Deep learning of robust representations for multi-instance and multi-label image classification
In multi-instance problems (MIL), an arbitrary number of instances is associated with a class label. Therefore, the labeling of training data becomes simpler (since it is done together, instead of individually) with the disadvantage that a weakly supervised database is produced [9]. In the PCRY, eac...
- Autores:
 - 
                   Silva, Jesús           
Varela Izquierdo, Noel
Mendoza Palechor, Fabio
Pineda, Omar
 
- Tipo de recurso:
 - http://purl.org/coar/resource_type/c_816b
 
- Fecha de publicación:
 - 2020
 
- Institución:
 - Corporación Universidad de la Costa
 
- Repositorio:
 - REDICUC - Repositorio CUC
 
- Idioma:
 -           eng          
 - OAI Identifier:
 - oai:repositorio.cuc.edu.co:11323/7257
 - Acceso en línea:
 -           https://hdl.handle.net/11323/7257
          
https://repositorio.cuc.edu.co/
 - Palabra clave:
 -           Deep learning          
Image classification
Multi-instance
Multi-label
 - Rights
 - closedAccess
 - License
 - Attribution-NonCommercial-NoDerivatives 4.0 International
 
| Summary: | In multi-instance problems (MIL), an arbitrary number of instances is associated with a class label. Therefore, the labeling of training data becomes simpler (since it is done together, instead of individually) with the disadvantage that a weakly supervised database is produced [9]. In the PCRY, each restaurant is represented by a set of images that share the attribute label(s) of that establishment. This paper explores the use of previously learned attribute extractors, trained in 3 different databases that are similar and complementary to the PCRY database | 
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