Ocean Exploration with Artificial Intelligence
Abstract
Large and diverse data is crucial to train object detection systems properly and
achieve satisfactory prediction performance. However, in some areas, such as ma rine science, gathering sufficient data is challenging and sometimes even infeasible.
Working with limited data can result in overfitting and poor performance. Further more, underwater images suffer from various problems, like varying quality, which
have to be considered. Therefore, alternative means need to be used to increase and
enhance the data to facilitate marine scientists’ work.
In this thesis, we explore building a more robust system to improve the detec tion accuracy for deepwater corals and analyze underwater movies under different
conditions. We experiment with several Generative Adversarial Networks (GANs)
to enhance and increase the training data. Our final system comprises two steps:
Image Augmentation using StyleGAN2 combined with the augmentation strategy
DiffAugment, and Object Detection using YOLOv4.
The results indicate that generating realistic synthetic data combined with an ad vanced detector could provide marine scientists with the tool they need to extract
species occurrence information from underwater movies. Our proposed system shows
increased performance in different domains compared to prior work and the potential
to overcome the limited data issue.
Degree
Student essay
Collections
View/ Open
Date
2021-07-06Author
Al-Khateeb, Sarah
Bodlak, Lisa
Keywords
computer science
deep learning
generative adversarial networks
data augmentation
object detection
underwater image
computer vision
Language
eng