Robust maritime obstacle detection is critical for safe navigation of autonomous boats and timely collision avoidance. The current state-of-the-art is based on deep segmentation networks trained on large datasets. However, per-pixel ground truth labeling of such datasets is labor-intensive and expensive. We propose a new scaffolding learning regime (SLR) that leverages weak annotations consisting of water edges, the horizon location, and obstacle bounding boxes to train segmentation-based obstacle detection networks, thereby reducing the required ground truth labeling effort by a factor of twenty. SLR trains an initial model from weak annotations and then alternates between re-estimating the segmentation pseudo-labels and improving the netw...
Waterline detection in images captured from a moving camera mounted on an autonomous boat is a compl...
This paper presents two novel approaches for improving image-based underwater obstacle detection by ...
In this article, we present the first large-scale data set for underwater ship lifecycle inspection...
Robust maritime obstacle detection is critical for safe navigation of autonomous boats and timely co...
Unmanned surface vehicles (USVs) are receiving increasing attention in recent years from both acade...
Robust maritime obstacle detection is essential for fully autonomous unmanned surface vehicles (USVs...
This paper introduces a novel deep learning approach to semantic segmentation of the shoreline envir...
This paper introduces a novel deep learning approach to semantic segmentation of the shoreline envir...
Machine learning and specifically deep learning techniques address many of the issues faced in visua...
Visual-based obstacle detection from an autonomous surface vessel (ASV) is a complex task due to hi...
Accurate detection of sea-surface objects is vital for the safe navigation of autonomous ships. With...
The United States coastline spans 95,471 miles; a distance that cannot be effectively patrolled or s...
In this article we present the state of the art in the field of autonomous surface ship navigation u...
Due to significant advances in robotics and transportation, research on autonomous ships has attrac...
In the last decade, the autonomous vehicle has been investigated by both academia and industry. One ...
Waterline detection in images captured from a moving camera mounted on an autonomous boat is a compl...
This paper presents two novel approaches for improving image-based underwater obstacle detection by ...
In this article, we present the first large-scale data set for underwater ship lifecycle inspection...
Robust maritime obstacle detection is critical for safe navigation of autonomous boats and timely co...
Unmanned surface vehicles (USVs) are receiving increasing attention in recent years from both acade...
Robust maritime obstacle detection is essential for fully autonomous unmanned surface vehicles (USVs...
This paper introduces a novel deep learning approach to semantic segmentation of the shoreline envir...
This paper introduces a novel deep learning approach to semantic segmentation of the shoreline envir...
Machine learning and specifically deep learning techniques address many of the issues faced in visua...
Visual-based obstacle detection from an autonomous surface vessel (ASV) is a complex task due to hi...
Accurate detection of sea-surface objects is vital for the safe navigation of autonomous ships. With...
The United States coastline spans 95,471 miles; a distance that cannot be effectively patrolled or s...
In this article we present the state of the art in the field of autonomous surface ship navigation u...
Due to significant advances in robotics and transportation, research on autonomous ships has attrac...
In the last decade, the autonomous vehicle has been investigated by both academia and industry. One ...
Waterline detection in images captured from a moving camera mounted on an autonomous boat is a compl...
This paper presents two novel approaches for improving image-based underwater obstacle detection by ...
In this article, we present the first large-scale data set for underwater ship lifecycle inspection...