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Predicting categorical forest variables using an improved k-Nearest Neighbour estimator and Landsat imagery

机译:使用改进的k最近邻估计器和Landsat图像预测分类森林变量

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The k-Nearest Neighbour (k-NN) estimation and prediction technique is widely used to produce pixel-level predictions and areal estimates of continuous forest variables such as area and volume, often by sub-categories such as species. An advantage of k-NN is that the same parameters (e.g., k-value, distance metric, weight vector for the feature space variables) can be used for all variables, whether continuous or categorical. An obvious question is the degree to which accuracy can be improved if the k-NN estimation parameters are tailored for specific variable groups such as volumes by tree species or categorical variables. We investigated prediction of categorical forest attribute variables from satellite image spectral data using k-NN with optimisation of the weight vector for the ancillary variables obtained using a genetic algorithm. We tested several genetic algorithm fitness functions, all derived from well-known accuracy measures. For a Finnish test site, the categorical forest attribute variables were site fertility and tree species dominance, and for an Italian test site, the variables were forest type and conifer/broad-leaved dominance. The results for both test sites were validated using independent data sets. Our results indicate that use of the genetic algorithm to optimize the weight vector for prediction of a single forest attribute variable had a slight positive effect on the prediction accuracies for other variables. Errors can be further decreased if the optimisation is done by variable groups.
机译:k最近邻(k-NN)估计和预测技术被广泛用于生成连续森林变量(例如面积和体积)的像素级预测和面积估计,通常按子类别(例如物种)进行。 k-NN的一个优点是可以对所有变量(连续或分类)使用相同的参数(例如,k值,距离度量,特征空间变量的权重向量)。一个明显的问题是,如果为特定变量组(例如,按树种划分的体积或类别变量)定制k-NN估计参数,则可以提高精度的程度。我们调查了使用k-NN从卫星图像光谱数据中预测分类森林属性变量的预测,并优化了权重向量,以利用遗传算法获得辅助变量。我们测试了几种遗传算法的适应度函数,所有这些函数均来自众所周知的精度度量。对于芬兰的测试点,分类的森林属性变量是站点的肥力和树种的优势,而对于意大利的测试点,变量是森林类型和针叶树/阔叶树的优势。两个测试地点的结果均使用独立的数据集进行了验证。我们的结果表明,使用遗传算法优化权重向量来预测单个森林属性变量对其他变量的预测准确性有轻微的积极影响。如果通过变量组进行优化,则可以进一步减少错误。

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