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A Deep Multi-Level Network for Saliency Prediction

Cornia, Marcella
•
Baraldi, Lorenzo
•
SERRA, Giuseppe
•
Cucchiara, Rita
2017
  • conference object

Abstract
This paper presents a novel deep architecture for saliency prediction. Current state of the art models for saliency prediction employ Fully Convolutional networks that perform a non-linear combination of features extracted from the last convolutional layer to predict saliency maps. We propose an architecture which, instead, combines features extracted at different levels of a Convolutional Neural Network (CNN). Our model is composed of three main blocks: a feature extraction CNN, a feature encoding network, that weights low and high level feature maps, and a prior learning network. We compare our solution with state of the art saliency models on two public benchmarks datasets. Results show that our model outperforms under all evaluation metrics on the SALICON dataset, which is currently the largest public dataset for saliency prediction, and achieves competitive results on the MIT300 benchmark. Code is available at https://github.com/marcellacornia/mlnet. © 2016 IEEE.
This paper presents a novel deep architecture for saliency prediction. Current state of the art models for saliency prediction employ Fully Convolutional networks that perform a non-linear combination of features extracted from the last convolutional layer to predict saliency maps. We propose an architecture which, instead, combines features extracted at different levels of a Convolutional Neural Network (CNN). Our model is composed of three main blocks: a feature extraction CNN, a feature encoding network, that weights low and high level feature maps, and a prior learning network. We compare our solution with state of the art saliency models on two public benchmarks datasets. Results show that our model outperforms under all evaluation metrics on the SALICON dataset, which is currently the largest public dataset for saliency prediction, and achieves competitive results on the MIT300 benchmark.
DOI
10.1109/ICPR.2016.7900174
WOS
WOS:000406771303078
Archivio
http://hdl.handle.net/11390/1105593
info:eu-repo/semantics/altIdentifier/scopus/2-s2.0-85017036429
http://ieeexplore.ieee.org/document/7900174/
Diritti
metadata only access
Soggetti
  • Convolution, Feature ...

Scopus© citazioni
212
Data di acquisizione
Jun 2, 2022
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Visualizzazioni
2
Data di acquisizione
Apr 19, 2024
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