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Pavement Defects Detection and Classification Using Smartphone-Based Vibration and Video Signals

机译:使用基于智能手机的振动和视频信号的路面缺陷缺陷检测和分类

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摘要

Presented herein is a big-data driven methodology for the detection of roadway anomalies, utilizing smartphone-based data and image signal streams. The methodology uses a vibration-based method and artificial intelligence for the detection of vibration-inducing anomalies, and a vision-based method with entropic texture segmentation filters and support vector machine (SVM) classification for the detection of patch defects on roadway pavements. The presented system pre-processes video streams for the identification of video frames of changes in image-entropy values, isolates these frames and performs texture segmentation to identify pixel areas of significant changes in entropy values, and then classifies and quantifies these areas using SVMs. The developed SVM is trained and tested by feature vectors generated from the image histogram and two texture descriptors of non-overlapped square blocks, which constitute images that includes "patch" and "no-patch" areas. The outcome is composed of block-based and image-based classification, as well as of measurements of the patch area.
机译:本文中所呈现是一个很大的数据驱动方法,用于检测道路异常,利用基于智能手机的数据和图像信号流。该方法采用了基于振动的方法和人工智能用于检测振动诱导的异常,以及与熵的纹理分割滤波器和支持向量机(SVM)分类为对道路路面的检测补丁缺陷的基于视觉的方法。用于在图像熵值的变化的视频帧的识别所提出的系统前处理视频流,分离这些帧并进行纹理分割,以识别在熵值显著变化,然后进行分类的像素区域并量化使用支持向量机这些区域。所开发的SVM被训练并通过从图像直方图和非重叠正方形块,其构成了包括“补丁”和“无补丁”区域的图像的两个纹理描述符生成的特征向量进行测试。结果是由基于图像的基于块的和分类的,以及贴剂面积的测量。

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