首页> 外文会议>International Conference on Geoinformatics;Geoinformatics 2012 >Automatic Mapping Aquaculture in Coastal Zone from TM Imagery with OBIA Approach
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Automatic Mapping Aquaculture in Coastal Zone from TM Imagery with OBIA Approach

机译:利用OBIA方法从TM影像自动绘制沿海地区的水产养殖图

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摘要

Aquaculture area monitoring is of great importance for coastal zone sustainable management and planning. This paper focuses on the development and assessment of an automatic approach for aquaculture mapping in coastal zone from TM imagery. The contribution mainly consists of three aspects: first, utilizes the Multi-scale segmentation/object relationship modeling (MSS/ORM) strategy on the object based image analysis (OBIA) of TM imagery; second, evaluates the effectiveness GLCM homogeneity texture feature on pond aquaculture area information extraction; third, compares the analysis results from three different approaches, namely pixelbased maximum likelihood classifier (MLC), One-step supervised OBIA with stand nearest neighbor (SNN) and MSS/ORM OBIA strategy. The final result shows that the MSS/ORM OBIA approach greatly improves the classification accuracy and has good potential for automatic pond aquaculture land mapping in coastal zone from TM imagery.
机译:水产养殖区域监测对于沿海地区的可持续管理和规划至关重要。本文着重于开发和评估TM影像在沿海地区进行水产养殖制图的自动方法。贡献主要包括三个方面:首先,在TM图像的基于对象的图像分析(OBIA)上采用多尺度分割/对象关系建模(MSS / ORM)策略;其次,评价了GLCM同质纹理特征在池塘水产养殖面积信息提取中的有效性。第三,比较了三种不同方法的分析结果,即基于像素的最大似然分类器(MLC),具有站立最近邻的单步监督OBIA(SNN)和MSS / ORM OBIA策略。最终结果表明,MSS / ORM OBIA方法极大地提高了分类精度,并具有很好的潜力,可通过TM影像在沿海地区自动进行池塘水产养殖土地制图。

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