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Object-based classification approach for greenhouse mapping using Landsat-8 imagery 被引量:13
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作者 Wu Chaofan Deng Jinsong +2 位作者 Wang Ke Ma Ligang Amir Reza Shah Tahmassebi 《International Journal of Agricultural and Biological Engineering》 SCIE EI CAS 2016年第1期79-88,I0005,共11页
Suburban greenhouses with intensive agricultural productivity have increasingly influenced the daily diet and vegetable supply in Chinese cities.With their enormous input of fertilizers and pesticides,greenhouses have... Suburban greenhouses with intensive agricultural productivity have increasingly influenced the daily diet and vegetable supply in Chinese cities.With their enormous input of fertilizers and pesticides,greenhouses have considerably changed the local soil quality and environmental risk factors.The ability to obtain timely and accurate information regarding the spatial distribution of greenhouses could make an important contribution to local agricultural management and soil protection.This paper attempts to present a practical framework for extracting suburban greenhouses,integrating remote sensing data from Landsat-8 and object-oriented classification.Inheritance classification was implemented,and various properties,including texture and neighborhood features in addition to spectral information,were investigated through the popular random forest technique for feature selection prior to SVM classification to improve the mapping accuracy.The results demonstrated that object-based classification incorporating non-spectral features yielded a significant improvement compared with the classification results obtained using only the spectral information in traditional per-pixel classification.Both the producer’s and user’s accuracy were higher than 85%for greenhouse identification.Although it remained a challenge to completely distinguish greenhouses from sparse plants,the final greenhouse map indicated that the proposed object-based classification scheme,providing multiple feature selections and multi-scale analysis,yielded worthwhile information when applied to a continuous series of the freely available Landsat-8 imagery data. 展开更多
关键词 greenhouse MAPPING Landsat-8 object-based classification feature selection MULTI-SCALE
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基于GF-2数据结合多纹理特征的塑料大棚识别 被引量:26
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作者 吴锦玉 刘晓龙 +2 位作者 柏延臣 史正涛 付卓 《农业工程学报》 EI CAS CSCD 北大核心 2019年第12期173-183,共11页
塑料大棚在全球范围的大量使用带来经济效益,同时也引发了很多环境问题,及时准确的塑料大棚空间分布信息是农业生产和土壤治理决策的重要依据。塑料大棚的使用改变了土壤表面的光谱特性和空间结构,塑料薄膜材质的特殊性,使其反射光谱具... 塑料大棚在全球范围的大量使用带来经济效益,同时也引发了很多环境问题,及时准确的塑料大棚空间分布信息是农业生产和土壤治理决策的重要依据。塑料大棚的使用改变了土壤表面的光谱特性和空间结构,塑料薄膜材质的特殊性,使其反射光谱具有强烈的方向性和不确定性,因而仅依靠地物反射光谱特征难以准确识别塑料大棚。本文以GF-2影像作为单一数据源,针对塑料大棚特有的空间分布细节信息,分析不同纹理提取算法对塑料大棚识别的适用性。结果表明:1)纹理能有效提高基于遥感影像的塑料大棚识别精度;2)使用单一纹理算法识别不同空间分布结构塑料大棚的分类方案中,采用LBP (local binary pattern)纹理算法的塑料大棚识别精度均优于GLCM (gray-level co-occurrence matrix)、PSI (pixel shape index)纹理算法,其中研究区A基于LBP纹理特征的塑料大棚识别总体精度为96.85%,Kappa系数为0.95,研究区B的总体识别精度为95.58%,Kappa系数为0.94;3)本文使用3种不同的纹理特征组合分类方案,均能提高塑料大棚的识别精度,但不同纹理特征组合算法运用到空间结构差异较大的2个区域时表现不同。加入GLCM的纹理特征组合能提高分布范围较大且聚集度高的塑料大棚识别精度(研究区A塑料大棚斑块平均面积为3.39 hm2,聚集度指数为80.64),对于塑料大棚使用面积小且分布破碎的区域识别精度提升效果不明显(研究区B塑料大棚斑块平均面积为1.37hm2,聚集度指数为72.98)。本试验结果中研究区A的地物光谱特征、NDVI和3种纹理特征组合的大棚识别精度最高,总体识别精度和Kappa系数分别达到了98.13%和0.97,研究区B的地物光谱特征、NDVI、PSI和LBP纹理特征组合识别精度最高(总体精度为96.13%,Kappa系数为0.95)。基于影像对象的多纹理特征能够实现塑料大棚的精细识别,该方法对塑料大棚空间分布精确制图具有重要意义。 展开更多
关键词 遥感 温室 GF-2数据 影像纹理 塑料大棚 面向对象分类
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