Deteksi Dan Perhitungan Kendaraan pada Pintu Akses Pariwisata Menggunakan Algoritma Yolov8 Deepsort
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Fakultas Ilmu Komputer
Abstract
Vehicle detection and counting at tourism access gates is a crucial task for
managing visitor traffic and tourism infrastructure. Current methods are still
conducted semi-manually, which is inefficient and prone to human error. This
study aims to develop an automated vehicle detection and counting system by
integrating the YOLOv8 algorithm with the DeepSORT tracking algorithm,
enhanced with the Space-to-Depth Convolution (SPD-Conv) module. The dataset
consists of 1,500 images of three vehicle classes — motorcycle, car, and bus —
collected at tourism access gates in the Jember area and augmented using
Roboflow. Six model variants were trained and evaluated: YOLOv8n, YOLOv8s,
and YOLOv8m as baseline models, alongside their SPD-Conv-modified
counterparts. The results show that the YOLOv8n baseline achieved the highest
overall mAP@0.5 of 0.712, while among SPD-Conv models, YOLOv8s-SPD
achieved the highest mAP@0.5 of 0.695 with the highest Precision of 0.641. The
integration of SPD-Conv into the Small variant improved accuracy over its
baseline (0.695 vs. 0.690) without increasing computational cost, as inference
speed was even slightly faster (1.2 ms vs. 1.3 ms). The DeepSORT algorithm
successfully assigned unique IDs to each detected vehicle, enabling accurate
counting through a virtual counting line while preventing double-counting. This
system demonstrates a promising approach for automated vehicle monitoring at
tourism facilities.
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Approved by Teddy
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Universitas Jember mengikuti Harvard style
