Reference:
A. Đuraš,
B.J. Wolf,
A. Ilioudi,
I. Palunko, and
B. De Schutter,
"A dataset for detection and segmentation of underwater marine debris
in shallow waters," Scientific Data, vol. 11, p. 921, 2024.
Abstract:
Robust object detection is crucial for automating underwater marine
debris collection. While supervised deep learning achieves
state-of-the-art performance in discriminative tasks, replicating this
success on underwater data is challenging. The generalization of these
methods suffers due to a lack of available annotated data considering
different sources of variation in the unstructured underwater
environment and imaging conditions. In this paper, we present the
Seaclear Marine Debris Dataset, the first publicly available
shallow-water marine debris dataset annotated for instance
segmentation/object detection. The dataset contains 8610 images
collected using ROVs at multiple locations and with different cameras,
annotated for 40 object categories, encompassing not only litter but
also observed animals, plants, and robot parts. As part of the
technical validation, we provide baseline results for object detection
using Faster RCNN and YOLOv6 models. Furthermore, we demonstrate the
non-triviality of generalizing the trained model performance to unseen
sites and cameras due to domain shift. This underscores the value of
the presented dataset in further developing robust models for
underwater debris detection.