基于全局中心-环绕机制的信息发散显著性检测

Ibrahim M. H. Rahman, C. Hollitt, Mengjie Zhang
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引用次数: 2

摘要

本文提出了一种新的显著性检测技术——全局信息发散。该技术基于两个区域之间信息的多样性。首先从输入图像中提取多尺度的补丁。接下来是使用主成分分析降低提取的斑块的维数。然后评估降维补丁之间的信息散度,并计算中心和周围区域之间的信息散度。我们的技术使用全局方法来共同定义中心补丁和周围补丁。该技术在四个竞争性和复杂的数据集上进行了显著性检测和分割测试。与16种最先进的技术相比,所获得的结果在显著性图的质量和速度方面表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Information Divergence Based Saliency Detection with a Global Center-Surround Mechanism
In this paper a novel technique for saliency detection called Global Information Divergence is proposed. The technique is based on the diversity in information between two regions. Initially patches are extracted at multi-scales from the input images. This is followed by reducing the dimensionality of the extracted patches using Principal Component Analysis. After that the information divergence is evaluated between the reduced dimensionality patches, and calculated between a center and a surround region. Our technique uses a global method for defining the center patch and the surround patches collectively. The technique is tested on four competitive and complex datasets both for saliency detection and segmentation. The results obtained show a good performance in terms of quality of the saliency maps and speed compared with 16 state-of-the-art techniques.
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