Bio-Inspired Representation Learning for Visual Attention Prediction
Yuan Yuan, Hailong Ning, and Xiaoqiang Lu

TL;DR
This paper introduces a novel bio-inspired representation learning approach for visual attention prediction that combines low-level contrast and high-level semantic features to improve attention map accuracy.
Contribution
The paper proposes a new method integrating bio-inspired low-level and high-level features using a densely connected network for enhanced visual attention prediction.
Findings
Effective in generating accurate attention maps
Outperforms existing deep learning methods
Validated through extensive experiments
Abstract
Visual Attention Prediction (VAP) is a significant and imperative issue in the field of computer vision. Most of existing VAP methods are based on deep learning. However, they do not fully take advantage of the low-level contrast features while generating the visual attention map. In this paper, a novel VAP method is proposed to generate visual attention map via bio-inspired representation learning. The bio-inspired representation learning combines both low-level contrast and high-level semantic features simultaneously, which are developed by the fact that human eye is sensitive to the patches with high contrast and objects with high semantics. The proposed method is composed of three main steps: 1) feature extraction, 2) bio-inspired representation learning and 3) visual attention map generation. Firstly, the high-level semantic feature is extracted from the refined VGG16, while the…
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