Training sets of images for object recognition are the pillars on which classiers base their performances. We have built a framework to support the entire process of image and textual retrieval from search engines such that, giving an input keyword, calculate the statistical analysis, the semantic analysis and automatically build a training set. We have focused our attention on textual information and we have explored, with several experiments, three dierent approaches to automatically discriminate between positive and negative images: keyword position, tag frequency and semantic analysis. We present the best results for each approach.

Semantic-Analysis Object Recognition: Automatic Training Set Generation Using Textual Tags / Sami, Abduljalil Abdulhak; Walter, Riviera; Zeni, Nicola; Ferrario, Roberta; Matteo, Cristani; Cristani, Marco. - STAMPA. - 8926:(2015), pp. 309-322. (Intervento presentato al convegno CONTACT 2014 tenutosi a Zurigo nel 07/09/2014) [10.1007/978-3-319-16181-5_22].

Semantic-Analysis Object Recognition: Automatic Training Set Generation Using Textual Tags

Zeni, Nicola;Ferrario, Roberta;Matteo, Cristani;Cristani, Marco
2015-01-01

Abstract

Training sets of images for object recognition are the pillars on which classiers base their performances. We have built a framework to support the entire process of image and textual retrieval from search engines such that, giving an input keyword, calculate the statistical analysis, the semantic analysis and automatically build a training set. We have focused our attention on textual information and we have explored, with several experiments, three dierent approaches to automatically discriminate between positive and negative images: keyword position, tag frequency and semantic analysis. We present the best results for each approach.
2015
Computer Vision – ECCV 2014 Workshops
Berlin; Heidelberg
Springer-Verlag
978-3-319-16180-8
Sami, Abduljalil Abdulhak; Walter, Riviera; Zeni, Nicola; Ferrario, Roberta; Matteo, Cristani; Cristani, Marco
Semantic-Analysis Object Recognition: Automatic Training Set Generation Using Textual Tags / Sami, Abduljalil Abdulhak; Walter, Riviera; Zeni, Nicola; Ferrario, Roberta; Matteo, Cristani; Cristani, Marco. - STAMPA. - 8926:(2015), pp. 309-322. (Intervento presentato al convegno CONTACT 2014 tenutosi a Zurigo nel 07/09/2014) [10.1007/978-3-319-16181-5_22].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/98652
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