农业工程学报
農業工程學報
농업공정학보
2015年
2期
259-265
,共7页
马腾%王耀强%李瑞平%李彪
馬騰%王耀彊%李瑞平%李彪
마등%왕요강%리서평%리표
土地利用%遥感%分类%分类器%决策%目标分解
土地利用%遙感%分類%分類器%決策%目標分解
토지이용%요감%분류%분류기%결책%목표분해
land use%remote sensing%classification%classifiers%decision making%target decomposition
为有效利用微波遥感影像进行土地覆盖/土地利用分类,该研究以内蒙古河套灌区解放闸灌域为研究区域,采用春耕后试验区Radarsat-2全极化数据,利用极化目标分解方法提取得到了散射熵、平均散射角、反熵、平均特征值、单次反射特征值相对差异度、二次反射特征值相对差异度。结合实地数据,分析了各参数对于耕地、裸地、含植被水体、建筑等类别的可分离性。根据分析结果选取平均散射角、平均特征值、单次反射特征值相对差异度为分类特征变量,通过最小距离法计算了决策边界,最后结合树分类器对试验区影像进行了分类。整体分类精度93.89%,分类Kappa系数为0.914。结果表明,利用平均散射角可有效区分表面散射与二次散射及体散射;平均特征值可有效区分含植被水体与建筑物;单次反射特征值相对差异度参数可有效区分耕地与裸地。利用极化目标分解方法结合决策树分类器可精确地进行土地覆盖/土地利用分类。
為有效利用微波遙感影像進行土地覆蓋/土地利用分類,該研究以內矇古河套灌區解放閘灌域為研究區域,採用春耕後試驗區Radarsat-2全極化數據,利用極化目標分解方法提取得到瞭散射熵、平均散射角、反熵、平均特徵值、單次反射特徵值相對差異度、二次反射特徵值相對差異度。結閤實地數據,分析瞭各參數對于耕地、裸地、含植被水體、建築等類彆的可分離性。根據分析結果選取平均散射角、平均特徵值、單次反射特徵值相對差異度為分類特徵變量,通過最小距離法計算瞭決策邊界,最後結閤樹分類器對試驗區影像進行瞭分類。整體分類精度93.89%,分類Kappa繫數為0.914。結果錶明,利用平均散射角可有效區分錶麵散射與二次散射及體散射;平均特徵值可有效區分含植被水體與建築物;單次反射特徵值相對差異度參數可有效區分耕地與裸地。利用極化目標分解方法結閤決策樹分類器可精確地進行土地覆蓋/土地利用分類。
위유효이용미파요감영상진행토지복개/토지이용분류,해연구이내몽고하투관구해방갑관역위연구구역,채용춘경후시험구Radarsat-2전겁화수거,이용겁화목표분해방법제취득도료산사적、평균산사각、반적、평균특정치、단차반사특정치상대차이도、이차반사특정치상대차이도。결합실지수거,분석료각삼수대우경지、라지、함식피수체、건축등유별적가분리성。근거분석결과선취평균산사각、평균특정치、단차반사특정치상대차이도위분류특정변량,통과최소거리법계산료결책변계,최후결합수분류기대시험구영상진행료분류。정체분류정도93.89%,분류Kappa계수위0.914。결과표명,이용평균산사각가유효구분표면산사여이차산사급체산사;평균특정치가유효구분함식피수체여건축물;단차반사특정치상대차이도삼수가유효구분경지여라지。이용겁화목표분해방법결합결책수분류기가정학지진행토지복개/토지이용분류。
The objective of this study is to combine polarimetric target decomposition and decision tree classifier for land cover/land use classification. Taking the Jiefangzha irrigation sub-district of Inner Mongolia Hetao Irrigation District as study area, based on the data of full polarization Radarsat-2 in study area after spring, the entropy, average scattering angle, anti entropy, average eigenvalue, characteristic value of relative difference of single reflection, and characteristic value of relative difference of secondary reflection were obtained by using polarization target decomposition method. Combined with the field data in the time of image acquisition, the separability of parameters on building area, bare land, cultivated land, water area containing vegetation was analyzed. The ground sample’s mean values of the above parameters were calculated. By analyzing the mean of these parameters, the results show that the average scattering angle, the average eigenvalue, and characteristic value of relative difference of single reflection can be used for the characteristic quantities of classification. The decision tree decision boundary is determined by the minimum distance method. If the average scattering angle is greater than 36.61°, the area is divided into building area and water area containing vegetation, if not, is divided to bare land and cultivated land. In the building area and water area containing vegetation, if the average eigenvalue is greater than 0.18, the pixel is classified as building area, if not, the pixel is classified as water area containing vegetation. In the bare land and cultivated land, if the characteristic value of relative difference of single reflection is greater than 0.89, the pixels is divided into cultivated land, or else bare land area. The overall accuracy of image classification by decision tree is 93.89% and Kappa coefficient is 0.914. The results show that the average scattering angle can be used to accurately distinguish the single scattering, volume scattering and secondary scattering. Because secondary scattering always appeared in building area and vegetation area, the average scattering angle can be used to extract building area or vegetation area. The echo power of vegetation area is weak, so the average characteristic value associated with the echo power can be used to distinguish the building area and water area containing vegetation. Characteristic value of relative difference of single reflection is associated with terrain roughness, and it can be used to distinguish cultivated land and bare land area. Wrong classification of pixel occurred mainly between the cultivated land and bare land area and between the bare land and building area. Part of bare land surface has greater roughness, which is a major cause of confusion with cultivated land. The cause of wrong classification between bare land and building area is that part of bare land area has greater roughness resulting in secondary scattering. In addition, through the study it was found that the average scattering angle for the extraction of building area has a better effect, but if secondary scattering is produced, it will lead to the confusion between vegetation area and building area; it is easily confused between water area and building area if the water contains vegetation. According to the results, the methods of polarimetric target decomposition can fully explain the physical mechanism of object, and thus it can improve the land cover/land use classification accuracy.