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Transfer learning on convolutional activation feature as applied to a building quality assessment robot

机译:转移卷积激活功能的学习应用于建筑质量评估机器人

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摘要

We propose an automated postconstruction quality assessment robot system for crack, hollowness, and finishing defects in light of a need to speed up the inspection work, a more reliable inspection report, as well as an objective through fully automated inspection. Such an autonomous inspection system has a potential to cut labour cost significantly and achieve better accuracy. In the proposed system, a transfer learning network is employed for visual defect detection; a region proposal network is used for object region proposal, a deep learning network employed as feature extractor, and a linear classifier with supervised learning as object classifier; moreover, active learning of top-N ranking region of interest is undertaken for fine-tuning of the transfer learning on convolutional activation feature network. Extensive experiments are validated in a construction quality assessment system room and constructed test bed. The results are promising in a way that the novel proposed automated assessment method gives satisfactory results for crack, hollowness, and finishing defects assessment. To the best of our knowledge, this study is the first attempt to having an autonomous visual inspection system for postconstruction quality assessment of building sector. We believe the proposed system is going to help to pave the way towards fully autonomous postconstruction quality assessment systems in the future.
机译:我们提出了一种自动化的后抗性质量评估机器人系统,用于裂缝,喧哗和整理缺陷,鉴于加快检验工作,更可靠的检验报告,以及通过全自动检查的目标。这种自主检测系统有可能显着降低劳动力成本并实现更好的准确性。在所提出的系统中,使用转移学习网络用于视觉缺陷检测;区域提议网络用于对象区域提议,一个用于特征提取器的深度学习网络,以及具有监督学习的线性分类器作为对象分类器;此外,在卷积激活特征网络上的转移学习进行微调,对Top-N排名区域的主动学习进行了微调。广泛的实验在建筑质量评估系统室和建造的试验台中被验证。结果是有前途的,即新颖的提议的自动评估方法为裂缝,喧哗和整理缺陷评估提供令人满意的结果。据我们所知,本研究是第一次尝试为建筑业后施工质量评估进行自主视觉检验系统。我们相信该拟议的系统将帮助将来铺平朝向全自动的后期建筑质量评估系统。

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