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Ship detection in high spatial resolution remote sensing image based on improved sea-land segmentation

机译:基于改进海上分割的高空间分辨率遥感图像船舶检测

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A new method to detect ship target at sea based on improved segmentation algorithm is proposed in this paper, in which the improved segmentation algorithm is applied to precisely segment land and sea. Firstly, mean value is replaced instead of average variance value in Otsu method in order to improve the adaptability. Secondly, Mean Shift algorithm is performed to separate the original high spatial resolution remote sensing image into several homogeneous regions. At last, the final sea-land segmentation result can be located combined with the regions in preliminary sea-land segmentation result. The proposed segmentation algorithm performs well on the segment between water and land with affluent texture features and background noise, and produces a result that can be well used in shape and context analyses. Ships are detected with settled shape characteristics, including width, length and its compactness. Mean Shift algorithm can smooth the background noise, utilize the wave's texture features and helps highlight offshore ships. Mean shift algorithm is combined with improved Otsu threshold method in order to maximizes their advantages. Experimental results show that the improved sea-land segmentation algorithm on high spatial resolution remote sensing image with complex texture and background noise performs well in sea-land segmentation, not only enhances the accuracy of land and sea boarder, but also preserves detail characteristic of ships. Compared with traditional methods, this method can achieve accuracy over 90 percent. Experiments on Worldview images show the superior, robustness and precision of the proposed method.
机译:在本文中提出了一种基于改进的分割算法检测海上船舶目标的新方法,其中改进的分割算法应用于精确的陆地和海洋。首先,替换平均值而不是OTSU方法中的平均方差值,以提高适应性。其次,执行平均移位算法以将原始的高空间分辨率遥感图像分离为几个同类区域。最后,最终的海上分割结果可以与初步海上分割结果中的地区相结合。所提出的分割算法对水和土地之间的段进行良好,具有富裕的纹理特征和背景噪声,并产生可以在形状和上下文分析中使用的结果。用稳定的形状特性检测船舶,包括宽度,长度及其紧凑性。平均换档算法可以平滑背景噪音,利用波的纹理功能,并有助于突出近海船只。平均移位算法与改进的OTSU阈值方法组合,以最大化它们的优点。实验结果表明,在海上分割中,具有复杂纹理和背景噪声的高空间分辨率遥感图像的改进的海上分割算法,不仅提高了陆地和海上登机手的准确性,还可以保护船舶的细节特征。与传统方法相比,这种方法可以获得超过90%的准确度。 WorldView图像的实验显示了所提出的方法的优越,鲁棒性和精度。

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