While remote sensing data have long been widely used in archaeological prospection over large areas, the task of examining such data is time consuming and requires experienced and specialist analysts. However, recent technological advances in the field of artificial intelligence (AI), and in particular deep learning methods, open possibilities for the automated analysis of large areas of remote sensing data. This paper examines the applicability and potential of supervised deep learning methods for the detection and mapping of different kinds of archaeological sites comprising features such as walls and linear or curvilinear structures of different dimensions, spectral and geometrical properties. Our work deliberately uses open-source image...
Archaeological research is increasingly embedding individual sites in archaeological contexts and ai...
Mapping surface ceramics through systematic pedestrian archaeological survey is considered a consist...
This paper illustrates the results obtained by using pre-trained semantic segmentation deep learning...
Deep learning for automated detection of archaeological sites (objects) on remote sensing data is a ...
The documentation and protection of archaeological and cultural heritage (ACH) using remote sensing,...
Machine Learning-based workflows are being progressively used for the automatic detection of archaeo...
Remote sensing instruments are changing the nature of archaeological work. No longer are archaeologi...
In recent years, Deep Learning has proven to be an outstanding tool in the field of computer vision ...
Although the history of automated archaeological object detection in remotely sensed data is short, ...
We have tried to provide an answer to the question whether a collection of satellite images, with no...
International audienceUntil recently, archeological prospection using LiDAR data was based mainly on...
The manual analysis of remotely-sensed data is a widespread practice in local and regional scale arc...
Creating a quantitative overview over the early Iron Age heritage of the Eurasian steppes is a diffi...
The preservation and discoveries of ancient structures is an integral part in the understanding of e...
Abstract Deep learning is a powerful tool for exploring large datasets and discovering new patterns....
Archaeological research is increasingly embedding individual sites in archaeological contexts and ai...
Mapping surface ceramics through systematic pedestrian archaeological survey is considered a consist...
This paper illustrates the results obtained by using pre-trained semantic segmentation deep learning...
Deep learning for automated detection of archaeological sites (objects) on remote sensing data is a ...
The documentation and protection of archaeological and cultural heritage (ACH) using remote sensing,...
Machine Learning-based workflows are being progressively used for the automatic detection of archaeo...
Remote sensing instruments are changing the nature of archaeological work. No longer are archaeologi...
In recent years, Deep Learning has proven to be an outstanding tool in the field of computer vision ...
Although the history of automated archaeological object detection in remotely sensed data is short, ...
We have tried to provide an answer to the question whether a collection of satellite images, with no...
International audienceUntil recently, archeological prospection using LiDAR data was based mainly on...
The manual analysis of remotely-sensed data is a widespread practice in local and regional scale arc...
Creating a quantitative overview over the early Iron Age heritage of the Eurasian steppes is a diffi...
The preservation and discoveries of ancient structures is an integral part in the understanding of e...
Abstract Deep learning is a powerful tool for exploring large datasets and discovering new patterns....
Archaeological research is increasingly embedding individual sites in archaeological contexts and ai...
Mapping surface ceramics through systematic pedestrian archaeological survey is considered a consist...
This paper illustrates the results obtained by using pre-trained semantic segmentation deep learning...