红外与激光工程
紅外與激光工程
홍외여격광공정
INFRARED AND LASER ENGINEERING
2015年
7期
2224-2230
,共7页
李峰%梁汉东%米晓楠%卫爱霞
李峰%樑漢東%米曉楠%衛愛霞
리봉%량한동%미효남%위애하
土地覆被%分类%多子区%决策树%煤火
土地覆被%分類%多子區%決策樹%煤火
토지복피%분류%다자구%결책수%매화
land cover%classification%multi-subregions%decision tree%coal fire
乌达矿区的煤火自燃造成了严重的环境、经济和安全灾害,对该地区的土地覆被变化研究有助于评估煤火灾害的影响程度和范围,而Landsat8卫星影像为煤火区的土地覆被分类探测与研究提供了可能。依据乌达地区的地形、地貌和地表辐射特征划分5个子区域,基于通用单决策树模型,利用光谱特征分析、高程、坡度和热红外信息对每个子区域分别构建5种不同参数的决策树模型。相比通用单决策树模型以及其他4种普通分类方法,因减少了土地覆被的混淆度,多子区决策树模型土地覆被分类的整体精度和Kappa系数更高,分别达到87.63%和0.86,尤其是建筑物和煤灰的分类精度有较为明显的提升。
烏達礦區的煤火自燃造成瞭嚴重的環境、經濟和安全災害,對該地區的土地覆被變化研究有助于評估煤火災害的影響程度和範圍,而Landsat8衛星影像為煤火區的土地覆被分類探測與研究提供瞭可能。依據烏達地區的地形、地貌和地錶輻射特徵劃分5箇子區域,基于通用單決策樹模型,利用光譜特徵分析、高程、坡度和熱紅外信息對每箇子區域分彆構建5種不同參數的決策樹模型。相比通用單決策樹模型以及其他4種普通分類方法,因減少瞭土地覆被的混淆度,多子區決策樹模型土地覆被分類的整體精度和Kappa繫數更高,分彆達到87.63%和0.86,尤其是建築物和煤灰的分類精度有較為明顯的提升。
오체광구적매화자연조성료엄중적배경、경제화안전재해,대해지구적토지복피변화연구유조우평고매화재해적영향정도화범위,이Landsat8위성영상위매화구적토지복피분류탐측여연구제공료가능。의거오체지구적지형、지모화지표복사특정화분5개자구역,기우통용단결책수모형,이용광보특정분석、고정、파도화열홍외신식대매개자구역분별구건5충불동삼수적결책수모형。상비통용단결책수모형이급기타4충보통분류방법,인감소료토지복피적혼효도,다자구결책수모형토지복피분류적정체정도화Kappa계수경고,분별체도87.63%화0.86,우기시건축물화매회적분류정도유교위명현적제승。
Coal fires burning caused serious environmental, economic and safety catastrophe in Wuda district, North China. The land cover change research helped to evaluate the extent of coal fire damage. The image data of Landsat8 satellite offered the possibility of detecting and studying land cover/use in coal fire area. Five subregions were divided from one Wuda image based on topographic, landform and land surface radiation characteristics. Corresponding to each subregion, five different decision tree models with different parameters were respectively constructed based on a general sole decision tree for the whole research area, which was built by spectral characteristics analysis, height, slope and infrared information. By contrasting with a general sole decision tree and other four common classification methods applied to the whole area, land cover accuracy of multi-subregions decision tree classification approach derived higher overall accuracy (87.63%) and Kappa coefficient (0.86) because subregions decreased land-cover confusions. In particular, the accuracy of building and coal ash classification mapping showed a marked increase.