The dataset used in the study consists of imagery capturing ship wake patterns. It is a manually curated dataset specifically created for the purpose of training and evaluating the wake component detection model. The dataset contains a collection of image chips, each focusing on a specific ship wake instance. The imagery in the dataset is acquired from satellite sensors, specifically on Sentinel-2 satellite imagery. Sentinel-2 provides multispectral data with high spatial resolution, allowing for detailed analysis of ship wake patterns. The dataset includes images captured on B8 spectral band, enabling the exploration of the wake detection model's performance under various spectral conditions. These images have been pre-processed (by scali...
This data set contains ship target images and associated metadata, generated from satellite multi-sp...
Notebook developed to demonstrate the use of deep neural networks for the detection of floating obje...
This dataset contains the data used in the notebook "Detecting floating objects using Deep Learning ...
A critical role in monitoring and understanding human activities at sea is held by the detection of ...
Maritime trade and trasport occupy a pivotal position in the current era of globalization. Thus, mon...
The automatic detection and characterization of ships in optical remote sensing images is a key chal...
The European Space Agency satellite Sentinel-2 provides multispectral images with pixel sizes down t...
On PORSEC 2016 a linear model for the detectability of ship signatures and besides also wake signatu...
This study elaborates on the detection of ship wake signatures on high resolution TerraSAR-X images....
Spaceborne synthetic aperture radar (SAR) represents a powerful source of data for enhancing maritim...
A fast and scalable approach to combine global satellite images with ship navigational messages In ...
The recognition of wakes generated by dark vessels is a tremendous and interesting challenge in the...
Automatic ship recognition is of interest in such problems as over- the-horizon surface surveillance...
International audienceSpaceborne synthetic aperture radar (SAR) can provide finely-resolved (meters-...
This data set contains ship target images and associated metadata, generated from satellite multi-sp...
Notebook developed to demonstrate the use of deep neural networks for the detection of floating obje...
This dataset contains the data used in the notebook "Detecting floating objects using Deep Learning ...
A critical role in monitoring and understanding human activities at sea is held by the detection of ...
Maritime trade and trasport occupy a pivotal position in the current era of globalization. Thus, mon...
The automatic detection and characterization of ships in optical remote sensing images is a key chal...
The European Space Agency satellite Sentinel-2 provides multispectral images with pixel sizes down t...
On PORSEC 2016 a linear model for the detectability of ship signatures and besides also wake signatu...
This study elaborates on the detection of ship wake signatures on high resolution TerraSAR-X images....
Spaceborne synthetic aperture radar (SAR) represents a powerful source of data for enhancing maritim...
A fast and scalable approach to combine global satellite images with ship navigational messages In ...
The recognition of wakes generated by dark vessels is a tremendous and interesting challenge in the...
Automatic ship recognition is of interest in such problems as over- the-horizon surface surveillance...
International audienceSpaceborne synthetic aperture radar (SAR) can provide finely-resolved (meters-...
This data set contains ship target images and associated metadata, generated from satellite multi-sp...
Notebook developed to demonstrate the use of deep neural networks for the detection of floating obje...
This dataset contains the data used in the notebook "Detecting floating objects using Deep Learning ...