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首页> 外文期刊>International journal of remote sensing >Monitoring Posidonia oceanica meadows in a Mediterranean coastal lagoon (Stagnone, Italy) by means of neural network and ISODATA classification methods
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Monitoring Posidonia oceanica meadows in a Mediterranean coastal lagoon (Stagnone, Italy) by means of neural network and ISODATA classification methods

机译:通过神经网络和ISODATA分类方法监测地中海沿岸泻湖(意大利斯泰尼翁)的波西多尼亚海洋草甸

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摘要

ISODATA (Iterative Self-Organizing Data Technique of Analysis) and neural network classification methods were carried out to map shallow Posidonia oceanica meadows in coastal areas of the Mediterranean Sea, using Coastal Zone Colour Scanner (CZCS) airborne sensor data obtained at different altitudes and an aerophotogrammetric image. Reference test points of P. oceanica have been checked against aerial photographs. The neural-based classification method gives the best performance (92-95%) for all the images of the set, except for the highest altitude flight (1000 m, accuracy 74%). ISODATA classification of CZCS images was generally more accurate (81-85%) than applied to the aerophotogrammetric image (79%). The study also indicated that 4m represents the 'critical' resolution useful for the extraction of reliable information within the study analysed area. Where P. oceanica forms dense and continuous meadows, a lower resolution (such as those obtainable from satellite sensors) could be successfully applied.
机译:运用ISODATA(分析的迭代自组织数据技术)和神经网络分类方法,使用在不同高度和不同高度获得的沿海地带彩色扫描仪(CZCS)机载传感器数据,绘制了地中海沿岸地区的浅波西多尼亚大洋草甸的地图。航空摄影图像。已对P. oceanica的参考测试点进行了航空照片检查。基于神经的分类方法,除了最高海拔飞行(1000 m,准确度74%)外,对于集合的所有图像都具有最佳性能(92-95%)。 CZCS图像的ISODATA分类通常比应用于航空摄影测量图像(79%)更准确(81-85%)。研究还表明,4m代表“关键”分辨率,可用于在研究分析区域内提取可靠信息。在大洋假单胞菌形成茂密而连续的草地的地方,可以成功地使用较低的分辨率(例如从卫星传感器获得的分辨率)。

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