首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Object-based detailed vegetation classification with airborne high spatial resolution remote sensing imagery.
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Object-based detailed vegetation classification with airborne high spatial resolution remote sensing imagery.

机译:基于对象的详细植被分类以及机载高空间分辨率遥感影像。

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In this paper, we evaluate the capability of the high spatial resolution airborne Digital Airborne Imaging System (DAIS) imagery for detailed vegetation classification at the alliance level with the aid of ancillary topographic data. Image objects as minimum classification units were generated through the Fractal Net Evolution Approach (FNEA) segmentation using eCognition software. For each object, 52 features were calculated including spectral features, textures, topographic features, and geometric features. After statistically ranking the importance of these features with the classification and regression tree algorithm (CART), the most effective features for classification were used to classify the vegetation. Due to the uneven sample size for each class, we chose a non-parametric (nearest neighbour) classifier. We built a hierarchical classification scheme and selected features for each of the broadest categories to carry out the detailed classification, which significantly improved the accuracy. Pixel-based maximum likelihood classification (MLC) with comparable features was used as a benchmark in evaluating our approach. The object-based classification approach overcame the problem of salt-and-pepper effects found in classification results from traditional pixel-based approaches. The method takes advantage of the rich amount of local spatial information present in the irregularly shaped objects in an image. This classification approach was successfully tested at Point Reyes National Seashore in Northern California, USA, to create a comprehensive vegetation inventory. Computer-assisted classification of high spatial resolution remotely sensed imagery has good potential to substitute or augment the present ground-based inventory of National Park lands..
机译:在本文中,我们将借助辅助地形数据评估高空间分辨率机载数字机载成像系统(DAIS)图像在联盟级别进行详细植被分类的能力。使用eCognition软件通过分形网络进化方法(FNEA)分割生成图像对象作为最小分类单位。对于每个对象,计算了52个特征,包括光谱特征,纹理,地形特征和几何特征。在使用分类和回归树算法(CART)对这些特征的重要性进行统计学排名之后,使用最有效的分类特征对植被进行分类。由于每个类别的样本量不均,我们选择了非参数(最近邻)分类器。我们建立了分层的分类方案,并为每个最广泛的类别选择了特征,以进行详细的分类,从而显着提高了准确性。具有可比功能的基于像素的最大似然分类(MLC)被用作评估我们方法的基准。基于对象的分类方法克服了传统基于像素的方法在分类结果中发现的椒盐效应问题。该方法利用了图像中形状不规则的对象中存在的大量局部空间信息。这种分类方法已在美国北加利福尼亚的雷耶斯角国家海岸成功进行了测试,以建立综合的植被清单。高空间分辨率遥感影像的计算机辅助分类具有替代或增加国家公园土地目前基于地面的清单的良好潜力。

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