Classification of ceramic fabrics has long held a major role in archaeological pursuits. It helps answer research questions related to ceramic technology, provenance, and exchange and provides an overall deeper understanding of the ceramic material at hand. One of the most effective means of classification is through petrographic thin section analysis. However, ceramic petrography is a difficult and often tedious task that requires direct observation and sorting by domain experts. In this paper, a deep learning model is built to automatically recognize and classify ceramic fabrics, which expedites the process of classification and lessens the requirements on experts. The samples consist of images of petrographic thin sections under cross-po...
In this article, we consider a version of the challenging problem of learning from datasets whose si...
A feedforward neural network (NN) for archaeometric studies has been created to facilitate provenanc...
A key topic in the field of computer vision is image classification, which involves predicting one c...
International audienceThe ARCADIA project aims at using pattern recognition and machine learning to ...
International audienceArchaeological studies involve more and more numerical data analyses. In this ...
In Cultural Heritage inquiries, a common requirement is to establish time-based trends between archa...
Supplemental information for "Applications of Deep Learning to Decorated Ceramic Typology and Classi...
This paper describes a new system for digitizing ceramic fabric reference collections and a prelimin...
Accurate classification of pottery vessels is a key aspect in several archaeological inquiries, incl...
Field archeologists are called upon to identify potsherds, for which they rely on their professiona...
International audienceA large corpus of ceramic sherds dating from the High Middle Ages has been ext...
Abstract Deep learning is a powerful tool for exploring large datasets and discovering new patterns....
The approach combining image analysis techniques and artificial neural networks is proposed here for...
This paper describes how feature extraction on ancient pottery can be combined with recent developme...
In this article, we consider a version of the challenging problem of learning from datasets whose si...
A feedforward neural network (NN) for archaeometric studies has been created to facilitate provenanc...
A key topic in the field of computer vision is image classification, which involves predicting one c...
International audienceThe ARCADIA project aims at using pattern recognition and machine learning to ...
International audienceArchaeological studies involve more and more numerical data analyses. In this ...
In Cultural Heritage inquiries, a common requirement is to establish time-based trends between archa...
Supplemental information for "Applications of Deep Learning to Decorated Ceramic Typology and Classi...
This paper describes a new system for digitizing ceramic fabric reference collections and a prelimin...
Accurate classification of pottery vessels is a key aspect in several archaeological inquiries, incl...
Field archeologists are called upon to identify potsherds, for which they rely on their professiona...
International audienceA large corpus of ceramic sherds dating from the High Middle Ages has been ext...
Abstract Deep learning is a powerful tool for exploring large datasets and discovering new patterns....
The approach combining image analysis techniques and artificial neural networks is proposed here for...
This paper describes how feature extraction on ancient pottery can be combined with recent developme...
In this article, we consider a version of the challenging problem of learning from datasets whose si...
A feedforward neural network (NN) for archaeometric studies has been created to facilitate provenanc...
A key topic in the field of computer vision is image classification, which involves predicting one c...