基于半監(jiān)督局部保持投影的高光譜遙感影像分類方法研究
[Abstract]:Hyperspectral remote sensing images are characterized by large amount of spectral information and large amount of data with strong correlation. If the traditional classification algorithm is used to classify hyperspectral remote sensing images, it is easy to produce "dimensionality disaster", so it is very important to reduce the dimension of high-dimensional data. In many dimensionality reduction algorithms, such as principal component analysis (PCA) algorithm, linear discriminant analysis (LDA) algorithm and so on, they either can not effectively use the category information in the data or require strictly the data category information. In order to solve these problems, this paper presents a semi-supervision department preserving projection (SSLPP) algorithm. Firstly, the hyperspectral image and its own characteristics are briefly introduced, and the feature extraction methods of high-dimensional data are summarized and analyzed by combining supervised learning and unsupervised learning, and then the SSLPP algorithm is proposed, and then the principle of SSLPP algorithm is introduced. In order to verify the effectiveness of the SSLPP algorithm, a comparative experiment is carried out with several popular feature extraction algorithms, such as principal component analysis (PCA) (PCA) algorithm, local preserving projection (LPP) algorithm, and so on. The Supervisory Department maintains the (SLPP) algorithm. In the experiment, two kinds of hyperspectral remote sensing image data are classified. Firstly, the original data set is reduced by various algorithms, and then the low-dimensional data is identified by K-nearest neighbor classifier. The overall classification accuracy of each algorithm is calculated, and the validity of SSLPP algorithm is verified by the experimental results. Finally, in order to explore the fusion of SSLPP algorithm with various classifiers, Three classifiers are used to classify the ground objects of four remote sensing images respectively. The results show that each classifier has a high recognition rate under this algorithm, which verifies that the SSLPP algorithm has a better fusion performance. After experimental analysis, compared with other feature extraction algorithms, the proposed SSLPP algorithm has the following advantages over the unsupervised dimensionality reduction algorithm, which makes full use of the class information in the data. Compared with the supervised dimensionality reduction algorithm, the high-dimensional data has good separability after low-dimensional mapping. It not only makes use of the labeled samples in the data, but also makes full use of a large number of unlabeled samples at the same time. In order to better grasp the integrity of the original data in the low-dimensional projection, the classification of the hyperspectral data can be processed by SSLPP to ensure a higher classification accuracy, and at the same time, the whole classification of the original data can be avoided. In order to improve the efficiency of data calculation and processing. To sum up, this paper mainly studies the feature extraction and classification method of hyperspectral remote sensing image based on semi-supervised learning, and proposes a semi-supervised data feature extraction algorithm. The effectiveness of the algorithm is proved by the classification and recognition experiments of several real hyperspectral remote sensing images.
【學(xué)位授予單位】:重慶大學(xué)
【學(xué)位級別】:碩士
【學(xué)位授予年份】:2014
【分類號】:TP751
【參考文獻(xiàn)】
相關(guān)期刊論文 前7條
1 王立志;黃鴻;馮海亮;;基于SSMFA與kNNS算法的高光譜遙感影像分類[J];電子學(xué)報(bào);2012年04期
2 黃鴻;李見為;馮海亮;;基于有監(jiān)督核局部線性嵌入的面部表情識別[J];光學(xué)精密工程;2008年08期
3 譚琨;杜培軍;;基于支持向量機(jī)的高光譜遙感圖像分類[J];紅外與毫米波學(xué)報(bào);2008年02期
4 袁國強(qiáng);肖倩;劉強(qiáng);;帶有最小風(fēng)險(xiǎn)準(zhǔn)則的兩階段模糊運(yùn)輸模型[J];計(jì)算機(jī)工程與應(yīng)用;2011年35期
5 申中華;潘永惠;王士同;;有監(jiān)督的局部保留投影降維算法[J];模式識別與人工智能;2008年02期
6 任廣波;張杰;馬毅;鄭榮兒;;生成模型學(xué)習(xí)的遙感影像半監(jiān)督分類[J];遙感學(xué)報(bào);2010年06期
7 趙慧潔;葛文謙;李旭東;;最小誤差準(zhǔn)則與脈沖耦合神經(jīng)網(wǎng)絡(luò)的裂縫檢測[J];儀器儀表學(xué)報(bào);2012年03期
相關(guān)博士學(xué)位論文 前2條
1 陳進(jìn);高光譜圖像分類方法研究[D];國防科學(xué)技術(shù)大學(xué);2010年
2 黃鴻;圖嵌入框架下流形學(xué)習(xí)理論及應(yīng)用研究[D];重慶大學(xué);2008年
本文編號:2162081
本文鏈接:http://www.lk138.cn/guanlilunwen/gongchengguanli/2162081.html