The Influence of YOLOv5 Hyperparameters for Construction Details Detection
Articles
Tautvydas Kvietkauskas
Vilnius Gediminas Technical University, Lithuania
Published 2024-05-13
https://doi.org/10.15388/LMITT.2024.11
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Keywords

YOLOv5
object detection
hyperparameters
constructions details

How to Cite

Kvietkauskas, T. (2024) “The Influence of YOLOv5 Hyperparameters for Construction Details Detection”, Vilnius University Open Series, pp. 76–84. doi:10.15388/LMITT.2024.11.

Abstract

Computer vision has become a fundamental area of interest in recent decades. Each area has unique data which object detection methods can analyse. However, it is important to find the most suitable parameters for the model that detects different object groups. In this research has been investigated the influence of pre-trained YOLOv5 (nano (n), small (s), medium (m), large (l), extralarge (x)) models, hyperparameters (learning rate, momentum, and weight decay) and different image augmentation (hsv_h, degrees, translate, flipud, mosaic, mixup, shear, perspective) efficiency for similar construction details detection. A newly collected dataset with twenty-two labelled categories of construction details was prepared. A total of 270 models were trained and evaluated. Every model was evaluated with 3,300 test images which backgrounds were mixed, neutral, and white backgrounds. The most accurate model was YOLOv5l with learning rate – 0.001, momentum – 0.950 and weight decay – 0.0001. This model achieved – 0.5015 (50.15%) accuracy.

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