Sea-ice identification is an essential process for safety critical navigation support of surface vessels in polar waters. Semantic segmentation has drawn much attention as an enabling technique for fast detection of objects in a scene including sea-ice conditions. Identifying sea-ice is a challenging problem, especially in the presence of raindrops. The raindrop alters the boundaries of the objects in the scene, and thus, degrades the identification performance. In this work, a raindrop removing framework is developed to enhance the classification performance. Three deep-learning semantic segmentation networks are trained to classify the scene of sea-ice images into ice, water, ship, and sky. The deep-learning networks are VGG-16, fully con...
Knowledge on adversaries during military missions at sea heavily influences decision making, making ...
Among all natural disasters, flooding occurs frequently around the world, causing significant harm t...
This study evaluates the performance of convolutional neural networks for semantic segmentation of w...
Ship traffic in ice exposed areas is increasing, and ice navigation is largely a manual task. Despit...
Each Sentinel-1 image is tiled into patches of 256x256 pixels. The size of the images is different a...
Computer-aided scene analysis has drawn much attention, especially in autonomous navigation and adva...
Mapping sea ice in polar regions is crucial for research and operational applications, such as envir...
Vision-based semantic segmentation of waterbodies and nearby related objects provides important info...
This thesis presents a deep learning tool able to identify ice in radar images from the sea-ice envi...
Due to the growing volume of remote sensing data and the low latency required for safe marine naviga...
Unmanned surface vehicles (USVs) are receiving increasing attention in recent years from both academ...
This thesis develops two studies on deep learning-based autonomous navigation systems for marine an...
We explore new and existing convolutional neural network (CNN) architectures for sea ice classificat...
Sea ice classification is one of the important tasks of sea ice monitoring. Accurate extraction of s...
This repository contains a user-friendly, MATLAB Live Script to easily and automatically segment sea...
Knowledge on adversaries during military missions at sea heavily influences decision making, making ...
Among all natural disasters, flooding occurs frequently around the world, causing significant harm t...
This study evaluates the performance of convolutional neural networks for semantic segmentation of w...
Ship traffic in ice exposed areas is increasing, and ice navigation is largely a manual task. Despit...
Each Sentinel-1 image is tiled into patches of 256x256 pixels. The size of the images is different a...
Computer-aided scene analysis has drawn much attention, especially in autonomous navigation and adva...
Mapping sea ice in polar regions is crucial for research and operational applications, such as envir...
Vision-based semantic segmentation of waterbodies and nearby related objects provides important info...
This thesis presents a deep learning tool able to identify ice in radar images from the sea-ice envi...
Due to the growing volume of remote sensing data and the low latency required for safe marine naviga...
Unmanned surface vehicles (USVs) are receiving increasing attention in recent years from both academ...
This thesis develops two studies on deep learning-based autonomous navigation systems for marine an...
We explore new and existing convolutional neural network (CNN) architectures for sea ice classificat...
Sea ice classification is one of the important tasks of sea ice monitoring. Accurate extraction of s...
This repository contains a user-friendly, MATLAB Live Script to easily and automatically segment sea...
Knowledge on adversaries during military missions at sea heavily influences decision making, making ...
Among all natural disasters, flooding occurs frequently around the world, causing significant harm t...
This study evaluates the performance of convolutional neural networks for semantic segmentation of w...