从可能不完整的遥感数据中提取监督学习分类器

Bhekisipho Twala, Thembinkosi Nkonyana
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引用次数: 4

摘要

近年来,利用遥感数据对人类住区进行制图和分类引起了人们的广泛关注。然而,现实世界的数据经常受到损坏或干扰,但并不总是为人所知。这是基于信息的遥感模型的核心。本文研究了不完整遥感数据在评估机器学习技术(分类器)对不同土地覆盖区域类型的预测或分类任务中的影响。通过使用多光谱图像数据集人工模拟不同的缺失数据比例、模式和机制,对六个分类器进行了经验评估。采用四向重复测量设计对数据进行分析。仿真结果表明,分类器在处理不完整数据问题方面有其优势和局限性,人工神经网络分类器实质上是劣势,naïve贝叶斯分类器和支持向量机代表了优势。
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Extracting Supervised Learning Classifiers from Possibly Incomplete Remotely Sensed Data
Mapping and classification of human settlements from remotely sensed data has attracted a lot of attention in recent years. Real world data, however, often suffer from corruptions or noise but not always known. This is the heart of information-based remote sensing models. This paper investigates the impact of incomplete remotely sensed data in the evaluation of machine learning techniques (classifiers) for the task of predicting or classifying pixels into different land cover region types. Six classifiers are empirically evaluated by artificially simulating different missing data proportions, patterns and mechanisms using a multispectral image dataset. A 4-way repeated measures design is employed to analyse the data. The simulation results suggest classifiers as having their strengths and limitations in terms of dealing with the incomplete data problem with the artificial neural network classifier as substantially inferior and naïve Bayes classifier and support vector machines representing superior approaches.
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