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Mangrove Species Mapping and Leaf Area Index Modeling Using Optical and Microwave Remote Sensing Technologies in Hong Kong.

机译:香港使用光学和微波遥感技术对红树林物种作图和叶面积指数建模。

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摘要

Mangrove is one of the most productive ecosystems flourished in the intertidal zone of tropical and subtropical regions. Hong Kong has ten true mangrove species covering an approximate area of 350 hectares. Mai Po locating in the northwestern part of Hong Kong nourishes the largest mangrove stand and it was listed as a Wetland of Importance under the Ramsar Convention in 1995. Over the years, areas of mangrove have been shrinking globally due to development, pollution, and other unsustainable exploitation and Hong Kong was no exception. In Hong Kong, mangroves are usually sacrificed for urban development and infrastructure construction. Therefore, it is crucial to monitor their growth conditions, change of extent and possible unsustainable practices threatening their existence. Remote sensing being a cost-effective and timely tool for vegetation conservation is most suitable for such purpose.;Taking Mai Po as study area, this study acquired satellite-borne hyperspectral and radar data supplemented with in situ field survey to achieve three purposes. First, features from the remotely-sensed data that are significant to species discrimination were identified through pattern recognition. Second, selected features grouped into different subsets were used to delineate the boundary of mangrove species through supervised classification. In the meantime, classifiers including maximum likelihood (ML), decision tree C5.0 (DT), artificial neural network (ANN) and support vector machines (SVM) were tested for their accuracy performance. The third purpose is to understand the current biophysical condition of mangrove through leaf area index (LAI) modeling by regressing field-measured LAI against vegetation indices, backscatter and textural measures.;Results from feature selection revealed that hyperspectral narrowbands locating in green at 570nm, 580nm, 591nm, 601nm; red at 702nm; red-edge at 713nm; near infrared at 764nm and 774nm and shortwave infrared at 1276nm, 1316nm and 1629nm as well as the multi-temporal filtered backscatter captured in different seasons have high sensitivity to species difference.;Species-based classification using multi-temporal backscatter features alone do not provide a satisfactory accuracy. Comparatively, results from pure spectral bands have better overall accuracy than that from combining spectral and radar features. However, radar backscatter does improve accuracy of some species. Besides, all classifiers had similar variations of training accuracy under the same feature subset. However, the testing accuracy is much lower with the exception of ANN. Performance of ANN was more stable and robust than other classifiers while serious overtraining occurs for the DT classifier. Moreover, most species were mapped accurately as revealed by the producer's and user's accuracy with the exception of A. corniculatum and Sonneratia spp. due to deficiency of training samples.;Simple linear regression model with VIs revealed that triangular vegetation index (TVI) and modified chlorophyll absorption ratio index 1 (MCARI1) had the best relationship with LAI. However, weak relationship was found between field-measured LAI and radar parameters suggesting that radar parameters cannot be used as single predictor for LAI. Results from stepwise multiple regression suggested that TVI combined with GLCM-derived angular second moment (ASM) can reduce the estimation error of LAI. To conclude, the study has demonstrated spectral and radar data are complementarity for accurate species discrimination and LAI mapping.
机译:红树林是热带和亚热带地区潮间带最繁茂的生态系统之一。香港共有十种真正的红树林物种,占地约350公顷。位于香港西北部的米埔养育了最大的红树林林,并于1995年被《拉姆萨尔公约》列为重要湿地。多年来,由于发展,污染和其他原因,红树林面积在全球范围内不断缩小不可持续的剥削,香港也不例外。在香港,红树林通常被牺牲用于城市发展和基础设施建设。因此,至关重要的是监测其生长状况,程度的变化以及可能威胁其生存的不可持续做法。遥感作为一种经济有效的植被保护及时工具最适合于此目的。以米埔为研究区域,本研究获得了卫星传播的高光谱和雷达数据,并进行了现场实地调查,以达到三个目的。首先,通过模式识别来识别遥感数据中对物种歧视重要的特征。其次,通过监督分类,将选定的特征分组为不同的子集来描绘红树林物种的边界。同时,测试了包括最大似然(ML),决策树C5.0(DT),人工神经网络(ANN)和支持向量机(SVM)在内的分类器的准确性。第三个目的是通过对植被指数,反向散射和纹理测量进行实地测量的LAI回归,通过叶面积指数(LAI)模型了解红树林的当前生物物理状况;特征选择的结果表明,高光谱窄带位于570nm处的绿色中, 580nm,591nm,601nm; 702nm红色; 713nm处的红边; 764nm和774nm的近红外和1276nm,1316nm和1629nm的短波红外以及在不同季节捕获的多时相滤波后向散射对物种差异具有较高的敏感性;仅使用多时相后向散射特征的基于物种的分类无法提供令人满意的精度。相比之下,纯谱带的结果的总体准确性要高于组合谱和雷达特征的结果。但是,雷达后向散射确实可以提高某些物种的准确性。此外,在同一个特征子集下,所有分类器的训练精度都有相似的变化。但是,除ANN之外,测试准确性要低得多。与DT分类器相比,ANN的性能更为稳定和强大,而DT分类器则发生了严重的过度训练。而且,除生产者和使用者的准确性外,大多数种都已作了准确的定位,除了角果曲霉和Sonneratia spp。由于缺乏训练样本。;具有VI的简单线性回归模型显示,三角形植被指数(TVI)和改良的叶绿素吸收比指数1(MCARI1)与LAI的关系最好。但是,在实地测得的LAI与雷达参数之间发现了微弱的关系,这表明雷达参数不能用作LAI的单个预测指标。逐步多元回归的结果表明,TVI结合GLCM衍生的角秒矩(ASM)可以减少LAI的估计误差。总而言之,这项研究表明光谱和雷达数据对于准确的物种识别和LAI映射是互补的。

著录项

  • 作者

    Wong, Kwan Kit.;

  • 作者单位

    The Chinese University of Hong Kong (Hong Kong).;

  • 授予单位 The Chinese University of Hong Kong (Hong Kong).;
  • 学科 Geography.;Physical Geography.;Remote Sensing.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 545 p.
  • 总页数 545
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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