一种基于颜色对比度的显著区域检测自适应计算方法

Xin Xu, Weiwei Wu
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引用次数: 0

摘要

本文提出了一种结合LAB和RGB特征空间,融合颜色特征和对比度特征的自适应显著区域检测方法。该算法首先提取LAB空间中每个图像块的颜色特征和RGB空间中的对比度特征,然后利用主成分分析(PCA)方法将颜色特征显著性图和对比度特征显著性图进行融合,有效保留颜色和对比度的显著性信息,最后通过设置自适应阈值提取显著性区域。与其他检测方法相比,该方法准确、均匀地突出了显著区域,检测结果更符合人眼的观察结果。
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An adaptive computational method for color contrast based salient region detection
An adaptive salient region detection method is proposed in this study, which combines LAB and RGB feature space and fused the color and contrast features. This algorithm first extracts the color feature of each image block in the LAB space and the contrast feature in the RGB space, and then fuses the color feature saliency map and the contrast feature saliency map using the principal component analysis (PCA) method which can effectively retain the saliency information of color and contrast, at last, this research extracts the salient region by setting a adaptive threshold. Compared with other detection methods, the proposed method is accurate and highlights the salient region uniformly, the detection results are more in line with the observations of human eyes.
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