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A COST-EFFECTIVE, RULE-BASED TECHNIQUE TO IMPROVE FORESTRY INVENTORY ON A NATIONAL SCALE

机译:基于经济型规则的技术,以改善全国范围的林业库存

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Although South Africa's current National Forestry Inventory (NFI) provides a good foundation for forestry planning on a national level, its accuracy and scale are inadequate for monitoring and management on a local level. Consequently, a more accurate, larger-scale NFI is urgently needed. However, updating the current NFI using traditional supervised classification techniques would be extremely costly. This article assesses the possibility of using an expert-system, rule-based remote sensing technique to map forests cost-effectively. A rule-set was created for SPOT 5 imagery in an object-orientated environment where a variety of different spectral and textural features were tested for potential use in forestry classification in two areas near Richards Bay, South Africa. Rule-set accuracies exceeded 90% for both areas and were comparable to an object-orientated supervised classification performed on the same areas. The supervised classification, however, required user-intensive training area delineation for each image classified, while the rule-set classifier did not. It was concluded that the higher level of automation shown by the rule-set classifier rendered it more cost-effective for mapping forests on a national scale.
机译:虽然南非当前的国家林业库存(NFI)为国家一级的林业规划提供了良好的基础,但其准确性和规模不足以在地方一级监测和管理不足。因此,迫切需要更准确,更大的NFI。但是,使用传统的监督分类技术更新当前的NFI将是非常昂贵的。本文评估了使用专家系统,基于规则的遥感技术的可能性有效地映射森林。在面向对象环境中为点5图像创建了规则集,其中测试了各种不同的光谱和纹理特征,以便在南非Richards Bay附近的两个地区进行林业分类潜在使用。对两个区域的规则设定精度超过90%,并且与在同一区域执行的面向对象的监督分类相当。但是,监督分类需要对分类的每个图像的用户密集型训练区域描绘,而规则集分类器则没有。结论是,规则集分类器所示的较高级别的自动化呈现,对全国规模绘制林更具成本效益。

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