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Neural-Based Hierarchical Approach for Detailed Dominant Forest Species Classification by Multispectral Satellite Imagery

机译:多光谱卫星图像分类的神经基层次方法

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Among different forest inventory problems, one of the most basic is defining dominant species. These data are crucial in forest management to determine forest category, and a cheaper remote sensing-based approach would be a useful supplement to field surveys. We used WorldView multispectral satellite imagery to address this problem as an image segmentation task dividing the image into regions with particular dominant species. Neural networks have recently become one of the most useful tools for this kind of problem, including incomplete or erroneous training labels. However, it is still challenging to distinguish between such similar patterns as different forest compositions. To handle this, we represented the multiclass forest classification problem as a hierarchical set of binary classification tasks, which allowed us to reach better results with both high- and medium-resolution satellite imagery. We also examined supplementary data, such as tree height, to improve the species classification results for wider tree age diversity. We conducted experiments considering six neural network architectures to find the best one for each task in the hierarchical decomposition. The proposed approach was tested on sample territories in Leningrad Oblast of Russia, for which the field-based observations were acquired and made publicly available as a single dataset. The proposed approach showed significantly better results (average F1-score 0.84) than multiclass classification (average F1-score 0.7).
机译:在不同的森林库存问题中,最基本的一个是定义主导物种。这些数据在森林管理中至关重要,以确定森林类别,并且较便宜的遥感方法将是实地调查的有用补充。我们使用WorldView MultiSpectral卫星图像来解决这个问题,因为图像分割任务将图像划分为具有特定主导物种的区域。神经网络最近成为这种问题的最有用工具之一,包括不完整或错误的训练标签。然而,区分这种类似林组合物的类似模式仍然挑战。为了处理这一点,我们将多种多组林分类问题代表为分层二进制分类任务,这使我们可以通过高级和中分辨率卫星图像达到更好的结果。我们还检查了树高等补充数据,以改善更广泛的树龄多样性的物种分类结果。我们考虑了考虑六个神经网络架构,以便在分层分解中找到每个任务的最佳选择。拟议的方法在俄罗斯列宁格勒州的样本领土上进行了测试,为此获得了基于实地的观察和公开可用作单个数据集。所提出的方法显示出明显的结果(平均F1-Score 0.84)比多组分类(平均F1 - 得分为0.7)。

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