Applying the YOLOv11 model and the adapted LaDD dataset to people detection in sparsely populated areas

Автор: Alexander V. Smirnov, Igor P. Tishchenko, Sergey A. Lazarev

Журнал: Программные системы: теория и приложения @programmnye-sistemy

Рубрика: Искусственный интеллект и машинное обучение

Статья в выпуске: 4 (67) т.16, 2025 года.

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This study is aimed at developing a neural network method for detecting people in sparsely populated areas using images obtained from an unmanned aerial vehicle (UAV). The YOLOv11m architecture model was used as a neural network detector. As part of the study, an adaptation algorithm for the LaDD training dataset was developed and applied. Experiments were conducted to preliminary train the model on the original and adapted datasets, which demonstrated the advisability of using the adapted dataset. The final accuracy of the model during training reached 98.7% by metric mAP50 . Model inference showed a detection accuracy of 0.895 (89.5%) by metric F1 and 0.901 (90.1%) by metric mAP50 , which confirms the workability of the presented method.

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Image analysis, people detection, UAV imagery, YOLOv11, neural networks, dataset, adaptation

Короткий адрес: https://sciup.org/143185202

IDR: 143185202   |   УДК: 004.932.72   |   DOI: 10.25209/2079-3316-2025-16-4-217-240