Deep learning techniques for multi-class classification of asphalt damage based on hamburg-wheel tracking test results

被引:7
|
作者
Guzman-Torres, Jose A. [1 ]
Morales-Rosales, Luis A. [2 ]
Algredo-Badillo, Ignacio [3 ]
Tinoco-Guerrero, Gerardo [1 ]
Lobato-Baez, Mariana [4 ]
Melchor-Barriga, Jose O. [5 ]
机构
[1] Univ Michoacana, Civil Engn Fac, Morelia, Mexico
[2] Conahcyt Univ Michoacana San Nicolas Hidalgo, Civil Engn Fac, Morelia, Mexico
[3] Conahcyt Inst Nacl Astrofis Opt & Elect, Comp Sci Dept, Tonantzintla, Puebla, Mexico
[4] Inst Tecnol Super Libres, Tecnol Nacl Mex TECNM, Libres, Puebla, Mexico
[5] Grp IGCE, Morelia, Mexico
关键词
Deep learning; Asphalt damage; Hamburg-wheel tracking; Flexible pavements; Multi-class classification;
D O I
10.1016/j.cscm.2023.e02378
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
In recent years, advancements in deep learning (DL) have been leveraged in civil engineering, but further exploration is necessary to apply DL techniques to asphalt research. These advances involve employing computer vision tasks and machine learning approaches to solve current challenges and develop innovative solutions for the conservation and monitoring of roads. In the laboratory, the Hamburg-Wheel Tracking (HWT) test simulates expected vehicle traffic and evaluates permanent deformation, such as rutting in asphalt mixtures. Current works focus on detecting the damages in the asphalt but do not classify the level of damage, which is the novelty proposed in the present work for rutting evaluation. This study aims to classify images of asphalt damage based on surface deformation caused by the HWT test. The dataset built and implemented in this study -called by the authors HWTBench2023- consists of 1198 images of asphalt samples subjected to controlled HWT conditions with varying levels of damage. The study employs a multi-class classification model based on convolutional neural networks (CNNs). The CNN was calibrated with transfer learning and fine-tuning hyperparameters. The outcomes demonstrate a high degree of accuracy, where the validation test showed an overall accuracy of 89 %, with F1score values over 89 %. The model developed in this research identifies the presence or absence of damage and quantifies the damage level. In addition, the model was evaluated on a different dataset containing asphalt pavement photographs with rut damages. The model's performance detecting rut damage on asphalt pavement under actual conditions indicates its adaptability to new images not included in the model's learning stage. Therefore, this study improves methods for fast assessing rutting deterioration in asphalt pavements with transfer learning, provides accurate measurements of pavement deformation, and helps identify maintenance and rehabilitation needs.
引用
收藏
页数:20
相关论文
共 50 条
  • [21] Binary Image Steganographic Techniques Classification Based on Multi-class Steganalysis
    Chiew, Kang Leng
    Pieprzyk, Josef
    INFORMATION SECURITY PRACTICE AND EXPERIENCE, PROCEEDINGS, 2010, 6047 : 341 - +
  • [22] An enhanced deep learning method for multi-class brain tumor classification using deep transfer learning
    Asif, Sohaib
    Zhao, Ming
    Tang, Fengxiao
    Zhu, Yusen
    MULTIMEDIA TOOLS AND APPLICATIONS, 2023, 82 (20) : 31709 - 31736
  • [23] An enhanced deep learning method for multi-class brain tumor classification using deep transfer learning
    Sohaib Asif
    Ming Zhao
    Fengxiao Tang
    Yusen Zhu
    Multimedia Tools and Applications, 2023, 82 : 31709 - 31736
  • [24] A Deep Transfer Learning Framework for the Multi-Class Classification of Vector Mosquito Species
    Pise, Reshma
    Patil, Kailas
    JOURNAL OF ECOLOGICAL ENGINEERING, 2023, 24 (09): : 183 - 191
  • [25] Multi-Class Retinopathy classification in Fundus Image using Deep Learning Approaches
    Wankhade, Nisha R.
    Bhoyar, Kishor K.
    INTERNATIONAL JOURNAL OF NEXT-GENERATION COMPUTING, 2021, 12 (05): : 807 - 816
  • [26] Detection and Multi-Class Classification of Invasive Knotweeds with Drones and Deep Learning Models
    Valicharla, Sruthi Keerthi
    Karimzadeh, Roghaiyeh
    Naharki, Kushal
    Li, Xin
    Park, Yong-Lak
    DRONES, 2024, 8 (07)
  • [27] Deep Learning Framework for Multi-class Breast Cancer Histology Image Classification
    Vang, Yeeleng S.
    Chen, Zhen
    Xie, Xiaohui
    IMAGE ANALYSIS AND RECOGNITION (ICIAR 2018), 2018, 10882 : 914 - 922
  • [28] A Novel Fused Multi-Class Deep Learning Approach for Chronic Wounds Classification
    Aldoulah, Zaid A.
    Malik, Hafiz
    Molyet, Richard
    APPLIED SCIENCES-BASEL, 2023, 13 (21):
  • [29] Combining Deep Learning and Multi-Class Discriminant Analysis for Granite Tiles Classification
    Filisbino, Tiene A.
    Simao, Lucas B.
    Giraldi, Gilson A.
    Thomaz, Carlos Eduardo
    2017 WORKSHOP OF COMPUTER VISION (WVC), 2017, : 19 - 24
  • [30] DeepFood: Automatic Multi-Class Classification of Food Ingredients Using Deep Learning
    Pan, Lili
    Pouyanfar, Samira
    Chen, Hao
    Qin, Jiaohua
    Chen, Shu-Ching
    2017 IEEE 3RD INTERNATIONAL CONFERENCE ON COLLABORATION AND INTERNET COMPUTING (CIC), 2017, : 181 - 189