TY - GEN
T1 - Pavement segregation detection using support vector machine
AU - Fatriansyah, Jaka Fajar
AU - Kevin, Christofer
AU - Arunika, Austin
AU - Ramadheena, Venia Andira
N1 - Publisher Copyright:
© 2024 Author(s).
PY - 2024/2/6
Y1 - 2024/2/6
N2 - Segregation is a phenomenon of separating small and large fractions in a mixture, resulting in the presence of coarse aggregate and fine aggregate in an uneven mixture. As a result of the non-uniform distribution, the possibility of potholes, raveling, and cracks in the asphalt of the highway is very likely to occur. Therefore, we need to be able to take preventive measures as a form of minimizing the possibility of this phenomenon occurring. Segregation in asphalt is generally detected through manual visual inspection. However, using the assessment method obtained will tend to choose and take a long time. Thus, this research was conducted to provide a new solution to detect segregation areas in a more credible, faster, and economical way. This solution utilizes digital image processing methods that are still rarely used. In the process, this method will be implemented together with the Support Vector Machine method. Then, the variable that will be used as the main focus is the standard deviation. In this study, we will test the classification of segregated and non-segregated areas on the asphalt road environment at the University of Indonesia.
AB - Segregation is a phenomenon of separating small and large fractions in a mixture, resulting in the presence of coarse aggregate and fine aggregate in an uneven mixture. As a result of the non-uniform distribution, the possibility of potholes, raveling, and cracks in the asphalt of the highway is very likely to occur. Therefore, we need to be able to take preventive measures as a form of minimizing the possibility of this phenomenon occurring. Segregation in asphalt is generally detected through manual visual inspection. However, using the assessment method obtained will tend to choose and take a long time. Thus, this research was conducted to provide a new solution to detect segregation areas in a more credible, faster, and economical way. This solution utilizes digital image processing methods that are still rarely used. In the process, this method will be implemented together with the Support Vector Machine method. Then, the variable that will be used as the main focus is the standard deviation. In this study, we will test the classification of segregated and non-segregated areas on the asphalt road environment at the University of Indonesia.
KW - Asphalt
KW - Digital Image Processing
KW - Segregation
KW - Standard Deviation
KW - Support Vector Machine Method
KW - University of Indonesia
UR - http://www.scopus.com/inward/record.url?scp=85185800363&partnerID=8YFLogxK
U2 - 10.1063/5.0144537
DO - 10.1063/5.0144537
M3 - Conference contribution
AN - SCOPUS:85185800363
T3 - AIP Conference Proceedings
BT - AIP Conference Proceedings
A2 - Kusuma, Andyka
A2 - Fatriansyah, Jaka Fajar
A2 - Dhelika, Radon
A2 - Pratama, Mochamad Adhiraga
A2 - Irwansyah, Ridho
A2 - Maknun, Imam Jauhari
A2 - Putra, Wahyuaji Narottama
A2 - Ardi, Romadhani
A2 - Harwahyu, Ruki
A2 - Harahap, Yulia Nurliani
A2 - Lischer, Kenny
PB - American Institute of Physics Inc.
T2 - 17th International Conference on Quality in Research, QiR 2021 in conjunction with the International Tropical Renewable Energy Conference 2021, I-Trec 2021 and the 2nd AUN-SCUD International Conference, CAIC-SIUD
Y2 - 13 October 2021 through 15 October 2021
ER -