基于卷积神经网络的高光谱图像开放分类

Tingting Huang, Shuang Wang, Geng Zhang, Xueji Wang, Song Liu
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引用次数: 0

摘要

高光谱图像分类在工业、农业和军事领域的应用越来越重要。近年来,基于深度学习的方法大大提高了HIS分类的准确率。然而,大多数深度学习模型倾向于将所有样本分类到训练数据中存在的类别中。在现实世界的分类任务中,很难从整个高光谱图像中存在的所有类别中获得样本。本文设计了一个基于卷积神经网络和概率阈值(CNPT)的框架来处理开放类别分类问题。该方法将训练过程中不存在的类别样本标记为未知类别,而不是将其分类为任何已知类别。我们首先从标记数据中获得未见类的样本。通过充分利用HSI的频谱空间信息的轻量级卷积网络,我们获得了每个样本的每个见类的概率。通过在最大概率上添加阈值,我们将一些样本分类到未知类别。本文提出了一种同时考虑未见类的召回率和已见类的总体准确率的平衡分数Fue,并用它来选择阈值并评价CNPT的性能。实验结果表明,本文提出的算法在高光谱数据上具有良好的性能,并且在不同的数据集上具有通用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Open-Category Classification of Hyperspectral Images based on Convolutional Neural Networks
The application of the hyperspectral image (HSI) classification has become increasingly important in industry, agriculture and military. In recent years, the accuracy of HIS classification has been greatly improved through deep learning based methods. However, most of the deep learning models tend to classify all the samples into categories that exist in the training data. In real-world classification tasks, it is difficult to obtain samples from all categories that exist in the whole hyperspectral image. In this paper, we design a framework based on convolutional neural networks and probability thresholds(CNPT) in order to deal with the open-category classification(OCC) problem. Instead of classifying samples of categories that do not exist in the training process to be any known class, the proposed method mark them as unseen category. We first get samples of unseen class from labeled data. With a lightweight convolutional network that fully uses the spectral-spatial information of HSI, we obtain the probabilities for each seen class for every sample. By adding a threshold to the maximum probabilities, we classify some samples to unseen category. A balanced score called Fue which considers both the recall rate of unseen class and the overall accuracy of seen classes is proposed in this paper, and we use it to select the threshold and evaluate the performance of CNPT. The experimental results show that our proposed algorithm performs well on hyperspectral data, and has generalizability on different datasets.
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