基于植物物候隐马尔可夫模型的作物类型识别

Paula Beatriz Cerqueira Leite, R. Feitosa, A. Formaggio, G. Costa, K. Pakzad, I. Sanches
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引用次数: 5

摘要

本文介绍了一种基于隐马尔可夫模型(HMM)的农作物分类技术。该方法通过分析一系列卫星图像上的光谱剖面来识别不同的作物。不同的hmm,每个考虑的作物类别都有一个,用于将作物周期变化的光谱响应与植物物候联系起来。该方法为给定的图像片段指定裁剪类,其对应的HMM在发射观测到的光谱值序列方面具有最高的概率。实验是在先前分类的12幅LANDSAT图像的序列上进行的。将提出的多时间点分类方法与单时间点最大似然分类器的性能进行了比较,结果表明基于hmm的方法具有显著的优势,对于包含单一作物类别的数据序列,其识别正确作物的平均准确率不低于93%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crop Type Recognition Based on Hidden Markov Models of Plant Phenology
This work introduces a hidden Markov model (HMM) based technique to classify agricultural crops. The method recognizes different crops by analyzing their spectral profiles over a sequence of satellite images. Different HMMs, one for each of the considered crop classes, are used to relate the varying spectral response along the crop cycles with plant phenology. The method assigns for a given image segment the crop class whose corresponding HMM presents the highest probability of emitting the observed sequence of spectral values. Experiments were conducted upon a sequence of 12 previously classified LANDSAT images. The performance of the proposed multitemporal classification method was compared to that of a monotemporal maximum likelihood classifier, and the results indicated a remarkable superiority of the HMM-based method, which achieved an average of no less than 93% accuracy in the identification of the correct crop, for sequences of data containing a single crop class.
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