Advancing autonomous navigation: YOLO-based road obstacle detection and segmentation for Bangladeshi environments
Abstract
The advancement of autonomous vehicles requires a fast and effective object detection
and segmentation system handling a wide range of road environments. The goal
of this research is to improve autonomous navigation by applying fast and popular
YOLO-based models for road obstacle detection and segmentation in South Asian
countries, especially Bangladesh. Our team has compiled an extensive collection of
videos taken on Bangladeshi streets using a smartphone camera that shows a variety
of road conditions such as potholes, speed bumps, barricades, and normal roads
taking into account rainy, sunny, day and night environments. By using Roboflow
annotation and sampling tools, these videos were sampled into images and annotated
with both bounding boxes and bounding masks.
Using our custom annotated dataset, we trained and refined YOLO-based object
detection and segmentation models such as YOLOv5, YOLOv7, and YOLOv8. The
YOLOv5x model trained on our custom dataset shows better results with the highest
mAP50 and mAP50-95 scores of 0.876 and 0.647 respectively. However, the
YOLOv7x model trained on our custom dataset gives the lowest performance outcome
with mAP50 and mAP50-95 scores of 0.583 and 0.331. Also, while comparing
the models trained with custom dataset with models trained with a benchmark
dataset, our dataset shows major improvements in results. We deployed the models
on our local computer to allow real-time object detection with a camera, upon which
our prototype car can take decisions using a microprocessor. This implementation
reflects the feasibility of effective object detection and segmentation with limited
resources.
This research intends to optimize autonomous vehicle navigation in Bangladeshi
road environments quickly and effectively. The outcomes of our experiments suggest
that our approach offers a viable way to improve the security and efficiency of
autonomous navigation in these kinds of settings. By addressing the unique challenges
with road infrastructure in developing nations, our research advances the area
of autonomous driving and creates opportunities for more customized and adaptive
navigation systems.