基于低层次特征多尺度局部对比的视觉注意模型

Jie Zhang, Jiande Sun, Ju Liu, Caixia Yang, Hua Yan
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引用次数: 5

摘要

由于显著区域检测在图像表示和理解方面的重要应用,它变得越来越重要。突出区域的准确检测可以降低图像处理的复杂度,提高图像处理的效率。本文提出了一种基于低层次特征多尺度局部对比的视觉注意模型。该模型采用多尺度变换获得不同尺度的原始图像,并在每个尺度上计算灰度、纹理和颜色的局部对比特征。然后对这些对比特征进行迭代插值,形成分别对应强度、纹理和颜色的三个特征映射。最后,对特征映射进行整合,得到最终的显著区域。在实验中,使用了一个成熟的眼动追踪系统,并验证了该模型检测到的显著区域与人类视觉一致。此外,与已有的两种模型相比,本文提出的模型也表现出更好的性能。
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Visual attention model based on multi-scale local contrast of low-level features
Salient regions detection is becoming more and more important due to its useful application in image representation and understanding. The accurate detection of salient regions can reduce the complexity and improve the efficiency of image processing. In this paper, a visual attention model based on multi-scale local contrast of low level features is proposed. In the proposed model, a multi-scale transform is used to obtain the original image at different scales, and the local contrast features of intensity, texture and color are calculated at each scale. Then these contrast features are interpolated iteratively to form three feature maps corresponding to intensity, texture and color respectively. Finally, the feature maps are integrated to obtain the final salient regions. In the experiment, a proven eye tracking system is used and verifies the salient region detected by the proposed model consistent with human vision. Furthermore, comparing with another two existing models, the proposed model also shows better performance.
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