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Bottom-Up Saliency Prediction by Simulating End-Stopping with Log-Gabor

机译:通过使用Log-Gabor模拟结束停止来进行自下而上的显着性预测

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This paper presents a bottom-up saliency model inspired by end-stopping mechanism in primary visual cortex (Ⅵ). By modelling an end-stopped cell as multiplication of the outputs from two different orientations tuned selective neurons, corners, line intersections, and line endings, which are called end-stopping features in this paper, are extracted and integrated to indicate saliency cues. The proposed model is constructed as follow: firstly we utilize log-Gabor filters to represent orientation selectivity in Ⅵ neurons; then energy maps of the log-Gabor response from two different orientations are multiplied to extract median features perceived by end-stopped cells; finally the resulting feature maps are combined with color features computed by the traditional center-surround operation to obtain the final saliency map. Results on public eye tracking datasets show the proposed model achieves state-of-the-art performance compared to other models.
机译:本文提出了自下而上的显着性模型,该模型受初级视觉皮层(Ⅵ)的末端停止机制的启发。通过将终极停止单元建模为两个不同方向的输出的乘积,可调谐选择性神经元,拐角,直线相交和直线终点(在本文中称为终极停止特征),并将其进行提取和集成以指示显着性提示。该模型的建立如下:首先,我们利用log-Gabor滤波器表示Ⅵ神经元的方向选择性。然后将来自两个不同方向的log-Gabor响应的能量图相乘,以提取末端终止细胞感知到的中值特征;最后,将得到的特征图与传统的中心环绕操作所计算出的颜色特征相结合,以获得最终的显着图。公众眼动追踪数据集的结果表明,与其他模型相比,该模型具有最先进的性能。

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