Jurnal Zona
Vol 8, No 2 (2024)

Deteksi Lubang Jalan Secara Otomatis dari Rekaman Drone Menggunakan Model Machine Learning Berbasis YOLOv5 Instance Segmentation di Kota Pekanbaru, Provinsi Riau, Indonesia

Badrul Huda Husain (Balai Penyuluhan dan Pelatihan Kehutanan Pekanbaru Ministry of Forestry of the Republic of Indonesia)
Takahiro Osawa (Center for Research and Application of Satellite Remote Sensing (YUCARS) Yamaguchi University)
Sagung Putri Chandra Astiti (Universitas Udayana)
Dodi Frianto (Office for Standard Implementation of Environment and Forestry Instrument Kuok Ministry of Environment and Forestry Republic of Indonesia)
Muhammad Rizki Nandika (Research Center for Oceanography, National Research and Innovation Agency of Indonesia)
Dewi Agustine (Balai Penyuluhan dan Pelatihan Kehutanan Pekanbaru Ministry of Forestry of the Republic of Indonesia)



Article Info

Publish Date
31 Oct 2024

Abstract

This scientific journal presents an approach to automatically detect road potholes from drone footage using a machine-learning model based on YOLOv5. The primary objective of this research is to develop a reliable and efficient system for road quality inspection. The proposed model achieves promising results with an F1 confidence of 0.83, Precision confidence of 0.96, Precision-Recall of 0.716, and Recall confidence of 0.8. The study aims to serve as a preliminary development toward the future implementation of road quality inspection. By leveraging drone footage and advanced machine learning techniques, the automated detection of potholes can significantly enhance the efficiency and accuracy of road maintenance efforts. Early detection and prompt repair of potholes can lead to improve road safety and reduce vehicle damage. Using drones and machine learning models allows for efficient monitoring and assessment of road infrastructure, contributing to sustainable transportation systems and minimizing the environmental impact of inefficient road maintenance. Moreover, this research contributes to the advancement of technology application in the field of environmental science. Overall, this study highlights the potential of YOLOv5-based machine learning models in automating the detection of road potholes from drone footage. The results demonstrate its effectiveness in accurately identifying and localizing potholes, paving the way for further advancements in road quality inspection and technology applications within the field of environmental science.

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Journal Info

Abbrev

Zona

Publisher

Subject

Earth & Planetary Sciences Environmental Science

Description

Jurnal Zona adalah Jurnal Ilmu Lingkungan terbitan Pelantar Press yang Berisi artikel ilmiah hasil penelitian dan non penelitian (kajian analisis, aplikasi teori dan review) aspek-aspek lingkungan termasuk ekologi lingkungan, konservasi sumber daya alam, pembangunan dan lingkungan, analisis mengenai ...