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Object-Based Image Classification of Summer Crops with Machine Learning Methods

机译:基于机器学习方法的夏季农作物基于对象的图像分类

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The strategic management of agricultural lands involves crop field monitoring each year. Crop discrimination via remote sensing is a complex task, especially if different crops have a similar spectral response and cropping pattern. In such cases, crop identification could be improved by combining object-based image analysis and advanced machine learning methods. In this investigation, we evaluated the C4.5 decision tree, logistic regression (LR), support vector machine (SVM) and multilayer perceptron (MLP) neural network methods, both as single classifiers and combined in a hierarchical classification, for the mapping of nine major summer crops (both woody and herbaceous) from ASTER satellite images captured in two different dates. Each method was built with different combinations of spectral and textural features obtained after the segmentation of the remote images in an object-based framework. As single classifiers, MLP and SVM obtained maximum overall accuracy of 88%, slightly higher than LR (86%) and notably higher than C4.5 (79%). The SVM+SVM classifier (best method) improved these results to 89%. In most cases, the hierarchical classifiers considerably increased the accuracy of the most poorly classified class (minimum sensitivity). The SVM+SVM method offered a significant improvement in classification accuracy for all of the studied crops compared to the conventional decision tree classifier, ranging between 4% for safflower and 29% for corn, which suggests the application of object-based image analysis and advanced machine learning methods in complex crop classification tasks.
机译:农用土地的战略管理每年都要进行田间监测。通过遥感对作物进行区分是一项复杂的任务,尤其是当不同作物具有相似的光谱响应和作物模式时。在这种情况下,可以通过结合基于对象的图像分析和先进的机器学习方法来改进作物识别。在这项调查中,我们评估了C4.5决策树,逻辑回归(LR),支持向量机(SVM)和多层感知器(MLP)神经网络方法,它们既作为单个分类器,又在分层分类中组合在一起,用于映射来自ASTER卫星图像的两种不同日期捕获的9种主要夏季作物(木本和草本)。在基于对象的框架中对远程图像进行分割之后,将光谱和纹理特征的不同组合构建为每种方法。作为单一分类器,MLP和SVM的最大总体准确度为88%,略高于LR(86%),并且明显高于C4.5(79%)。 SVM + SVM分类器(最佳方法)将这些结果提高到89%。在大多数情况下,分层分类器大大提高了分类最差的分类的准确性(最低灵敏度)。与传统的决策树分类器相比,SVM + SVM方法对所有研究农作物的分类准确度都有了显着提高,介于红花的4%和玉米的29%之间,这表明了基于对象的图像分析的应用和先进复杂作物分类任务中的机器学习方法。

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