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Author (up) David Berga; Xose R. Fernandez-Vidal; Xavier Otazu; Xose M. Pardo edit   pdf
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Title SID4VAM: A Benchmark Dataset with Synthetic Images for Visual Attention Modeling Type Conference Article
Year 2019 Publication 18th IEEE International Conference on Computer Vision Abbreviated Journal  
Volume Issue Pages 8788-8797  
Keywords  
Abstract A benchmark of saliency models performance with a synthetic image dataset is provided. Model performance is evaluated through saliency metrics as well as the influence of model inspiration and consistency with human psychophysics. SID4VAM is composed of 230 synthetic images, with known salient regions. Images were generated with 15 distinct types of low-level features (e.g. orientation, brightness, color, size...) with a target-distractor popout type of synthetic patterns. We have used Free-Viewing and Visual Search task instructions and 7 feature contrasts for each feature category. Our study reveals that state-ofthe-art Deep Learning saliency models do not perform well with synthetic pattern images, instead, models with Spectral/Fourier inspiration outperform others in saliency metrics and are more consistent with human psychophysical experimentation. This study proposes a new way to evaluate saliency models in the forthcoming literature, accounting for synthetic images with uniquely low-level feature contexts, distinct from previous eye tracking image datasets.  
Address Seul; Corea; October 2019  
Corporate Author Thesis  
Publisher Place of Publication Editor  
Language Summary Language Original Title  
Series Editor Series Title Abbreviated Series Title  
Series Volume Series Issue Edition  
ISSN ISBN Medium  
Area Expedition Conference ICCV  
Notes NEUROBIT; 600.128;CIC Approved no  
Call Number Admin @ si @ BFO2019b Serial 3372  
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