Learning feature representation of Iberian ceramics with automatic classification models

被引:19
|
作者
Navarro, Pablo [1 ,2 ]
Cintas, Celia [3 ]
Lucena, Manuel [4 ]
Manuel Fuertes, Jose [4 ]
Delrieux, Claudio [5 ,6 ]
Molinos, Manuel [7 ]
机构
[1] Consejo Nacl Invest Cient & Tecn, Ctr Nacl Patagon, Inst Patagon Ciencias Sociales & Humanas, Bv Almte Brown 2915, RA-9120 Puerto Madryn, Chubut, Argentina
[2] Univ Nacl Patagonia San Juan Bosco, Fac Ingn, Dept Informot DIT, Trelew Chubut, Argentina
[3] IBM Res Africa, Nairobi, Kenya
[4] Univ Jaen, Dept Comp Sci, Jaen, Spain
[5] Univ Nacl Sur, Dept Ingn Elect & Comp, Bahia Blanca, Buenos Aires, Argentina
[6] Consejo Nacl Invest Cient & Tecn, Bahia Blanca, Buenos Aires, Argentina
[7] Univ Jaen, Res Univ Inst Iberian Archaeol, Jaen, Spain
关键词
Representation learning; Iberian pottery; Deep learning; PROFILES; RECOGNITION;
D O I
10.1016/j.culher.2021.01.003
中图分类号
K85 [文物考古];
学科分类号
0601 ;
摘要
In Cultural Heritage inquiries, a common requirement is to establish time-based trends between archaeological artifacts belonging to different periods of a given culture, enabling among other things to determine chronological inferences with higher accuracy and precision. Among these, pottery vessels are significantly useful, given their relative abundance in most archaeological sites. However, this very abundance makes difficult and complex an accurate representation, since no two of these vessels are identical, and therefore classification criteria must be justified and applied. For this purpose, we propose the use of deep learning architectures to extract automatically learned features without prior knowledge or engineered features. By means of transfer learning, we retrained a Residual Neural Network with a binary image database of Iberian wheel-made pottery vessels' profiles. These vessels pertain to archaeological sites located in the upper valley of the Guadalquivir River (Spain). The resulting model can provide an accurate feature representation space, which can automatically classify profile images, achieving a mean accuracy of 0.96 with an f -measure of 0.96. This accuracy is remarkably higher than other state-of-the-art machine learning approaches, where several feature extraction techniques were applied together with multiple classifier models. These results provide novel strategies to current research in automatic feature representation and classification of different objects of study within the Archaeology domain. (c) 2021 Elsevier Masson SAS. All rights reserved.
引用
收藏
页码:65 / 73
页数:9
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