Electrical Scheme Digitization Using Deep Learning Methods

stručni rad

stručni rad

Electrical Scheme Digitization Using Deep Learning Methods

Vrsta prilog sa skupa (u zborniku)
Tip stručni rad
Godina 2023
Nadređena publikacija MIPRO 2023 : 46th MIPRO ICT and Electronics Convention (MIPRO): Proceedings
Stranice str. 1754-1759
DOI 10.23919/mipro57284.2023.10159812
EISSN 2623-8764
Status objavljeno

Sažetak

The use of software tools and applications progressively became a standard in both education and industry. A solution for hand-drawn electrical scheme digitization has been proposed to match the fast-paced dynamic of the modern world in the field of electrical engineering. The aim is to notably reduce time-consuming and error-prone electrical scheme tracing from hand-drawn to simulating software. The means have been achieved through the usage of state-of-the-art deep learning model YOLOv5 for electrical elements detection along with Python and OpenCV library for data processing. The user’s input is an image of a hand-drawn circuit, and the end result is an LTspice digitized electrical scheme ready for simulation.

Ključne riječi

Deep learning; Electrical engineering; Industries; Object detection; Libraries; Integrated circuit modeling; Software tools