Peningkatan YOLO11 dalam Melakukan People Tracking and Counting Based On Gender
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Fakultas Ilmu Komputer Teknologi Informasi
Abstract
This research is motivated by the need for an intelligent video-based monitoring
system capable of detecting, tracking, and counting people based on gender
accurately and in real-time. Manual methods for counting visitors are often
inefficient and prone to errors, especially in crowded environments with high object
movement dynamics. To address this issue, a Computer Vision approach based on
Deep Learning was implemented by modifying the YOLO11 architecture using the
C2f (Cross Stage Partial with Fusion) module and integrating it with the ByteTrack
algorithm for object tracking. The main objective of this research is to analyze and
compare the performance of the original YOLO11 model and the modified YOLO11
C2f in detecting and tracking human movement by gender in video data. The
research methodology includes model training with variations of optimizers
(AdamW and SGD) and different batch sizes, followed by evaluation using metrics
such as Precision, Recall, F1-Score, mAP50, and mAP50–95, as well as analysis
of object tracking performance. The experimental results show that the YOLO11m
C2f model using the SGD optimizer and a batch size of 32 achieved the best
performance with a Precision of 0.983, Recall of 0.976, F1-Score of 0.9799, mAP50
of 0.992, mAP50–95 of 0.926, and accuracy of 95.7%. Although its accuracy is
slightly lower than the YOLO11m AdamW (95.73%), the C2f model demonstrated
higher stability in real-time tracking and counting, effectively reducing identity
switching between male and female classes. In conclusion, the integration of the
YOLO11 C2f architecture with the ByteTrack algorithm provides an efficient,
accurate, and stable detection and tracking system suitable for real-time people
tracking and counting applications in dynamic environments.
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Reuploud Repository hasyim Juni 2026
Approved by Teddy
