题的更高障碍。基于无监督学习的生成式异常检测在医疗、制造、食品、材料等领域得到了广泛的应用。如果与目标损伤兴趣的距离和角度能够控制在一个可行的范围内,并且如果背景噪声能够被去除和放松,那么混凝土表面损伤和钢漆剥离或腐蚀就能够进行区分,从而进行预测性维护。在本文中,我们提出了一种自动计算异常分数的钢异常检测器方法,其中我们定制了几个带有补丁GAN鉴别器的u形跳过连接发生器网络。确切地说,我们已经使用基于VGG19的U-Net生成器和一个补丁鉴别器创建了一个编码器-解码器网络。在此基础上,探索目标混凝土和涂漆钢构件的鲁棒统一异常评分指标,分析其劣化预测,从而监测其远离健康状态的现状。最后,以桥梁板为重点,我们对10,400张检查图像进行了开发,其中包括400座由国家管理人员直接控制的桥梁的钢筋混凝土板。为了稳定的学习和鲁棒的结构健康监测,我们展示了可视化的几个异常特征映射,用于精确和全覆盖的数字检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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