Non-Destructive Inspection of Tile Debonding by DWT and MFCC of Tile-Tapping Sound with Machine versus Deep Learning Models

J. Panyavaraporn, Paramate Horkaew
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Abstract

One of the essential processes of construction quality control is tile bonding inspection. Hollows beneath tile tessellation can lead to unbounded or completely broken tiles. An interior inspector typically used a hollowsounding technique. However, it relies on skill and judgment that greatly vary among individuals. Moreover, equipment and interpretation are difficult to calibrate and standardize. This paper addresses these issues by employing machine-learning strategies for tile-tapping sound classification. Provided that a tapping signal was digitally acquired, the proposed method was fully computerized. Firstly, the signal was analyzed and its wavelets and MFCC were extracted. The corresponding spectral features were then classified by SVM, k-NN, Naïve Bayes, and Logistic Regression algorithm, in turn. The results were subsequently compared against those from a previous works that employed a deep learning strategy. It was revealed that when the proposed method was properly configured, it required much less computing resources than the deep learning based one, while being able to distinguish dull from hollow sounding tiles with 93.67% accuracy.
利用机器学习与深度学习模型,通过瓦片敲击声的 DWT 和 MFCC 对瓦片脱胶进行无损检测
瓦片粘结检查是建筑质量控制的重要工序之一。瓷砖镶嵌下面的空洞会导致瓷砖无界或完全断裂。室内检查员通常使用空洞探测技术。然而,这依赖于个人之间差异很大的技能和判断。此外,设备和解释也很难校准和标准化。本文采用机器学习策略对敲击瓷砖的声音进行分类,以解决这些问题。由于敲击信号是以数字方式获取的,因此所提出的方法是完全计算机化的。首先,对信号进行分析,提取其小波和 MFCC。然后依次使用 SVM、k-NN、Naïve Bayes 和 Logistic Regression 算法对相应的频谱特征进行分类。随后,将结果与之前采用深度学习策略的作品进行了比较。结果表明,在对拟议方法进行适当配置后,它所需的计算资源比基于深度学习的方法少得多,同时能够以 93.67% 的准确率区分钝声和空心砖。
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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