Mnasri et al., 2025 - Google Patents
Automatic inventory of archaeological artifacts based on object detection and classification using deep and transfer learningMnasri et al., 2025
View HTML- Document ID
- 18117619619898058361
- Author
- Mnasri Z
- D’Andrea A
- Publication year
- Publication venue
- Digital Applications in Archaeology and Cultural Heritage
External Links
Snippet
The inventory of a large collection of archaeological artifacts can be a tedious and time- consuming task. However, nowadays it is possible to reduce its complexity through the use of artificial intelligence tools, including object detection and classification. Deep learning is …
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