强约束自训练算法及其在遥感图像分类中的应用研究

Zhengwu Yuan, Caigui Lin
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引用次数: 4

摘要

遥感图像分类是遥感应用的关键。由于地理区域大,遥感影像具有较高的时序频率。在数据不平衡或数据少的情况下,传统的神经网络很难很好地学习遥感图像的表征。同时,遥感图像容易获取,但难以标记。以前提高遥感图像分类精度的工作涉及改进卷积神经网络(CNN)的结构。然而,本文提出的半监督学习算法强约束自训练(SCS)将CNN分类器作为一个单元,忽略了网络的详细结构。最初,SCS使用标记数据集来训练基本分类器。其次,训练好的分类器对未标记的数据进行标记,并在标记数据集中加入带有伪标签的数据,共同训练下一个分类器。最后,下一个分类器改变其角色为基于分类器的分类器,继续训练下一个分类器。在此过程中,阈值是通过分类器给出的置信度系数过滤带有伪标签的数据的门。此外,阈值随着过程的进行而减小。该算法的关键是选择转换学习来训练一个相当大的基分类器。本文做了大量的实验。在50%比例的AID训练数据和NWPU-RESISC45作为未标记数据集的情况下,该算法对剩余AID数据的准确率达到96.01%。在NWPU-RESISC45数据和AID作为未标记数据的比例为20%的情况下,该算法对其余NWPURESISC45数据的准确率达到93.03%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Strong Constraint Self-training Algorithm and Applied to Remote Sensing Image Classification
The remote sensing image classification is the key to remote sensing applications. Due to the large geographic area with a high temporal frequency of remote sensing image. It is difficult to use the conventional neural network to learn the representations of remote sensing images well under a condition of having an imbalance or few data. Meanwhile, the remote sensing image is easy to get but hard to label. The previous work for improving the accuracy of remote sensing image classification involved improving the structure of the Convolutional Neural Network (CNN). However, a semi-supervised learning algorithm proposed in this paper named Strong Constraint Self-training (SCS) considers the CNN classifier as a unit and ignores the detailed structure of the network. Initially, SCS uses a labeled dataset to train a base classifier. Secondly, the trained classifier to label unlabeled data and the data with pseudo labels join in the labeled dataset jointly train the next classifier. Lastly, the next classifier changes its role to be based classifier continues to train the next classifier. During this process, a threshold value is a gate to filtering the data with pseudo labels through the confidence coefficient that is given by the classifier. Furthermore, the value of the threshold decreasing as the process goes on. The key to this algorithm is to choose to transform learning to train a considerable base classifier. Extensive experiments are done in this paper. On a 50% ratio of AID training data and the NWPU-RESISC45 as an unlabeled dataset, the proposed algorithm achieves 96.01% on the rest of the AID data. On a 20% ratio of NWPU-RESISC45 data and the AID as an unlabeled dataset, this algorithm achieves 93.03% on the rest of NWPURESISC45 data.
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