Compared to NDT and health monitoring method for cracks in engineering structures, surface crack detection or identification based on visible light images is non-contact, with the advantages of fast speed, low cost and high precision. Firstly, typical pavement (concrete also) crack public data sets were collected, and the characteristics of sample images as well as the random variable factors, including environmental, noise and interference etc., were summarized. Subsequently, the advantages and disadvantages of three main crack identification methods (i.e., hand-crafted feature engineering, machine learning, deep learning) were compared. Finally, from the aspects of model architecture, testing performance and predicting effectiveness, the development and progress of typical deep learning models, including self-built CNN, transfer learning(TL) and encoder-decoder(ED), which can be easily deployed on embedded platform, were reviewed. The benchmark test shows that: 1) It has been able to realize real-time pixel-level crack identification on embedded platform: the entire crack detection average time cost of an image sample is less than 100ms, either using the ED method (i.e., FPCNet) or the TL method based on InceptionV3. It can be reduced to less than 10ms with TL method based on MobileNet (a lightweight backbone base network). 2) In terms of accuracy, it can reach over 99.8% on CCIC which is easily identified by human eyes. On SDNET2018, some samples of which are difficult to be identified, FPCNet can reach 97.5%, while TL method is close to 96.1%. To the best of our knowledge, this paper for the first time comprehensively summarizes the pavement crack public data sets, and the performance and effectiveness of surface crack detection and identification deep learning methods for embedded platform, are reviewed and evaluated.


翻译:与NDT和对工程结构裂缝的健康监测方法相比,基于可见光图像的表面裂缝探测或识别方法不是接触,其优点是快速、低成本和高精度。首先,收集了典型的铺路(混凝土)裂缝公共数据集,并总结了样本图像的特点以及随机变量因素,包括环境、噪音和干扰等。随后,比较了三种主要裂缝识别方法(即手工制作的特征工程、机器学习、深层学习)的优缺点。最后,从模型结构、测试性能和预测有效性、典型深层学习模型的开发和进展等方面来看,包括自建CNN、转移学习(TL)和编码解码解码(ED),这些模型可以很容易地在嵌入平台上部署,包括环境、噪音和干扰等。基准测试表明,在嵌入平台上,可以实现实时平分解裂缝层断层断裂缝的分解平均时间成本成本低于100米,或者使用ED方法(i.e.e.、FPC)开发和进步网络的精度数据基础,在T.I.I.I.

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Surface 是微软公司( Microsoft)旗下一系列使用 Windows 10(早期为 Windows 8.X)操作系统的电脑产品,目前有 Surface、Surface Pro 和 Surface Book 三个系列。 2012 年 6 月 18 日,初代 Surface Pro/RT 由时任微软 CEO 史蒂夫·鲍尔默发布于在洛杉矶举行的记者会,2012 年 10 月 26 日上市销售。
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