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Visual saliency detection based on adaptive fusion of color and texture features

机译:基于颜色和纹理特征自适应融合的视觉显着性检测

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Visual saliency detection achieved excellent performance in various fields such as object detection, image compression, and image retrieval. However, most existing methods for visual saliency detection only considered low-level features, ignored higher-level priors, and the fusion mechanism was simple. A novel visual saliency detection model based on color and texture adaptive fusion was proposed in this paper. On the basis of image preprocessing, the proposed method extracted color saliency map through color contrast feature and color distribution feature fusion, and texture saliency map through texture feature. Then they were fused adaptively according to the texture complexity of each image. The final saliency map was obtained by incorporating location prior. Experimental results on MSRA (1000) dataset demonstrated that the proposed visual saliency detection model outperformed the existing methods.
机译:视觉显着性检测在诸如对象检测,图像压缩和图像检索之类的各个领域中均取得了出色的性能。但是,大多数现有的视觉显着性检测方法仅考虑了低级功能,而忽略了高级先验,并且融合机制很简单。提出了一种基于颜色和纹理自适应融合的视觉显着性检测模型。该方法在图像预处理的基础上,通过颜色对比特征和颜色分布特征融合提取颜色显着图,并通过纹理特征提取纹理显着图。然后根据每个图像的纹理复杂度对它们进行自适应融合。最终的显着性图是通过合并位置而获得的。在MSRA(1000)数据集上的实验结果表明,所提出的视觉显着性检测模型优于现有方法。

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