Efficient Object Detection of Marine Debris using Pruned YOLO Model
Journal:
arXiv
Published Date:
Jan 27, 2025
Abstract
Marine debris poses significant harm to marine life due to substances like
microplastics, polychlorinated biphenyls, and pesticides, which damage habitats
and poison organisms. Human-based solutions, such as diving, are increasingly
ineffective in addressing this issue. Autonomous underwater vehicles (AUVs) are
being developed for efficient sea garbage collection, with the choice of object
detection architecture being critical. This research employs the YOLOv4 model
for real-time detection of marine debris using the Trash-ICRA 19 dataset,
consisting of 7683 images at 480x320 pixels. Various modifications-pretrained
models, training from scratch, mosaic augmentation, layer freezing,
YOLOv4-tiny, and channel pruning-are compared to enhance architecture
efficiency. Channel pruning significantly improves detection speed, increasing
the base YOLOv4 frame rate from 15.19 FPS to 19.4 FPS, with only a 1.2% drop in
mean Average Precision, from 97.6% to 96.4%.