首页> 外文期刊>Geoscience and Remote Sensing Letters, IEEE >Evaluation of Morphological Texture Features for Mangrove Forest Mapping and Species Discrimination Using Multispectral IKONOS Imagery
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Evaluation of Morphological Texture Features for Mangrove Forest Mapping and Species Discrimination Using Multispectral IKONOS Imagery

机译:利用多光谱IKONOS影像评估红树林的形态特征和树种识别

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摘要

This letter aims to exploit morphological textures in discriminating three mangrove species and surrounding environment with multispectral IKONOS imagery in a study area on the Caribbean coast of Panama. Morphological texture features are utilized to distinguish red (Rhizophora mangle), white (Laguncularia racemosa), and black (Avicennia germinans) mangroves and rainforest regions. Meanwhile, two fusion methods are presented, i.e., vector stacking and support vector machine (SVM) output fusion, for integrating the hybrid spectral–textural features. For comparison purposes, the object-based analysis and the gray-level co-occurrence matrix (GLCM) textures are adopted. Results revealed that the morphological feature opening by reconstruction (OBR) followed by closing by reconstruction (CBR) and its dual operator CBR followed by OBR gave very promising accuracies for both mangrove discrimination (89.1% and 91.1%, respectively) and forest mapping (91.4% and 93.7%, respectively), compared with the object-based analysis (80.5% for mangrove discrimination and 82.9% for forest mapping) and the GLCM method (81.9% and 87.2%, respectively). With respect to the spectral–textural information fusion algorithms, experiments showed that the SVM output fusion could obtain an additional 2.0% accuracy improvement than the vector-stacking approach.
机译:这封信旨在利用形态学纹理,通过巴拿马加勒比海沿岸研究区的多光谱IKONOS影像,区分三种红树林物种和周围环境。利用形态纹理特征来区分红色(Rhizophora mangle),白色(Laguncularia racemosa)和黑色(Avicennia Germinans)红树林和雨林地区。同时,提出了两种融合方法,即向量叠加和支持向量机(SVM)输出融合,用于融合频谱-纹理混合特征。为了进行比较,采用了基于对象的分析和灰度共生矩阵(GLCM)纹理。结果显示,通过重建(OBR),通过重建(CBR),通过双重算子CBR和OBR进行形态特征开放,对红树林的判别率(分别为89.1%和91.1%)和森林制图(91.4)具有非常有希望的准确性。分别是基于对象的分析(红树林区分为80.5%和森林制图为82.9%)和GLCM方法(分别为81.9%和87.2%)。关于频谱-纹理信息融合算法,实验表明,与向量叠加方法相比,SVM输出融合可以提高2.0%的精度。

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