라즈베리파이 기반 자율주행RC카의 딥러닝모델 비교 연구
A Comparative Study of Deep Learning Models for an Raspberry Pi based Autonomous RC Car
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초록

The Raspberry Pi, characterized by its low power consumption, affordability, and compact size, is highly suitable for developing embedded vehicular systems for autonomous driving research. Furthermore, its high compatibility with various sensors and communication modules enables flexible implementation of autonomous driving functionalities. In this study, a Raspberry Pi 4-based platform was utilized to compare steering angle prediction performance between the nVidia CNN model and the EfficientNet-Lite model. Autonomous driving was successfully achieved on a custom-built complex track without lane deviation. Additionally, by converting floating-point tensors to integers, the model maintained its performance while reducing computation time by up to one-tenth.

키워드

Autonomous drivingRaspberry Pi 4 Model BnVidia CNNEfficientNet-LiteRC Car
제목
라즈베리파이 기반 자율주행RC카의 딥러닝모델 비교 연구
제목 (타언어)
A Comparative Study of Deep Learning Models for an Raspberry Pi based Autonomous RC Car
저자
박영민
DOI
10.14372/IEMEK.2025.20.2.73
발행일
2025-04
저널명
대한임베디드공학회논문지
20
2
페이지
73 ~ 81