Context-based hierarchical saliency detection for mobile hotspot

Sirimamayvadee Siratanita, K. Chamnongthai
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Abstract

Embedded hotspot applications, especially advertisements, supporting by 3/4G technology are now rising rapidly. Defining hotspot by finding attention region using saliency is one of interesting. In this paper, we proposed context-based hierarchical saliency feature detection. To construct saliency map, two main features are considered as the context, local and global features. The areas that have distinctive color which obtains high saliency, and blurred areas which give low saliency are considered as local. Moreover, the frequency-occurring information is consider as background which is pressed is considered as global. In experiments, our proposed method comparing with conventional hierarchical saliency framework shows high the recall and F-measure value.
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基于上下文的移动热点分层显著性检测
以3/4G技术为支撑的嵌入式热点应用,尤其是广告应用正在迅速崛起。利用显著性寻找注意区域来定义热点是一种有趣的方法。本文提出了基于上下文的层次显著性特征检测方法。为了构建显著性图,考虑了两个主要特征作为上下文,局部特征和全局特征。具有鲜明颜色的区域具有较高的显著性,模糊的区域具有较低的显著性,被认为是局部的。此外,频率发生的信息被认为是背景,被压制的信息被认为是全局的。在实验中,与传统的层次显著性框架相比,我们提出的方法具有较高的召回率和f测量值。
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