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Hyperspectral Image Classification Based on Multilayer Perceptron Trained with Eigenvalue Decay

机译:基于Multidayer Perceptron培训的高光谱图像分类,具有特征值衰减

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摘要

Hyperspectral Images (HSI) require sufficient labeled samples and a complex classifier to identify an area. Support Vector Machine (SVM) is one of the most competent algorithms in this field. Neural Networks (NN) is another approach used for classification problems, and both have been widely proposed in the literature. The Convolutional Neural Network (CNN) method has also received significant attention in the deep learning field recently. Nevertheless, during NN training, the overfitting problem may cause continuous dragging of the algorithm toward larger error. In this case, a regularization technique is needed to constitute the most useful decision boundary. The Eigenvalue Decay method is one of the regularization techniques that may be applied for HSI. This study investigates the performance of Multilayer Perceptron trained with an Eigenvalue Decay (MLP-ED) algorithm for HSI classification. The SVM, CNN with Pixel-Pair and CNN-Ensemble methods are used as comparison algorithms for MLP-ED performance assessment. All methods were tested with 3 different high-resolution HSI datasets. While SVM is one of the classic classifiers, and the 2 new CNN algorithms show high performance, the proposed MLP-ED method has more computational efficiency and achieves higher success than the others do.
机译:高光谱图像(HSI)需要足够的标记样本和复杂的分类器来识别区域。支持向量机(SVM)是该字段中最能力的算法之一。神经网络(NN)是用于分类问题的另一种方法,并且两者都在文献中被广泛提出。卷积神经网络(CNN)方法最近在深度学习领域也得到了重大关注。然而,在NN训练期间,过度装备问题可能导致算法往更大的误差持续拖动。在这种情况下,需要正则化技术来构成最有用的决策边界。特征值衰减方法是可以应用于HSI的正则化技术之一。本研究调查了具有特征值衰减(MLP-ED)算法的Multilayer Perceptron的性能,用于HSI分类。具有像素对和CNN-集合方法的SVM,CNN用作MLP-ED性能评估的比较算法。用3个不同的高分辨率HSI数据集测试所有方法。虽然SVM是经典分类器之一,而且2个新的CNN算法显示出高性能,所以提出的MLP-ED方法具有更多的计算效率,并且成功比其他方式更高。

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  • 来源
    《Canadian Journal of Remote Sensing》 |2020年第3期|253-271|共19页
  • 作者单位

    Vocational School of Gerze Sinop University Sinop Street No:55 57600 / Gerze Sinop Turkey;

    Faculty of Technology Department of Electrical - Electronics Engineering Marmara University Goztepe Campus 34722 / Kadık€oy Istanbul Turkey;

    Vocational School of Technical Sciences Marmara University Campus 34722 / Kadikoey Istanbul Turkey;

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