Pre-Publicación
Deep learning of robust representations for multi-instance and multi-label image classification
Registro en:
2194-5357
Corporación Universidad de la Costa
REDICUC - Repositorio CUC
Autor
Silva, Jesús
Varela Izquierdo, Noel
Mendoza Palechor, Fabio
Pineda, Omar
Institución
Resumen
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