4.6 Article

A Saliency Prediction Model Based on Re-Parameterization and Channel Attention Mechanism

Journal

ELECTRONICS
Volume 11, Issue 8, Pages -

Publisher

MDPI
DOI: 10.3390/electronics11081180

Keywords

visual attention; visual saliency; saliency prediction; deep learning; re-parameterization

Funding

  1. National Natural Science Foundation of China [62176268]
  2. Non-profit Central Research Institute Fund of the Chinese Academy of Medical Sciences [2020-JKCS-008]
  3. Major Science and Technology Project of Zhejiang Province Health Commission [WKJ-ZJ-2112]
  4. Fundamental Research Funds for the Central Universities [FRF-BD-20-11A]

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This study proposes a multilevel saliency prediction network that uses a combination of spatial and channel information to find possible high-level features, further improving the performance of a saliency model.
Deep saliency models can effectively imitate the attention mechanism of human vision, and they perform considerably better than classical models that rely on handcrafted features. However, deep models also require higher-level information, such as context or emotional content, to further approach human performance. Therefore, this study proposes a multilevel saliency prediction network that aims to use a combination of spatial and channel information to find possible high-level features, further improving the performance of a saliency model. Firstly, we use a VGG style network with an identity block as the primary network architecture. With the help of re-parameterization, we can obtain rich features similar to multiscale networks and effectively reduce computational cost. Secondly, a subnetwork with a channel attention mechanism is designed to find potential saliency regions and possible high-level semantic information in an image. Finally, image spatial features and a channel enhancement vector are combined after quantization to improve the overall performance of the model. Compared with classical models and other deep models, our model exhibits superior overall performance.

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