首页> 外文会议>International archives of the photogrammetry, remote sensing and spatial information sciences proceedings >MERGING RANDOM FOREST CLASSIFICATION WITH AN OBJECT-ORIENTED APPROACH FOR ANALYSIS OF AGRICULTURAL LANDS
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MERGING RANDOM FOREST CLASSIFICATION WITH AN OBJECT-ORIENTED APPROACH FOR ANALYSIS OF AGRICULTURAL LANDS

机译:用面向对象的方法合并随机森林分类,用于分析农业土地

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Machine learning algorithms recently have made major advances, with decision tree classifiers gaining wide acceptance. Boosting and bagging of decision trees have added to the predictive capabilities of these approaches. Object-oriented (O-O) analyses have been developed during this same period, offering important improvements in classification over pixel-based approaches under certain conditions. Classification algorithms for O-O approaches, however, have been fairly limited and generally have not incorporated new statistical approaches used for pixel-based classifications. One of the most promising new classification algorithms is Random Forest (Breiman-Cutler) classification (RF). We incorporated RF into an O-O classification of Landsat-based imagery for mapping agricultural lands in north-central Montana, USA. The Definiens multi-resolution segmentation algorithm was used to generate field-based objects. RF was used to classify land management (tillage, conservation reserve, crop/fallow) based on reference data from>400 field sites. Object-based attributes included factors such as average spectral response, spectral variability, texture, and shape characteristics. Accuracy was assessed using "out-of-bag" estimates in RF. This classification approach was able to efficiently and accurately merge RF with an object-oriented approach for improved classifications.
机译:机器学习算法最近已经取得了重大进展,决策树分类器获得了广泛的接受。决策树的提升和袋装已添加到这些方法的预测功能中。面向对象(O-O)分析在同一时期开发,在某些条件下提供了基于像素的方法的分类的重要改进。然而,O-O方法的分类算法已经相当限制,并且通常没有结合用于基于像素的分类的新统计方法。最有前途的新分类算法之一是随机森林(BREIMAN-CONTLER)分类(RF)。我们将RF纳入了美国蒙大拿北部蒙大拿州山地农业土地的土地物地理造影的O-O分类。验证多分辨率分割算法用于生成基于字段的对象。 RF用于根据来自> 400个现场网站的参考数据对土地管理(耕作,保护储备,作物/休耕)进行分类。基于对象的属性包括平均光谱响应,光谱可变性,纹理和形状特性等因素。使用RF中的“超袋”估计评估了准确性。这种分类方法能够以对面向对象的方法有效准确地合并RF,以改善分类。

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