Redirigiendo al acceso original de articulo en 20 segundos...
Inicio  /  Applied Sciences  /  Vol: 11 Par: 8 (2021)  /  Artículo
ARTÍCULO
TITULO

Implementation of Pavement Defect Detection System on Edge Computing Platform

Yu-Chen Lin    
Wen-Hui Chen and Cheng-Hsuan Kuo    

Resumen

Road surfaces in Taiwan, as well as other developed countries, often experience structural failures, such as patches, bumps, longitudinal and lateral cracking, and potholes, which cause discomfort and pose direct safety risks to motorists. To minimize damage to vehicles from pavement defects or provide the corresponding comfortable ride promotion strategy later, in this study, we developed a pavement defect detection system using a deep learning perception scheme for implementation on Xilinx Edge AI platforms. To increase the detection distance and accuracy of pavement defects, two cameras with different fields of view, at 70∘" role="presentation" style="position: relative;">70°70° 70 ° and 30∘" role="presentation" style="position: relative;">30°30° 30 ° , respectively, were used to capture the front views of a car, and then the YOLOv3 (you only look once, version 3) model was employed to recognize the pavement defects, such as potholes, cracks, manhole covers, patches, and bumps. In addition, to promote continuous pavement defect recognition rate, a tracking-via-detection strategy was employed, which first detects pavement defects in each frame and then associates them to different frames using the Kalman filter method. Thus, the average detection accuracy of the pothole category could reach 71%, and the miss rate was about 29%. To confirm the effectiveness of the proposed detection strategy, experiments were conducted on an established Taiwan pavement defect image dataset (TPDID), which is the first dataset for Taiwan pavement defects. Moreover, different AI methods were used to detect the pavement defects for quantitative comparative analysis. Finally, a field-programmable gate-array-based edge computing platform was used as an embedded system to implement the proposed YOLOv3-based pavement defect detection system; the execution speed reached 27.8 FPS while maintaining the accuracy of the original system model.

 Artículos similares

       
 
Cristobal Sierra, Shuva Paul, Akhlaqur Rahman and Ambarish Kulkarni    
A road network is the key foundation of any nation?s critical infrastructure. Pavements represent one of the longest-living structures, having a post-construction life of 20?40 years. Currently, most attempts at maintaining and repairing these structures... ver más
Revista: Infrastructures

 
Fabrizio D?Amico, Luca Bianchini Ciampoli, Alessandro Di Benedetto, Luca Bertolini and Antonio Napolitano    
The implementation of the digitalization of the linear infrastructure is growing rapidly and new methods for developing BIM-oriented digital models are increasing. The integration of the results obtained from non-destructive surveys carried out along a r... ver más
Revista: Infrastructures

 
Gerrit J. Jordaan and Wynand J. vdM. Steyn    
The developing world has been faced with high rates of unemployment, exacerbated by extended enforced lockdowns due to the pandemic. Pressure is mounting for drastic intervention to accelerate economic growth and to provide employment opportunities. Most... ver más
Revista: Applied Sciences

 
Gonçalo Pereira, Manuel Parente, João Moutinho and Manuel Sampaio    
Decision support and optimization tools to be used in construction often require an accurate estimation of the cost variables to maximize their benefit. Heavy machinery is traditionally one of the greatest costs to consider mainly due to fuel consumption... ver más
Revista: Infrastructures

 
Alireza Sassani, Omar Smadi and Neal Hawkins    
Pavement markings are essential elements of transportation infrastructure with critical impacts on safety and mobility. They provide road users with the necessary information to adjust driving behavior or make calculated decisions about commuting. The vi... ver más
Revista: Infrastructures