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Visual attention model based mining area recognition on massive high-resolution remote sensing images

机译:基于视觉注意模型的大规模高分辨率遥感影像的矿区识别

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摘要

With the development of remote sensing technology, satellite images with the characteristics of multi-scale, multi-band, and multi-date make it tend to be big data. So how to raise the extraction speed, precision and automatic degree of salient objects from high-resolution remote sensing images become urgent problems. Based on the analysis using an Itti visual attention model for natural image processing, we achieved improvements in two aspects: (1) the selection of salient regions based on elevation data, and (2) the segmentation of salient regions using the Snake model for precise object contour extraction. Tests on the extraction of 2.5 m high-resolution remote sensing image data in the rare earth mining area in Dingnan County, Jiangxi Province showed a false alarm rate of 14.8% and a missing alarm rate of 8.4% in the extraction of mine quantity data. The proposed method could be useful for improving the speed, precision and automatic extraction of salient objects from high-resolution remote sensing images as well as the boundary information of salient objects that are based on a visual attention model.
机译:随着遥感技术的发展,具有多尺度,多波段,多日期特征的卫星图像趋向于成为大数据。因此,如何提高高分辨率遥感影像中目标物体的提取速度,精度和自动度成为当务之急。在使用Itti视觉注意力模型进行自然图像处理的分析的基础上,我们在两个方面进行了改进:(1)基于高程数据选择显着区域,(2)使用Snake模型对显着区域进行分割以实现精确对象轮廓提取。在江西省定南县稀土矿区提取2.5 m高分辨率遥感影像数据的试验中,矿山数量数据的提取误报率为14.8%,漏报率为8.4%。所提出的方法对于提高从高分辨率遥感图像中显着物体的速度,精度和自动提取以及基于视觉注意模型的显着物体的边界信息可能是有用的。

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