Assessing the Impact of Fog on Autonomous Vehicle Perception Systems

Abstract

This study addresses the impact of adverse weather, specifically fog, on the perception systems of autonomous vehicles, which are critical for detecting and responding to traffic scenarios. Using over 10,000 images, an object recognition model was developed with Roboflow and YOLOv8, while fog disturbances were generated with GANs. The research simulates various traffic scenarios, comparing system performance under clear and foggy conditions. Results show that training models with a wider range of conditions enhances accuracy, highlighting the importance of diverse training for safe autonomous vehicle operation. This work offers insights for improving perception systems in autonomous vehicles.

Date
Nov 28, 2024
Location
Recife, PE - Brazil
Alexandre Ray
Alexandre Ray
Senior Data Scientist
Machine Learning Engineer
AI Engineer

My research interests include leadership, team science, and open science