Pan, Junting, McGuinness, Kevin ORCID: 0000-0003-1336-6477, Sayrol, Elisa, O'Connor, Noel E. ORCID: 0000-0002-4033-9135 and Giró-i-Nieto, Xavier ORCID: 0000-0002-9935-5332 (2016) Shallow and deep convolutional networks for saliency prediction. In: IEEE Conference on Computer Vision and Pattern Recognition (CVPR), 26 Jun 2016, Las Vegas, NV..
Abstract
The prediction of salient areas in images has been traditionally addressed with hand-crafted features based on neuroscience principles. This paper, however, addresses the problem with a completely data-driven approach by training a convolutional neural network (convnet). The learning process is formulated as a minimization of a loss function that measures the Euclidean distance of the predicted saliency map with the provided ground truth. The recent publication of large datasets of saliency prediction has provided enough data to train end-to-end architectures that are both fast and accurate. Two designs are proposed: a shallow convnet trained from scratch, and a another deeper solution whose first three layers are adapted from another network trained for classification. To the authors knowledge, these are the first end-to-end CNNs trained and tested for the purpose of saliency prediction.
Metadata
Item Type: | Conference or Workshop Item (Poster) |
---|---|
Event Type: | Conference |
Refereed: | Yes |
Uncontrolled Keywords: | computer vision; saliency prediction |
Subjects: | Computer Science > Machine learning Computer Science > Image processing |
DCU Faculties and Centres: | DCU Faculties and Schools > Faculty of Engineering and Computing > School of Electronic Engineering Research Institutes and Centres > INSIGHT Centre for Data Analytics |
Publisher: | IEEE |
Use License: | This item is licensed under a Creative Commons Attribution-NonCommercial-Share Alike 3.0 License. View License |
Funders: | Science Foundation Ireland SFI/12/RC/2289 |
ID Code: | 21206 |
Deposited On: | 22 Jun 2016 10:51 by Kevin Mcguinness . Last Modified 25 Jan 2019 09:35 |
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