Paper Title
Uav-Based Coastal Debris Detection: Analyzing The Effectiveness Of Enhanced Yolo V8 For Improved Aerial Surveillance
Abstract
In the face of the pressing issue of pollution in our oceans, whereas staggering 8 million tons of plastic finds its
way into the water each year resulting in a mind-boggling 5.25 trillion pieces of waste, our study presents an innovative
method for detecting and identifying shoreline and waterborne garbage. This method is crucial for addressing the problem
that sees 70% of debris sink into the marine ecosystem while 15% floats and another 15% ends up on beaches. By utilizing
machine learning techniques and unmanned aerial vehicle (UAV) technology, our approach significantly improves both
accuracy and speed in detecting garbage. We conducted an evaluation using configurations of the YOLOv8 model along
with a specialized dataset captured by UAVs incorporating custom augmentation techniques. Our results demonstrate how
this model excels at identifying types of garbage. This groundbreaking research not only advances object detection
technology for conservation but also emphasizes the importance of cutting-edge solutions in mitigating the profound impact
that plastic pollution has on marine ecosystems.
Keywords - YOLOv8, Wise-IoU Modification, UAV Data Analysis, Dataset Augmentation Techniques, Custom
Hyperparameters, Object Detection