TY - JOUR
T1 - Development of a Pavement Evaluation Tool Using Aerial Imagery and Deep Learning
AU - Jiang, Yuhan
AU - Han, Sisi
AU - Bai, Yong
PY - 2021/9/1
Y1 - 2021/9/1
N2 - This paper presents the research results of using Google Earth imagery for visual condition surveying of highway pavement in the United States. A screenshot tool is developed to automatically track the highway for collecting end-to-end images and Global Position System (GPS). A highway segmentation tool based on a deep convolutional neural network (DCNN) is developed to segment the collected highway images into the predefined object categories, where the cracks are identified and labeled in each small patch of the overlapping assembled label-image prediction. Then, the longitudinal cracks and transverse cracks are detected using the x-gradient and y-gradient from the Sobel operator, and the developed pavement evaluation tool rates the longitudinal cracking in 0.3048 m/30.48 m-Station (linear feet per 100 ft. station) and transverse cracking in number per 30.48 m-Station (100 ft. station), which can be visualized in ArcGIS Online. Experiments were conducted on Interstate 43 (I-43) in Milwaukee County with pavement in both defective and sound visual conditions. Experimental results showed the patch-wise highway segmentation in Google Earth imagery from the 16×16-pixel DCNN model has as precise pixel accuracy as the U-net-based pixelwise crack/noncrack classifier. Compared to the manually crafted label image in the experimental area, the rated longitudinal cracking has an average error of overrating 20%, while transverse cracking has an average error of underrating 7%. This research project contributes to visual pavement condition surveying methodology with the free-to-access Google Earth imagery, which is a feasible, cost-effective option for accurately rating and geographically visualizing both project-level and network-level pavement.
AB - This paper presents the research results of using Google Earth imagery for visual condition surveying of highway pavement in the United States. A screenshot tool is developed to automatically track the highway for collecting end-to-end images and Global Position System (GPS). A highway segmentation tool based on a deep convolutional neural network (DCNN) is developed to segment the collected highway images into the predefined object categories, where the cracks are identified and labeled in each small patch of the overlapping assembled label-image prediction. Then, the longitudinal cracks and transverse cracks are detected using the x-gradient and y-gradient from the Sobel operator, and the developed pavement evaluation tool rates the longitudinal cracking in 0.3048 m/30.48 m-Station (linear feet per 100 ft. station) and transverse cracking in number per 30.48 m-Station (100 ft. station), which can be visualized in ArcGIS Online. Experiments were conducted on Interstate 43 (I-43) in Milwaukee County with pavement in both defective and sound visual conditions. Experimental results showed the patch-wise highway segmentation in Google Earth imagery from the 16×16-pixel DCNN model has as precise pixel accuracy as the U-net-based pixelwise crack/noncrack classifier. Compared to the manually crafted label image in the experimental area, the rated longitudinal cracking has an average error of overrating 20%, while transverse cracking has an average error of underrating 7%. This research project contributes to visual pavement condition surveying methodology with the free-to-access Google Earth imagery, which is a feasible, cost-effective option for accurately rating and geographically visualizing both project-level and network-level pavement.
KW - Crack detection
KW - Deep convolutional neural network
KW - Geographical visualization
KW - Google Earth imagery
KW - Pavement visual survey
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U2 - 10.1061/JPEODX.0000282
DO - 10.1061/JPEODX.0000282
M3 - Article
SN - 2573-5438
VL - 147
JO - Journal of Transportation Engineering Part B: Pavements
JF - Journal of Transportation Engineering Part B: Pavements
IS - 3
M1 - 04021027
ER -