基于不平衡学习和超参数整定方法的高光谱图像混合像素分类

Purwadi Purwadi, Nor Azman Abu, Othman Bin Mohd, Bagus Adhi Kusuma
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引用次数: 0

摘要

高光谱影像技术在土地分类中相对于普通的RGB和多光谱影像具有明显的优势。这项技术具有广谱的电磁波,可以比其他类型的图像更详细。因此,具有高光谱优势的物体特征应该具有较高的被识别和区分的概率。然而,由于数据量大,如何减轻计算负担成为一个挑战。与其他类型的图像相比,高光谱图像有一个巨大的现象,因为它是3D图像,所以计算量很大。高光谱图像分类面临的问题是计算量大,特别是当图像的空间分辨率还存在混合像元问题时。本研究使用EO-1卫星图像,空间分辨率为30米,混合像元问题。本研究采用一种分类方法来减轻计算负担,同时提高分类精度值。使用的方法是卫星图像预处理,包括几何校正和图像增强,其中校正为几何校正和大气校正。然后,为了减轻计算量,采用了Slab和PCA方法。获得特征后,使用支持向量机(SVM)将其输入到引导学习模型中,进行五类或多类分类。此外,不平衡学习方法被证明可以提高准确性。ADASYN方法获得的结果最好,准确率为96.58%,而特征提取方法的计算时间更快。
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Mixed Pixel Classification on Hyperspectral Image Using Imbalanced Learning and Hyperparameter Tuning Methods
Hyperspectral image technology in land classification is a distinct advantage compared to ordinary RGB and multispectral images. This technology has a wide spectrum of electromagnetic waves, which can be more detailed than other types of imagery. Therefore, with its hyperspectral advantages, the characteristics of an object should have a high probability of being recognized and distinguished. However, because of the large data, it becomes a challenge to lighten the computational burden. Hyperspectral has a huge phenomenon that makes computations heavy compared to other types of images because this image is 3D. The problem faced in hyperspectral image classification is the high computational load, especially if the spatial resolution of the image also has mixed pixel problems. This research uses EO-1 satellite imagery with a spatial resolution of 30 meters and a mixed pixel problem. This study uses a classification method to lighten the computational burden and simultaneously increase the value of classification accuracy. The method used is satellite image pre-processing, including geometric correction and image enhancement using FLAASH while the corrections are geometric correction and atmospheric correction. Then to lighten the computational burden, the steps carried out are using the Slab and PCA method. After obtaining the characteristics, they are entered into a guided learning model using a support vector machine (SVM) for the five-class or multiclass classification. Moreover, the imbalance learning method is proven to produce increased accuracy. The best results were achieved by the ADASYN method with an accuracy of 96.58%, while the computational time became faster with the feature extraction method.
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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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