首页> 外文期刊>Boletim de Ciências Geodésicas >Propaga??o de Afinidade Baseada na Classe para redu??o de dimensionalidade em imagens hiperespectrais e melhoramento da acurácia na classifica??o por Máxima Verossimilhan?a
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Propaga??o de Afinidade Baseada na Classe para redu??o de dimensionalidade em imagens hiperespectrais e melhoramento da acurácia na classifica??o por Máxima Verossimilhan?a

机译:基于类的亲和传播,可降低高光谱图像的维数并提高最大似然分类的准确性

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This paper investigates an alternative classification method that integrates class-based affinity propagation (CAP) clustering algorithm and maximum likelihood classifier (MLC) with the purpose of overcome the MLC limitations in the classification of high dimensionality data, and thus improve its accuracy. The new classifier was named CAP-MLC, and comprises two approaches, spectral feature selection and image classification. CAP clustering algorithm was used to perform the image dimensionality reduction and feature selection while the MLC was employed for image classification. The performance of MLC in terms of classification accuracy and processing time is determined as a function of the selection rate achieved in the CAP clustering stage. The performance of CAP-MLC has been evaluated and validated using two hyperspectral scenes from the Airborne Visible Infrared Imaging Spectrometer (AVIRIS) and the Hyperspectral Digital Imagery Collection Experiment (HYDICE). Classification results show that CAP-MLC observed an enormous improvement in accuracy, reaching 94.15% and 96.47% respectively for AVIRIS and HYDICE if compared with MLC, which had 85.42% and 81.50%. These values obtained by CAP-MLC improved the MLC classification accuracy in 8.73% and 14.97% for these images. The results also show that CAP-MLC performed well, even for classes with limited training samples, surpassing the limitations of MLC.
机译:本文研究了一种替代分类方法,该方法将基于类的亲和力传播(CAP)聚类算法和最大似然分类器(MLC)集成在一起,以克服MLC在高维数据分类中的局限性,从而提高其准确性。新的分类器名为CAP-MLC,它包括两种方法,光谱特征选择和图像分类。 CAP聚类算法用于图像降维和特征选择,而MLC用于图像分类。根据分类精度和处理时间,MLC的性能取决于在CAP聚类阶段达到的选择率。 CAP-MLC的性能已使用来自机载可见红外成像光谱仪(AVIRIS)和高光谱数字影像收集实验(HYDICE)的两个高光谱场景进行了评估和验证。分类结果表明,CAP-MLC的准确度有了很大提高,与MLC的AVIRIS和HYDICE的准确度相比,分别达到了84.42%和81.50%,AVIRIS和HYDICE分别达到了94.15%和96.47%。通过CAP-MLC获得的这些值将这些图像的MLC分类准确性提高了8.73%和14.97%。结果还表明,即使对于训练样本有限的课程,CAP-MLC也表现出色,超过了MLC的局限性。

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