首頁  >  科學研究  >  科研成果  >  正文
科研成果
窦鵬、曾超的論文在REMOTE SENSING 刊出
發布時間:2020-11-05 15:31:04     發布者:易真     浏覽次數:

标題: Hyperspectral Image Classification Using Feature Relations Map Learning

作者: Dou, P (Dou, Peng); Zeng, C (Zeng, Chao)

來源出版物: REMOTE SENSING  : 12  : 18  文獻号: 2956  DOI: 10.3390/rs12182956  出版年: SEP 2020  

摘要: Recently, deep learning has been reported to be an effective method for improving hyperspectral image classification and convolutional neural networks (CNNs) are, in particular, gaining more and more attention in this field. CNNs provide automatic approaches that can learn more abstract features of hyperspectral images from spectral, spatial, or spectral-spatial domains. However, CNN applications are focused on learning features directly from image data-while the intrinsic relations between original features, which may provide more information for classification, are not fully considered. In order to make full use of the relations between hyperspectral features and to explore more objective features for improving classification accuracy, we proposed feature relations map learning (FRML) in this paper. FRML can automatically enhance the separability of different objects in an image, using a segmented feature relations map (SFRM) that reflects the relations between spectral features through a normalized difference index (NDI), and it can then learn new features from SFRM using a CNN-based feature extractor. Finally, based on these features, a classifier was designed for the classification. With FRML, our experimental results from four popular hyperspectral datasets indicate that the proposed method can achieve more representative and objective features to improve classification accuracy, outperforming classifications using the comparative methods.

入藏号: WOS:000581450700001

語言: English

文獻類型: Article

作者關鍵詞: hyperspectral image classification; deep learning; convolutional neural network; feature learning; feature relations map learning

地址: [Dou, Peng; Zeng, Chao] Wuhan Univ, Sch Resource & Environm Sci, Wuhan 430079, Peoples R China.

通訊作者地址: Zeng, C (通訊作者)Wuhan Univ, Sch Resource & Environm Sci, Wuhan 430079, Peoples R China.

電子郵件地址: 00032042@whu.edu.cn; zengchao@whu.edu.cn

影響因子:4.509


信息服務
學院網站教師登錄 學院辦公電話 學校信息門戶登錄

版權所有 © 88858cc永利官网
地址:湖北省武漢市珞喻路129号 郵編:430079 
電話:027-68778381,68778284,68778296 傳真:027-68778893    郵箱:sres@whu.edu.cn

Baidu
sogou