首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Forest Type Mapping using Object-specific Texture Measures from Multispectral Ikonos Imagery: Segmentation Quality and Image Classification Issues
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Forest Type Mapping using Object-specific Texture Measures from Multispectral Ikonos Imagery: Segmentation Quality and Image Classification Issues

机译:使用来自多光谱Ikonos影像的特定于对象的纹理量度进行森林类型映射:分割质量和图像分类问题

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摘要

This study investigated the use of a geographic object-based image analysis (GEOBIA) approach with the incorporation of object-specific grey-level co-occurrence matrix (GLCM) texture measures from a multispectral Ikonos image for delineation of deciduous, evergreen, and mixed forest types in Guilford Courthouse National Military Park, North Carolina. A series of automated segmentations was produced at a range of scales, each resulting in an associated range of number and size of objects (or segments). Prior to classification, the spatial autocorrelation of each segmentation was evaluated by calculating Moran's I using the average image digital numbers (DNS) per segment. An initial assumption was made that the optimal segmentation scales would have the lowest spatial autocorrelation, and conversely, that over- and under-segmentation would result in higher autocorrelation between segments. At these optimal segmentation scales, the automated segmentation was found to yield information comparable to manually interpreted stand-level forest maps in terms of the size and number of segments. A series of object-based classifications was carried out on the image at the entire range of segmentation scales. The results demonstrated that the scale of segmentation directly influenced the object-based forest type classification results. The accuracies were higher for classification of images identified from a spatial autocorre-lation analysis to have an optimal segmentation, compared to those determined to haveover- and under-segmentation. An overall accuracy of 79 percent with a Kappa of 0.65 was obtained at the optimal segmentation scale of 19. The addition of object-specific GLCM multiple texture analysis improved classification accuracies up to a value of83 percent overall accuracy and a Kappa of 0.71 by reducing the confusion between evergreen and mixed forest types. Although some misclassification still remained because of local segmentation quality, a visual assessment of the texture-enhanced GEOBIAclassification generally agreeable with manually interpreted forest types.
机译:这项研究调查了基于地理对象的图像分析(GEOBIA)方法的使用,该方法结合了来自多光谱Ikonos图像的对象特定的灰度共现矩阵(GLCM)纹理度量,用于描绘落叶,常绿和混合北卡罗来纳州吉尔福德法院国家军事公园的森林类型。在一系列比例尺上产生了一系列自动分段,每个分段都导致了对象(或分段)的数量和大小的相关范围。在分类之前,通过使用每个片段的平均图像数字量(DNS)计算Moran's I来评估每个片段的空间自相关。最初的假设是最佳分割尺度将具有最低的空间自相关,相反,过度分割和分割不足会导致段之间的较高自相关。在这些最佳分割尺度下,发现自动分割产生的信息在分割大小和数量上可与手动解释的标准林图相媲美。在整个分割尺度范围内,对图像进行了一系列基于对象的分类。结果表明,分割的规模直接影响基于对象的森林类型分类结果。与确定为分割过度和分割不足的图像相比,通过空间自相关分析确定的图像分类具有最佳分割的准确性更高。在最佳分割比例为19时,总体准确度为79%,Kappa为0.65。通过添加特定于对象的GLCM多重纹理分析,分类准确度可降低83%,Kappa值为0.71。常绿和混交林类型之间的混淆。尽管由于局部分割质量仍然存在一些错误分类,但对纹理增强的GEOBIA分类进行视觉评估通常与人工解释的森林类型相符。

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