Hyperspectral Image Classification in the Presence of Noisy Labels

被引:168
作者
Jiang, Junjun [1 ]
Ma, Jiayi [2 ]
Wang, Zheng [3 ]
Chen, Chen [4 ]
Liu, Xianming [1 ]
机构
[1] Harbin Inst Technol, Sch Comp Sci & Technol, Harbin 150001, Heilongjiang, Peoples R China
[2] Wuhan Univ, Elect Informat Sch, Wuhan 430072, Hubei, Peoples R China
[3] Natl Inst Informat, Digital Content & Media Sci Res Div, Tokyo 1018430, Japan
[4] Univ N Carolina, Dept Elect & Comp Engn, Charlotte, NC 28223 USA
来源
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING | 2019年 / 57卷 / 02期
基金
中国国家自然科学基金;
关键词
Hyperspectral image classification; label propagation; noisy label; superpixel segmentation; DIMENSIONALITY REDUCTION; SPARSE REPRESENTATION; FUSION; DOMAIN;
D O I
10.1109/TGRS.2018.2861992
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Label information plays an important role in a supervised hyperspectral image classification problem. However, current classification methods all ignore an important and inevitable problem-labels may be corrupted and collecting clean labels for training samples is difficult and often impractical. Therefore, how to learn from the database with noisy labels is a problem of great practical importance. In this paper, we study the influence of label noise on hyperspectral image classification and develop a random label propagation algorithm (RLPA) to cleanse the label noise. The key idea of RLPA is to exploit knowledge (e.g., the superpixel-based spectral-spatial constraints) from the observed hyperspectral images and apply it to the process of label propagation. Specifically, the RLPA first constructs a spectral-spatial probability transform matrix (SSPTM) that simultaneously considers the spectral similarity and superpixel-based spatial information. It then randomly chooses some training samples as "clean" samples and sets the rest as unlabeled samples, and propagates the label information from the "clean" samples to the rest unlabeled samples with the SSPTM. By repeating the random assignment (of "clean" labeled samples and unlabeled samples) and propagation, we can obtain multiple labels for each training sample. Therefore, the final propagated label can be calculated by a majority vote algorithm. Experimental studies show that the RLPA can reduce the level of noisy label and demonstrates the advantages of our proposed method over four major classifiers with a significant margin-the gains in terms of the average overall accuracy, average accuracy, and kappa are impressive, e.g., 9.18%, 9.58%, and 0.1043. The MATLAB source code is available at https://github.com/junjun-jiang/RLPA.
引用
收藏
页码:851 / 865
页数:15
相关论文
共 50 条
[21]   Spatial-Aware Network for Hyperspectral Image Classification [J].
Wei, Yantao ;
Zhou, Yicong .
REMOTE SENSING, 2021, 13 (16)
[22]   Modified-mean-shift-based noisy label detection for hyperspectral image classification [J].
Bahraini, Tahereh ;
Azimpour, Peyman ;
Yazdi, Hadi Sadoghi .
COMPUTERS & GEOSCIENCES, 2021, 155
[23]   Cyclic Learning Rate-Based Co-Training for Image Classification With Noisy Labels [J].
Zheng, Ying ;
Gu, Yu ;
Bai, Pingping ;
Yuan, Dong ;
Zhou, Siqi ;
Lyu, Xin ;
Chen, Ang .
IEEE ACCESS, 2025, 13 :6292-6305
[24]   Improved algorithm for hyperspectral image classification [J].
Bouzidi, Sonia ;
Ben Braiek, Houssem .
JOURNAL OF ELECTRONIC IMAGING, 2018, 27 (06)
[25]   Multiple Superpixel Graphs Learning Based on Adaptive Multiscale Segmentation for Hyperspectral Image Classification [J].
Zhao, Chunhui ;
Qin, Boao ;
Feng, Shou ;
Zhu, Wenxiang .
REMOTE SENSING, 2022, 14 (03)
[26]   Towards Robust Uncertainty Estimation in the Presence of Noisy Labels [J].
Pan, Chao ;
Yuan, Bo ;
Zhou, Wei ;
Yao, Xin .
ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING - ICANN 2022, PT I, 2022, 13529 :673-684
[27]   Hyperspectral Image Classification via Superpixel Correlation Coefficient Representation [J].
Tu, Bing ;
Yang, Xianchang ;
Li, Nanying ;
Ou, Xianfeng ;
He, Wei .
IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2018, 11 (11) :4113-4127
[28]   Adaptive Residual Convolutional Neural Network for Hyperspectral Image Classification [J].
Huang, Hong ;
Pu, Chunyu ;
Li, Yuan ;
Duan, Yule .
IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2020, 13 :2520-2531
[29]   Deep Reinforcement Learning for Band Selection in Hyperspectral Image Classification [J].
Mou, Lichao ;
Saha, Sudipan ;
Hua, Yuansheng ;
Bovolo, Francesca ;
Bruzzone, Lorenzo ;
Zhu, Xiao Xiang .
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2022, 60
[30]   Multi-view learning for hyperspectral image classification: An overview [J].
Li, Xuefei ;
Liu, Baodi ;
Zhang, Kai ;
Chen, Honglong ;
Cao, Weijia ;
Liu, Weifeng ;
Tao, Dapeng .
NEUROCOMPUTING, 2022, 500 :499-517