压缩HEVC域的视觉显著性检测算法

Rui Bai, Wei Zhou, Guanwen Zhang, Henglu Wei
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引用次数: 4

摘要

显著性检测已被广泛用于预测人类注视。本文提出了一种压缩HEVC域的视觉显著性检测算法,该算法由静态显著性检测、动态显著性检测和竞争融合三部分组成。首先,利用高斯模型对下采样和DCT提取的静态特征进行背景滤波;其次,用运动向量表示动态特征;然后通过滤除动态特征的背景来计算动态显著性。最后,采用竞争融合模型对静态显著性图和动态显著性图的特征进行自适应融合。实验结果表明,该方法的AUC值平均提高0.05,KL散度平均降低0.17,优于经典的显著性检测方法。一帧检测的平均时间为2.3秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Saliency Detection Algorithm in Compressed HEVC Domain
Saliency detection has been widely used to predict human fixation. In this paper, a Visual Saliency Detection Algorithm in Compressed HEVC Domain is proposed which consists of three parts: static saliency detection, dynamic saliency detection and competitive fusion. Firstly, the Gauss model is used to filter out the background of the static features which are extracted by down-sampling and DCT. Secondly, the motion vectors are used to represent the dynamic feature. Then the dynamic saliency is calculated by filtering out the background of dynamic feature. Finally, the competitive fusion model is used to adaptively combine the characteristic of static and dynamic saliency maps. Experimental results show that the proposed method is superior to classic state-of-the-art saliency detection methods with 0.05 AUC value increasing and 0.17 KL divergence decreasing on average. The average time of one frame detection is 2.3 seconds.
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