Developments in Landsat Land Cover Classification Methods: A Review

被引:323
作者
Phiri, Darius [1 ]
Morgenroth, Justin [1 ]
机构
[1] Univ Canterbury, New Zealand Sch Forestry, Christchurch 8140, New Zealand
关键词
Landsat; land cover; classification methods; remote sensing; OBIA; pixel-based; OBJECT-BASED CLASSIFICATION; SPECTRAL MIXTURE ANALYSIS; ETM PLUS DATA; IMAGE-ANALYSIS; CONTEXTUAL CLASSIFICATION; TM DATA; FUZZY CLASSIFICATION; MSS DATA; URBAN; PIXEL;
D O I
10.3390/rs9090967
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Land cover classification of Landsat images is one of the most important applications developed from Earth observation satellites. The last four decades were marked by different developments in land cover classification methods of Landsat images. This paper reviews the developments in land cover classification methods for Landsat images from the 1970s to date and highlights key ways to optimize analysis of Landsat images in order to attain the desired results. This review suggests that the development of land cover classification methods grew alongside the launches of a new series of Landsat sensors and advancements in computer science. Most classification methods were initially developed in the 1970s and 1980s; however, many advancements in specific classifiers and algorithms have occurred in the last decade. The first methods of land cover classification to be applied to Landsat images were visual analyses in the early 1970s, followed by unsupervised and supervised pixel-based classification methods using maximum likelihood, K-means and Iterative Self-Organizing Data Analysis Technique (ISODAT) classifiers. After 1980, other methods such as sub-pixel, knowledge-based, contextual-based, object-based image analysis (OBIA) and hybrid approaches became common in land cover classification. Attaining the best classification results with Landsat images demands particular attention to the specifications of each classification method such as selecting the right training samples, choosing the appropriate segmentation scale for OBIA, pre-processing calibration, choosing the right classifier and using suitable Landsat images. All these classification methods applied on Landsat images have strengths and limitations. Most studies have reported the superior performance of OBIA on different landscapes such as agricultural areas, forests, urban settlements and wetlands; however, OBIA has challenges such as selecting the optimal segmentation scale, which can result in over or under segmentation, and the low spatial resolution of Landsat images. Other classification methods have the potential to produce accurate classification results when appropriate procedures are followed. More research is needed on the application of hybrid classifiers as they are considered more complex methods for land cover classification.
引用
收藏
页数:25
相关论文
共 157 条
[61]   Assessing and monitoring semi-arid shrublands using object-based image analysis and multiple endmember spectral mixture analysis [J].
Hamada, Yuki ;
Stow, Douglas A. ;
Roberts, Dar A. ;
Franklin, Janet ;
Kyriakidis, Phaedon C. .
ENVIRONMENTAL MONITORING AND ASSESSMENT, 2013, 185 (04) :3173-3190
[62]   A review of large area monitoring of land cover change using Landsat data [J].
Hansen, Matthew C. ;
Loveland, Thomas R. .
REMOTE SENSING OF ENVIRONMENT, 2012, 122 :66-74
[63]   Global land cover classification at 1km spatial resolution using a classification tree approach [J].
Hansen, MC ;
Defries, RS ;
Townshend, JRG ;
Sohlberg, R .
INTERNATIONAL JOURNAL OF REMOTE SENSING, 2000, 21 (6-7) :1331-1364
[64]   Neural networks versus nonparametric neighbor-based classifiers for semisupervised classification of Landsat Thematic Mapper imagery [J].
Hardin, PJ .
OPTICAL ENGINEERING, 2000, 39 (07) :1898-1908
[65]   An Object-Based Classification of Mangroves Using a Hybrid Decision Tree-Support Vector Machine Approach [J].
Heumann, Benjamin W. .
REMOTE SENSING, 2011, 3 (11) :2440-2460
[66]   A new data fusion model for high spatial- and temporal-resolution mapping of forest disturbance based on Landsat and MODIS [J].
Hilker, Thomas ;
Wulder, Michael A. ;
Coops, Nicholas C. ;
Linke, Julia ;
McDermid, Greg ;
Masek, Jeffrey G. ;
Gao, Feng ;
White, Joanne C. .
REMOTE SENSING OF ENVIRONMENT, 2009, 113 (08) :1613-1627
[67]   An assessment of support vector machines for land cover classification [J].
Huang, C ;
Davis, LS ;
Townshend, JRG .
INTERNATIONAL JOURNAL OF REMOTE SENSING, 2002, 23 (04) :725-749
[68]   New Postprocessing Methods for Remote Sensing Image Classification: A Systematic Study [J].
Huang, Xin ;
Lu, Qikai ;
Zhang, Liangpei ;
Plaza, Antonio .
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2014, 52 (11) :7140-7159
[69]   Integration of lidar and Landsat ETM plus data for estimating and mapping forest canopy height [J].
Hudak, AT ;
Lefsky, MA ;
Cohen, WB ;
Berterretche, M .
REMOTE SENSING OF ENVIRONMENT, 2002, 82 (2-3) :397-416
[70]   Change detection from remotely sensed images: From pixel-based to object-based approaches [J].
Hussain, Masroor ;
Chen, Dongmei ;
Cheng, Angela ;
Wei, Hui ;
Stanley, David .
ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING, 2013, 80 :91-106