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Saliency Detection Based on Local and Global Information Fusion

机译:基于局部和全局信息融合的显着性检测

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A saliency detection model based on local and global information fusion is proposed to improve the accuracy. Firstly, the saliency map reflecting local edge information is acquired based on the superpixel segmentation, saliency estimation and multi-scale linearly combination. Then the saliency map with better global information is obtained based on full convolutional network. Finally, two saliency maps are fused by the guided filtering and Hadamard product operation to improve the robustness of the saliency detection. The experimental results on MASR1000, ECSSD, and CDSS datasets show that the proposed fusion model could have higher Precision-Recall Curves and F-measure, and detect the salient object more accurately.
机译:提出了一种基于局部和全局信息融合的显着性检测模型,以提高准确性。首先,基于超像素分割,显着性估计和多尺度线性组合,获取反映局部边缘信息的显着性图。然后基于全卷积网络获得具有更好全局信息的显着性图。最后,通过引导滤波和Hadamard乘积运算将两个显着性图融合在一起,以提高显着性检测的鲁棒性。在MASR1000,ECSSD和CDSS数据集上的实验结果表明,所提出的融合模型可以具有更高的精确召回曲线和F测度,并且可以更准确地检测到显着物体。

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