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An Improved GrabCut Method Based on a Visual Attention Model for Rare-Earth Ore Mining Area Recognition with High-Resolution Remote Sensing Images

机译:基于视觉注意模型的改进GrabCut方法用于高分辨率遥感影像的稀土矿区识别

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An improved GrabCut method based on a visual attention model is proposed to extract rare-earth ore mining area information using high-resolution remote sensing images. The proposed method makes use of advantages of both the visual attention model and GrabCut method, and the visual attention model was referenced to generate a saliency map as the initial of the GrabCut method instead of manual initialization. Normalized Difference Vegetation Index (NDVI) was designed as a bound term added into the Energy Function of GrabCut to further improve the accuracy of the segmentation result. The proposed approach was employed to extract rare-earth ore mining areas in Dingnan County and Xunwu County, China, using GF-1 (GaoFen No.1 satellite launched by China) and ALOS (Advanced Land Observation Satellite) high-resolution remotely-sensed satellite data, and experimental results showed that FPR (False Positive Rate) and FNR (False Negative Rate) were, respectively, lower than 12.5% and 6.5%, and PA (Pixel Accuracy), MPA (Mean Pixel Accuracy), MIoU (Mean Intersection over Union), and FWIoU (frequency weighted intersection over union) all reached up to 90% in four experiments. Comparison results with traditional classification methods (such as Object-oriented CART (Classification and Regression Tree) and Object-oriented SVM (Support Vector Machine)) indicated the proposed method performed better for object boundary identification. The proposed method could be useful for accurate and automatic information extraction for rare-earth ore mining areas.
机译:提出了一种基于视觉注意模型的改进的GrabCut方法,该方法利用高分辨率遥感图像提取稀土矿区信息。所提出的方法利用了视觉注意模型和GrabCut方法的优点,并且参考视觉注意模型以生成显着图作为GrabCut方法的初始,而不是手动初始化。归一化植被指数(NDVI)被设计为绑定项添加到GrabCut的能量函数中,以进一步提高分割结果的准确性。该方法通过GF-1(中国发射的高County一号卫星)和ALOS(先进的陆地观测卫星)高分辨率遥感技术,被用于在中国定南县和寻乌县提取稀土矿产区。卫星数据和实验结果表明,FPR(假阳性率)和FNR(假阴性率)分别低于12.5%和6.5%,以及PA(像素精度),MPA(平均像素精度),MIoU(平均)在四个实验中,“交集相交”和“ FWIoU”(频率加权交集相交)均达到了90%。与传统分类方法(例如,面向对象的CART(分类和回归树)和面向对象的SVM(支持向量机))的比较结果表明,该方法对对象边界的识别效果更好。所提出的方法对于稀土矿区的准确,自动信息提取可能是有用的。

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