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Salient region detection through salient and non-salient dictionaries

机译:通过显着和非显着词典检测显着区域

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摘要

Low-rank representation-based frameworks are becoming popular for the saliency and the object detection because of their easiness and simplicity. These frameworks only need global features to extract the salient objects while the local features are compromised. To deal with this issue, we regularize the low-rank representation through a local graph-regularization and a maximum mean-discrepancy regularization terms. Firstly, we introduce a novel feature space that is extracted by combining the four feature spaces like CIELab, RGB, HOG and LBP. Secondly, we combine a boundary metric, a candidate objectness metric and a candidate distance metric to compute the low-level saliency map. Thirdly, we extract salient and non-salient dictionaries from the low-level saliency. Finally, we regularize the low-rank representation through the Laplacian regularization term that saves the structural and geometrical features and using the mean discrepancy term that reduces the distribution divergence and connections among similar regions. The proposed model is tested against seven latest salient region detection methods using the precision-recall curve, receiver operating characteristics curve, F-measure and mean absolute error. The proposed model remains persistent in all the tests and outperformed against the selected models with higher precision value.
机译:基于低秩表示的框架由于其易用性和简单性,在显着性和对象检测方面正变得越来越流行。这些框架仅需要全局特征来提取显着对象,而局部特征会受到损害。为了解决此问题,我们通过局部图正则化和最大均值差异正则化项对低秩表示进行正则化。首先,我们介绍一种新颖的特征空间,该特征空间是通过组合四个特征空间(如CIELab,RGB,HOG和LBP)提取的。其次,我们结合边界度量,候选对象度量和候选距离度量来计算低级显着性图。第三,我们从低显着性中提取显着和非显着词典。最后,我们通过保存结构和几何特征的拉普拉斯正则项对低秩表示进行正则化,并使用平均差异项来减少相似区域之间的分布差异和联系。使用精确召回曲线,接收器工作特性曲线,F测度和平均绝对误差,针对七种最新的显着区域检测方法对提出的模型进行了测试。所提出的模型在所有测试中均保持不变,并以较高的精度值胜过所选模型。

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