Detection of SMD components on PCBs using neural networks: A comparative study of Roboflow 3.0 and YOLO v11

Autores/as

  • Héctor Jesús Castellón Universidad Tecnológica Centroamericana - Unitec - (Hn), Honduras
  • Alicia María Reyes-Duke Universidad Tecnológica Centroamericana - Unitec - (Hn)

DOI:

https://doi.org/10.18687/LACCEI2025.1.1.2049

Palabras clave:

CNN, PCB component detection, Roboflow, YOLOv11

Resumen

The inspection of surface-mount device (SMD) components on printed circuit boards (PCBs) is crucial to ensuring quality in electronic manufacturing. Conventional methods often lack precision and speed, resulting in defects and higher costs. This study compared two advanced neural networks, Roboflow 3.0 and YOLO v11, to address these challenges. Using a dataset of 1,300 images that included capacitors, resistors, and transistors under varying conditions, the models were trained and evaluated based on metrics such as mAP50, mAP50:95, precision, and recall. The results showed that Roboflow 3.0 achieved superior performance with a mAP50 of 95.6% and a mAP50:95 of 64.9%, along with consistent improvements in precision and recall during incremental training. In contrast, YOLO v11 demonstrated stability but achieved lower metrics, with a mAP50 of 90.2% and a mAP50:95 of 61.3%. While both models offered robust detection capabilities, Roboflow 3.0 excelled in adapting to diverse variations in lighting and geometry. This study highlights the potential of convolutional neural networks to transform PCB inspection in quality environments, offering greater precision and efficiency, thereby reducing human errors and associated costs while optimizing production processes.

Publicado

2025-07-27

Número

Sección

Articles

Licencia

Licencia Creative Commons

Esta obra está bajo una Licencia Creative Commons Atribución-NoComercial-CompartirIgual 4.0 Internacional.

LACCEI conserva el copyright de todos los artículos publicados bajo los términos de su acuerdo de transferencia de copyright. Como titular del copyright, LACCEI distribuye los artículos al público bajo la Licencia Internacional Creative Commons Atribución-NoComercial-CompartirIgual 4.0 (CC BY-NC-SA 4.0).

Cómo citar

Castellón, H. J., & Reyes-Duke, A. M. (2025). Detection of SMD components on PCBs using neural networks: A comparative study of Roboflow 3.0 and YOLO v11. LACCEI, 1(12). https://doi.org/10.18687/LACCEI2025.1.1.2049