The Common Objects Underwater (COU) Dataset for Robust Underwater Object Detection
Journal:
arXiv
Published Date:
Feb 28, 2025
Abstract
We introduce COU: Common Objects Underwater, an instance-segmented image
dataset of commonly found man-made objects in multiple aquatic and marine
environments. COU contains approximately 10K segmented images, annotated from
images collected during a number of underwater robot field trials in diverse
locations. COU has been created to address the lack of datasets with robust
class coverage curated for underwater instance segmentation, which is
particularly useful for training light-weight, real-time capable detectors for
Autonomous Underwater Vehicles (AUVs). In addition, COU addresses the lack of
diversity in object classes since the commonly available underwater image
datasets focus only on marine life. Currently, COU contains images from both
closed-water (pool) and open-water (lakes and oceans) environments, of 24
different classes of objects including marine debris, dive tools, and AUVs. To
assess the efficacy of COU in training underwater object detectors, we use
three state-of-the-art models to evaluate its performance and accuracy, using a
combination of standard accuracy and efficiency metrics. The improved
performance of COU-trained detectors over those solely trained on terrestrial
data demonstrates the clear advantage of training with annotated underwater
images. We make COU available for broad use under open-source licenses.