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Object-oriented and pixel-based classification approaches to classify tropical successional stages using airborne high-spatial resolution images

机译:面向对象和基于像素的分类方法,使用机载高空间分辨率图像对热带演替阶段进行分类

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摘要

Airborne high-spatial resolution images were evaluated for mapping purposes in a complex Atlantic rainforest environment in southern Brazil. Two study sites, covered predominantly by secondary evergreen rainforest, were surveyed by airborne multispectral high-resolution imagery. These aerophotogrammetric images were acquired at four spectral bands (visible to near-infrared) with spatial resolution of 0.39m. We evaluated different data input scenarios to suit the object-oriented classification approach. In addition to the four spectral bands, auxiliary products such as band ratios and digital elevation models were considered. Comparisons with traditional pixel-based classifiers were also performed. The results showed that the object-based classification approach yielded a better overall accuracy, ranging from 89% to 91%, than the pixel-based classifications, which ranged from 62% to 63%. The individual classification accuracy of forest-related classes, such as young successional forest stages, benefits the object-based approach. These classes have been reported in the literature as the most difficult to map in tropical environments. The results confirm the potential of object-based classification for mapping procedures and discrimination of successional forest stages and other related land use and land cover classes in complex Atlantic rainforest environments. The methodology is suggested for further SAAPI acquisitions in order to monitor such endangered environment as well as to support National Land and Environmental Management Protocols.
机译:为了在巴西南部复杂的大西洋雨林环境中作图,对机载高空间分辨率图像进行了评估。通过机载多光谱高分辨率影像对两个研究地点进行了调查,这些研究地点主要被次生常绿雨林覆盖。这些航空摄影测量图像是在四个光谱带(可见到近红外)采集的,空间分辨率为0.39m。我们评估了不同的数据输入方案,以适应面向对象的分类方法。除四个光谱带外,还考虑了辅助产品,例如带比和数字高程模型。还与传统的基于像素的分类器进行了比较。结果表明,与基于像素的分类方法(62%至63%)相比,基于对象的分类方法产生了更好的总体准确性,范围从89%到91%。与森林相关的类(例如年轻演替森林阶段)的个体分类准确性,有利于基于对象的方法。据文献报道,这些类别是热带环境中最难测绘的。结果证实,在复杂的大西洋雨林环境中,基于对象的分类方法可用于制图程序和区分演替森林阶段以及其他相关土地利用和土地覆盖类别的潜力。建议将该方法用于进一步的SAAPI采购,以监控此类濒临灭绝的环境并支持《国家土地和环境管理协议》。

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