YOLOv5 Model
YOLOv5, and its subsequent iterations (YOLOv7, YOLOv8, YOLOv9, YOLOv10), are a family of real-time object detection models designed for speed and accuracy. Current research focuses on improving these models' performance through architectural innovations like enhanced feature extraction networks (e.g., GELAN, FasterNet), optimized loss functions (e.g., EIoU), and techniques to handle small or occluded objects. These advancements have significant implications for various applications, including autonomous driving, healthcare (e.g., fall detection, fracture detection), agriculture (e.g., fruit counting), and industrial automation, enabling faster and more accurate object detection in real-world scenarios.
Papers
PACMAN: a framework for pulse oximeter digit detection and reading in a low-resource setting
Chiraphat Boonnag, Wanumaidah Saengmolee, Narongrid Seesawad, Amrest Chinkamol, Saendee Rattanasomrerk, Kanyakorn Veerakanjana, Kamonwan Thanontip, Warissara Limpornchitwilai, Piyalitt Ittichaiwong, Theerawit Wilaiprasitporn
Image-Based Fire Detection in Industrial Environments with YOLOv4
Otto Zell, Joel Pålsson, Kevin Hernandez-Diaz, Fernando Alonso-Fernandez, Felix Nilsson