首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Tree species classification in tropical forests using visible to shortwave infrared WorldView-3 images and texture analysis
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Tree species classification in tropical forests using visible to shortwave infrared WorldView-3 images and texture analysis

机译:使用短波红外WorldView-3图像和纹理分析对热带森林中的树木进行分类

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摘要

Tropical forest conservation and management can significantly benefit from information about the spatial distribution of tree species. Very-high resolution (VHR) spaceborne platforms have been hailed as a promising technology for mapping tree species over broad spatial extents. WorldView-3, the most advanced VHR sensor, provides spectral data in 16 bands covering the visible to near-infrared (VNIR, 400-1040 nm) and shortwave-infrared (SWIR, 1210-2365 nm) wavelength ranges. It also collects images at unprecedented levels of details using a panchromatic band with 0.3-m of spatial resolution. However, the potential of WorldView-3 at its full spectral and spatial resolution for tropical tree species classification remains unknown. In this study, we performed a comprehensive assessment of WorldView-3 images acquired in the dry and wet seasons for tree species discrimination in tropical semi-deciduous forests. Classification experiments were performed using VNIR individually and combined with SWIR channels. To take advantage of the sub-metric resolution of the panchromatic band for classification, we applied an individual tree crown (ITC)-based approach that employed pan sharpened VNIR bands and gray level co-occurrence matrix texture features. We determined whether the combination of images from the two annual seasons improves the classification accuracy. Finally, we investigated which plant traits influenced species detection. The new SWIR sensing capabilities of WorldView-3 increased the average producer's accuracy up to 7.8%, by enabling the detection of non-photosynthetic vegetation within ITCs. The combination of VNIR bands from the two annual seasons did not improve the classification results when compared to the results obtained using images from each season individually. The use of VNIR bands at their original 1.2-m spatial resolution yielded average producer's accuracies of 43.1 +/- 3.1% and 38.8 +/- 3% in the wet and dry seasons, respectively. The ITC -based approach improved the accuracy to 70 +/- 8% in the wet and 68.4 +/- 7.4% in the dry season. Texture analysis of the panchromatic band enabled the detection of species-specific differences in crown structure, which improved species detection. The use of texture analysis, pan-sharpening, and ITC delineation is a potential approach to perform tree species classification in tropical forests with WorldView-3 satellite images.
机译:热带森林的养护和管理可以从有关树种空间分布的信息中受益匪浅。超高分辨率(VHR)星载平台被誉为在广阔空间范围内绘制树种的有前途的技术。 WorldView-3是最先进的VHR传感器,可提供16个波段的光谱数据,覆盖可见到近红外(VNIR,400-1040 nm)和短波红外(SWIR,1210-2365 nm)波长范围。它还使用空间分辨率为0.3 m的全色带以前所未有的细节水平收集图像。但是,WorldView-3在全光谱和空间分辨率下对热带树木物种分类的潜力仍然未知。在这项研究中,我们对干旱和潮湿季节获得的WorldView-3图像进行了综合评估,以区分热带半落叶林中的树木。使用VNIR单独进行分类实验,并与SWIR通道结合使用。为了利用全色带的亚度量分辨率进行分类,我们应用了基于单个树冠(ITC)的方法,该方法采用了泛锐化的VNIR带和灰度级共现矩阵纹理特征。我们确定了来自两个年度季节的图像组合是否可以提高分类精度。最后,我们调查了哪些植物性状影响了物种检测。通过启用ITC内部非光合植被的检测功能,WorldView-3的新SWIR感应功能将平均生产者的准确度提高了7.8%。与使用每个季节的图像分别获得的结果相比,来自两个季节的VNIR波段的组合没有改善分类结果。在原始的1.2米空间分辨率下使用VNIR波段,在潮湿季节和干旱季节,平均生产者的精度分别为43.1 +/- 3.1%和38.8 +/- 3%。基于ITC的方法在潮湿季节将精度提高到70 +/- 8%,在干燥季节将精度提高到68.4 +/- 7.4%。全色带的纹理分析使得能够检测冠状结构中特定于物种的差异,从而改善了物种检测。使用纹理分析,锐化锐化和ITC描绘是使用WorldView-3卫星图像在热带森林中进行树种分类的一种潜在方法。

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