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Spatio-Temporal Saliency Networks for Dynamic Saliency Prediction

About

Computational saliency models for still images have gained significant popularity in recent years. Saliency prediction from videos, on the other hand, has received relatively little interest from the community. Motivated by this, in this work, we study the use of deep learning for dynamic saliency prediction and propose the so-called spatio-temporal saliency networks. The key to our models is the architecture of two-stream networks where we investigate different fusion mechanisms to integrate spatial and temporal information. We evaluate our models on the DIEM and UCF-Sports datasets and present highly competitive results against the existing state-of-the-art models. We also carry out some experiments on a number of still images from the MIT300 dataset by exploiting the optical flow maps predicted from these images. Our results show that considering inherent motion information in this way can be helpful for static saliency estimation.

Cagdas Bak, Aysun Kocak, Erkut Erdem, Aykut Erdem• 2016

Related benchmarks

TaskDatasetResultRank
Video saliency predictionDHF1K (test)
AUC-J0.834
89
Video saliency predictionHollywood-2 (test)
SIM0.276
83
Video saliency predictionUCF Sports (test)
SIM0.264
71
Saliency PredictionDIEM (test)
SIM0.256
28
Saliency PredictionDHF1K
Model Size (MB)315
12
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