测绘学报
測繪學報
측회학보
ACTA GEODAETICA ET CARTOGRAPHICA SINICA
2015年
2期
214-219,227
,共7页
混合像元%梯度特征%光谱特征%端元提取
混閤像元%梯度特徵%光譜特徵%耑元提取
혼합상원%제도특정%광보특정%단원제취
mixed pixel%gradient feature%spectrumfeature%endmember extraction
由于数据量大,目前大多数端元提取算法均需较长的计算时间,限制了这些算法的有效应用。本文提出了以光谱梯度特征为搜索条件的快速端元提取方法,其核心包括基于光谱梯度特征的候选端元快速筛选和基于光谱解混误差的端元识别两部分。由于能够从影像中快速筛选出少量的像元光谱作为候选端元,故具有较好的计算性能;同时由于避免了非端元光谱参与端元识别,使得识别的结果具有更高的精度。试验表明,相比经典的 IEA 算法和 ECHO 算法,该算法不仅能大幅度提高端元提取速度,而且具有更准确的端元识别能力。同时,基于该算法原理,也可对现有各种算法进行改进,提升现有的各种端元提取算法的运算速度。
由于數據量大,目前大多數耑元提取算法均需較長的計算時間,限製瞭這些算法的有效應用。本文提齣瞭以光譜梯度特徵為搜索條件的快速耑元提取方法,其覈心包括基于光譜梯度特徵的候選耑元快速篩選和基于光譜解混誤差的耑元識彆兩部分。由于能夠從影像中快速篩選齣少量的像元光譜作為候選耑元,故具有較好的計算性能;同時由于避免瞭非耑元光譜參與耑元識彆,使得識彆的結果具有更高的精度。試驗錶明,相比經典的 IEA 算法和 ECHO 算法,該算法不僅能大幅度提高耑元提取速度,而且具有更準確的耑元識彆能力。同時,基于該算法原理,也可對現有各種算法進行改進,提升現有的各種耑元提取算法的運算速度。
유우수거량대,목전대다수단원제취산법균수교장적계산시간,한제료저사산법적유효응용。본문제출료이광보제도특정위수색조건적쾌속단원제취방법,기핵심포괄기우광보제도특정적후선단원쾌속사선화기우광보해혼오차적단원식별량부분。유우능구종영상중쾌속사선출소량적상원광보작위후선단원,고구유교호적계산성능;동시유우피면료비단원광보삼여단원식별,사득식별적결과구유경고적정도。시험표명,상비경전적 IEA 산법화 ECHO 산법,해산법불부능대폭도제고단원제취속도,이차구유경준학적단원식별능력。동시,기우해산법원리,야가대현유각충산법진행개진,제승현유적각충단원제취산법적운산속도。
Due to the large amount of image data ,most algorithms for endmember extraction cost huge time ,which limits the wide application of them .A fast endmember extraction algorithm is proposed by using SpectrumGradient Features as the searching rule .The core idea is composed of two parts ,namely , rapid screening of candidate endmembers based on Spectral Gradient Features and endmember identifica‐tion based on spectrum unmixing residual .Being able to quickly screen out a small amount of pixels from the image as candidate endmembers , the algorithm has excellent computational performance .This algorithm can also avoid non‐endmember spectrum participating in endmember identification and can obtain a result of higher accuracy .The experimental result shows that this new algorithm can greatly improve the endmember extraction speed and recognize endmembers more accurately compared with IEA and ECHO .What’s more ,existing algorithms for endmember extraction can be applied better based on the principle of this algorithm ,and the extraction speed can be improved remarkably .