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Improving Hyperspectral Image Classification using Data Augmentation of Correlated Color Temperature

机译:使用相关色温的数据增强来改善高光谱图像分类

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Machines learning has a huge influence on object classification in the hyperspectral image. In order to obtain a satisfying result, machine learning needs large training data. However, a huge labelled sample for training purpose is hard to obtain. Data Augmentation (DA) is a strategy that can increase the quantity of training data and effective to overcome the limited training samples problem. On the other hand, color is one of the most important features that commonly used in object recognizing. In this study, we first explore how radiance manipulation in hyperspectral images using Correlated Color Temperature (CCT) can be used as the DA. Finally, using an ensemble method and a switching method to optimize the classification results. The experimental results demonstrate that the proposed technique can improve classification performance better than the recent feature selection technique.
机译:机器学习对高光谱图像中的对象分类有很大的影响。为了获得令人满意的结果,机器学习需要大量的训练数据。但是,很难获得用于训练目的的大量标签样本。数据增强(DA)是一种可以增加训练数据量并有效克服有限训练样本问题的策略。另一方面,颜色是对象识别中常用的最重要的功能之一。在这项研究中,我们首先探讨如何使用相关色温(CCT)在高光谱图像中进行辐射度操纵作为DA。最后,使用集成方法和切换方法来优化分类结果。实验结果表明,与最近的特征选择技术相比,该技术可以更好地提高分类性能。

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