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Forest landscape visual quality evaluation using artificial intelligence techniques as a decision support system

机译:森林景观视觉质量评价使用人工智能技术作为决策支持系统

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摘要

Forest management should be directed towards multifunctional management and utilization of forest services (other than wood production) in order to achieve maximum utilization and minimum degradation. Artificial intelligence enables forest managers to plan for utilization of forest landscape aesthetic values. Visual quality evaluation is a stochastic problem in natural forest landscapes and it is influenced by forest characteristics. We aimed to landscape visual quality evaluation by expert/human-perception-based approach and application of artificial intelligence modeling techniques for the visual quality prediction of forest landscapes. Therefore, we recorded five landscape attributes in 100 forest landscapes. We developed the stochastic model to evaluate visual quality potential by artificial intelligence techniques. Comparing to multi-layer regression (R-2 = 0.588) and multi-layer perceptron (R-2 = 0.847), the radial basis function (RBF) (R-2 = 0.887) model represents the highest value of R(2)in the test data set. The water, shrubs, roads, rocky hills, and trees, in forest landscapes were introduced respectively as the most important attributes which influence the RBF model. The designed graphical user interface tool, as an environmental decision support system, evaluates landscape visual quality of forests, and it helps to solve stochastic problems such as visual quality value.
机译:森林管理应针对多功能管理和利用森林服务(木材生产以外),以实现最大利用率和最低劣化。人工智能使森林经理能够计划利用森林景观审美价值。视觉质量评估是天然森林景观中的随机问题,受森林特征的影响。我们旨在通过专家/人类感知的方法景观视觉质量评估和人工智能建模技术对森林景观视觉质量预测的应用。因此,我们在100个森林景观中录制了五个景观属性。我们开发了随机模型来评估人工智能技术的视觉质量潜力。比较多层回归(R-2 = 0.588)和多层的Perceptron(R-2 = 0.847),径向基函数(RBF)(R-2 = 0.887)模型代表R(2)的最高值在测试数据集中。森林景观中的水,灌木,道路,岩石丘陵和树木被引入为影响RBF模型的最重要的属性。设计的图形用户界面工具作为环境决策支持系统,评估森林的景观视觉质量,有助于解决视觉质量值等随机问题。

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