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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Capabilities of remote sensors to classify coral, algae, and sand as pure and mixed spectra
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Capabilities of remote sensors to classify coral, algae, and sand as pure and mixed spectra

机译:遥感器将珊瑚,藻类和沙子分类为纯光谱和混合光谱的能力

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We investigate the abilities of seven remote sensors to classify coral, algae, and carbonate sand based on 10,632 reflectance spectra measured in situ on reefs around the world. Discriminant and classification analyses demonstrate that full-resolution (1 nm) spectra provide very good spectral separation of the bottom-types. We assess the spectral capabilities of the sensors by applying to the in situ spectra the spectral responses of two airborne hyperspectral sensors (AAHIS and AVIRIS), three satellite broadband multispectral sensors (Ikonos, Landsat-ETM+ and SPOT-HRV), and two hypothetical satellite narrowband multispectral sensors (Proto and CRESPO). Classification analyses of the simulated sensor-specific spectra produce overall classification accuracy rates of 98%, 98%, 93%, 91%, 64%, 58%, and 50% for AAHIS, AVIRIS, Proto, CRESPO, Ikonos, Landsat-ETM+, and SPOT-HRV, respectively. Analyses of linearly mixed sensor-specific spectra reveal that the hyperspectral and narrowband multispectral sensors have the ability to discriminate between coral and algae across many levels of mixing, while the broadband multispectral sensors do not. Applying the results of the general mixing analyses to a specific spatial organization of coral, algae, and sand indicates that the hyperspectral sensors accurately estimate areal cover of the bottom-types regardless of pixel resolution. The narrowband multispectral sensors overestimate coral cover by 11-15%, while the broadband sensors underestimate algae cover by 7-29% and overestimate coral cover by 24-103%. We conclude that currently available satellite sensors are inadequate for assessment of global coral reef status, but that it is both necessary and possible to design a sensor system suited to the task. (C) 2003 Elsevier Science Inc. All rights reserved. [References: 53]
机译:我们基于在世界各地的珊瑚礁上现场测量的10,632个反射光谱,研究了7个遥感器对珊瑚,藻类和碳酸盐砂进行分类的能力。判别和分类分析表明,全分辨率(1 nm)光谱对底部类型提供了很好的光谱分离。我们通过将两个机载高光谱传感器(AAHIS和AVIRIS),三个卫星宽带多光谱传感器(Ikonos,Landsat-ETM +和SPOT-HRV)和两个假设卫星的光谱响应应用于原位光谱,来评估传感器的光谱能力窄带多光谱传感器(Proto和CRESPO)。对AAHIS,AVIRIS,Proto,CRESPO,Ikonos,Landsat-ETM +进行模拟的传感器特定光谱的分类分析可得出98%,98%,93%,91%,64%,58%和50%的总体分类准确率,和SPOT-HRV。线性混合传感器特定光谱的分析表明,高光谱和窄带多光谱传感器具有在多种混合水平下区分珊瑚和藻类的能力,而宽带多光谱传感器则没有。将一般混合分析的结果应用于珊瑚,藻类和沙子的特定空间组织后,无论像素分辨率如何,高光谱传感器都能准确估算底部类型的区域覆盖。窄带多光谱传感器高估了11-15%的珊瑚覆盖率,而宽带传感器低估了7-29%的藻类覆盖率,高估了24-103%的珊瑚覆盖率。我们得出的结论是,目前可用的卫星传感器不足以评估全球珊瑚礁的状况,但是设计适合该任务的传感器系统既有必要,也有可能。 (C)2003 Elsevier Science Inc.保留所有权利。 [参考:53]

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