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Species classification of individually segmented tree crowns in high-resolution aerial images using radiometric and morphologic image measures

机译:使用辐射度和形态学图像度量方法对高分辨率航空图像中的单独分割的树冠进行物种分类

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摘要

This paper presents a method to automatically classify segmented tree crowns from high spatial resolution colour infrared aerial images as one of the four most common tree species in Sweden, The species are Norway spruce (Picea abies Karst), Scots pine (Pinus sylvestris L.), birch (Betula pubescens Ehrh.), and aspen (Populus tremula L.). The proposed method uses four different image measures, one measure for each species. The measures are based on colour information as well as the shape of the segmented tree crowns. A segment is examined by the measures one by one and if one measure becomes true, the segment is interpreted, as that species. The analysis continues with the next segment. The method is evaluated on two sets of images. The first set consists of 14 images of naturally regenerated forest with pixel size corresponding to 3 cm. These images contain approximately 50 visible tree crowns each; a total of 791 crown segments are used. The overall classification result for these images is 77%. If only the distinction between conifers and deciduous is made, the result is 91%. The second set consists of two images with a pixel size of 10 cm. Here, the overall classification result is 71%.
机译:本文提出了一种从高空间分辨率彩色红外航空影像中自动将树冠进行分类的方法,该方法是瑞典最常见的四种树种之一,该树种是挪威云杉(Picea abies Karst),苏格兰松树(Pinus sylvestris L.) ,桦木(Betula pubescens Ehrh。)和白杨(Populus tremula L.)。所提出的方法使用四种不同的图像度量,每种物种一种度量。这些措施基于颜色信息以及分段树冠的形状。一个段将通过度量逐个检查,如果一项度量成立,则将该段解释为该物种。分析将继续进行下一部分。该方法在两组图像上进行评估。第一组包括14张自然再生森林的图像,像素大小对应于3 cm。这些图像每个包含大约50个可见的树冠;总共使用了791个冠段。这些图像的总体分类结果为77%。如果仅对针叶树和落叶树进行区分,则结果为91%。第二组包括两个像素大小为10 cm的图像。此处,总体分类结果为71%。

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