People detection and tracking using deep learning based approaches
Identificadores
URI: https://hdl.handle.net/10481/94417Metadatos
Mostrar el registro completo del ítemMateria
People detection and tracking Deep learning YOLO TensorFlow
Fecha
2024Referencia bibliográfica
Proceedings of the 23rd International Workshop of Physical Agents (WAF 2023). Pág. 52-66.
Patrocinador
Senacyt Panamá (Scholarship No. 270-2022-164); MCIN/AEI/10.13039/501100011033 PID2022-138453OB-I00; “ERDF A way of making Europe”Resumen
The primary objective of this work is to develop an efficient
and rapid proposal for detecting and tracking persons based on images
captured by a mobile robot. This will be achieved through the integration
of deep learning-based detectors and state-of-the-art tracking algorithms.
Pre-trained detectors on the COCO dataset will be evaluated to identify
the most effective ones for human detection, and tracking capabilities
will subsequently be added through cutting-edge algorithms. The effec-
tiveness of the solution will be measured using specialized datasets and
specific performance metrics. Additionally, a new dataset, ROBOT_7,
will be created, designed to reflect the operational scenarios of the mo-
bile robot PeopleBot. An extensive experimentation has been carried
out in order to identify the best combination of detector and tracking
algorithm for this application. As conclusion, we propose a specific com-
bination of detector and tracking algorithm that achieves high levels of
F1-score and CLEAR MOT performance achieving rates of frames per
second good enough for a real-time performance.