显著性视觉注意检测中多线索的自适应局部语境抑制

Yiqun Hu, D. Rajan, L. Chia
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引用次数: 40

摘要

视觉注意是通过确定低水平特征或注意线索(如强度、颜色等)的对比来获得的。我们提出了一种新的纹理注意线索,该线索被证明对显著物体区域和背景具有相似视觉特征的图像更有效。当前的视觉注意模型没有考虑局部上下文信息来突出注意区域。我们还提出了一种基于上下文信息的特征组合策略,该策略通过抑制显著性来有效地确定真正的注意区域。我们将我们的方法与其他视觉注意模型进行了比较,使用了一种新的平均辨别比测量方法。
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Adaptive local context suppression of multiple cues for salient visual attention detection
Visual attention is obtained through determination of contrasts of low level features or attention cues like intensity, color etc. We propose a new texture attention cue that is shown to be more effective for images where the salient object regions and background have similar visual characteristics. Current visual attention models do not consider local contextual information to highlight attention regions. We also propose a feature combination strategy by suppressing saliency based on context information that is effective in determining the true attention region. We compare our approach with other visual attention models using a novel average discrimination ratio measure.
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