Researchers from the Computer Vision Center and the Landscape Archaeology Research Group (GIAP) of the Catalan Institute of Classical Archaeology (ICAC) have developed a hybrid algorithm that combines Deep Learning and Machine Learning to improve the automatic detection of archaeological tumuli avoiding the inclusion of most false positives.
Archaeological tumuli are one of the most common types of archaeological sites and can be found across the globe. This is perhaps why many studies have attempted to develop methods for their automated detection. Their characteristic tumular shape has been the primary feature for their identification on the field and in LiDAR-based topographic data, which usually takes the form of Digital Terrain Models (DTMs).
The simple shape of mounds or tumuli is ideal for their detection using deep learning approaches. Deep learning detectors usually require large quantities of training data (in the order of thousands of examples) to be able to produce significant results. However, the homogenously semi-hemispherical shape of tumuli, allows the training of usable detectors with a much lower quantity of training data, reducing considerably the effort required to obtain it and the significant computational resources necessary to train a convolutional neural network (CNN) detector.
This type of features, however, present an important drawback. Their common, simple, and regular shape is similar to many other non-archaeological features and therefore studies implementing methods for mound detection in LiDAR-derived DTMs and other high-resolution datasets are characterised by a very large presence of false positives (objects incorrectly identified as mounds).
During the initial research, the researchers from the GIAP group of the Catalan Institute of Classical Archaeology, Iban Berganzo and Hèctor A. Orengo, located almost 9000 tumuli in Galicia. However, not all of these were actual tumuli as the automated detection results also included false positives. After initial data validation was performed in collaboration with Dr. Miguel Carrero (University College London & University of Santiago de Compostela, GEPN-AAT), Dr. João Fonte (University of Exeter) and Dr. Benito Vilas (University of Vigo) they realised that from the ca. 9000 detected objects only ca. 7600 corresponded to real archaeological mounds. Although, this was an excellent result, well below the percentage of false positives presented by similar studies, they thought they could improve the detection rate while decreasing the number of false positives.
For this reason, during the summer, GIAP researchers in collaboration with CVC researcher Dr. Felipe Lumbreras developed a new approach to reduce the number of false positives while increasing the detection rate. After analysing the nature of the detected false positives, they developed a hybrid approach that mixes classical machine learning and deep learning. The objective was to obtain a more precise definition of archaeological tumuli in which not just the shape but also the multispectral characteristics of the objects will be considered when looking for tumuli.
The fist results have been published at the Remote Sensing journal. In this article, researchers give more information on the data analyzed and the performance of this innovative computer-based automatic detection initiative.
The results that this new approach has produced are nothing less than spectacular:
- The area covered is the largest (to the extent of our knowledge) in which archaeological DL approaches have ever been applied and it covers almost 30,000 km2
- 10,527 objects have been detected of which approximately 9,422 correspond to archaeological tumuli (after careful visual validation with high resolution imagery and pending ground validation). That is, a 89.5% of the detected tumuli correspond to true positives.
- We have only employed open source data in this research. However, the use of higher resolution data, in particular higher resolution satellite imagery instead of the Sentinel 2 (10m/px) images employed, would radically decrease the number of false positives reaching a success rate above 97%.
- Code, sources and results (including validation) are freely available and the code is designed to be used in freely accessible cloud computing platforms Google Colaboratory and Earth Engine) so the lack of computational resources will not pose a problem for its application to other study areas (even very large ones).
This approach provides a way forward for the detection of tumuli avoiding the inclusion of most false positives. The algorithm can be applied in areas of the world where topographic data of enough resolution are available. Providing specific training data, this hybrid approach can also be used to detect other types of features where large number of false positives area an issue.
Link to the paper: https://www.mdpi.com/2072-4292/13/20/4181
This research has received funding from multiple sources, that we would like to acknowledge here: Iban Berganzo’s PhD is funded with an Ayuda a Equipos de Investigación Científica of the Fundación BBVA for the Project DIASur. Hector A. Orengo is a Ramón y Cajal Fellow (RYC-2016-19637) of the Spanish Ministry of Science, Innovation and Universities. Felipe Lumbreras work is supported in part by the Spanish Ministry of Science and Innovation project BOSSS TIN2017-89723-P. Miguel Carrero and João Fonte are Marie Skłodowska-Curie Fellows (Grant Agreements 886793 and 794048 respectively). Some of the GPUs used in these experiments are a donation of Nvidia Hardware Grant Programme.