Object based image analysis for remote sensing

Abstract Remote sensing imagery needs to be converted into tangible information which can be utilised in conjunction with other data sets, often within widely used Geographic Information Systems (GIS). As long as pixel sizes remained typically coarser than, or at the best, similar in size to the objects of interest, emphasis was placed on per-pixel analysis, or even sub-pixel analysis for this conversion, but with increasing spatial resolutions alternative paths have been followed, aimed at deriving objects that are made up of several pixels. This paper gives an overview of the development of object based methods, which aim to delineate readily usable objects from imagery while at the same time combining image processing and GIS functionalities in order to utilize spectral and contextual information in an integrative way. The most common approach used for building objects is image segmentation, which dates back to the 1970s. Around the year 2000 GIS and image processing started to grow together rapidly through object based image analysis (OBIA - or GEOBIA for geospatial object based image analysis). In contrast to typical Landsat resolutions, high resolution images support several scales within their images. Through a comprehensive literature review several thousand abstracts have been screened, and more than 820 OBIA-related articles comprising 145 journal papers, 84 book chapters and nearly 600 conference papers, are analysed in detail. It becomes evident that the first years of the OBIA/GEOBIA developments were characterised by the dominance of ‘grey’ literature, but that the number of peer-reviewed journal articles has increased sharply over the last four to five years. The pixel paradigm is beginning to show cracks and the OBIA methods are making considerable progress towards a spatially explicit information extraction workflow, such as is required for spatial planning as well as for many monitoring programmes.

[1]  K. H. Rogers,et al.  Structural biodiversity monitoring in savanna ecosystems: Integrating LiDAR and high resolution imagery through object-based image analysis , 2008 .

[2]  Michael A. Wulder,et al.  Optical remote-sensing techniques for the assessment of forest inventory and biophysical parameters , 1998 .

[3]  Wenzhong Shi,et al.  Quality assessment for geo‐spatial objects derived from remotely sensed data , 2005 .

[4]  C. Muñoz Sobrino,et al.  Automatic habitat classification methods based on satellite images: A practical assessment in the NW Iberia coastal mountains , 2008, Environmental monitoring and assessment.

[5]  V. Lucieer Object‐oriented classification of sidescan sonar data for mapping benthic marine habitats , 2008 .

[6]  Ioannis Z. Gitas,et al.  Object-based image classification for burned area mapping of Creus Cape, Spain, using NOAA-AVHRR imagery , 2004 .

[7]  Soe W. Myint,et al.  Comparison of Remote Sensing Image Processing Techniques to Identify Tornado Damage Areas from Landsat TM Data , 2008, Sensors.

[8]  F. DuBois,et al.  Ranking the International Business Journals , 2000 .

[9]  Volker Walter,et al.  Object-based classification of remote sensing data for change detection , 2004 .

[10]  Charles K. Huyck,et al.  Object-Oriented Image Understanding and Post-Earthquake Damage Assessment for the 2003 Bam, Iran, Earthquake , 2005 .

[11]  A. Rango,et al.  Combining Decision Trees with Hierarchical Object-oriented Image Analysis for Mapping Arid Rangelands , 2007 .

[12]  Michael F. Goodchild,et al.  Interoperating Geographic Information Systems , 2012 .

[13]  D. Marceau The Scale Issue in the Social and Natural Sciences , 1999 .

[14]  M. Bock,et al.  Mapping Land-Cover and Mangrove Structures with Remote Sensing Techniques: A Contribution to a Synoptic GIS in Support of Coastal Management in North Brazil , 2004, Environmental management.

[15]  T. Webster,et al.  Object-oriented land cover classification of lidar-derived surfaces , 2006 .

[16]  Julien Radoux,et al.  Quality assessment of segmentation results devoted to object-based classification , 2008 .

[17]  Thomas Blaschke,et al.  Object-Based Image Analysis , 2008 .

[18]  Thomas Blaschke,et al.  New contextual approaches using image segmentation for objectbased classification , 2004 .

[19]  Laurent Durieux,et al.  A method for monitoring building construction in urban sprawl areas using object-based analysis of Spot 5 images and existing GIS data , 2008 .

[20]  John R. Jensen,et al.  Object‐based change detection using correlation image analysis and image segmentation , 2008 .

[21]  J. Briggs,et al.  An Object-oriented Approach to Urban Forest Mapping in Phoenix , 2007 .

[22]  R. Platt,et al.  An Evaluation of an Object-Oriented Paradigm for Land Use/Land Cover Classification , 2008 .

[23]  Reginald G. Golledge,et al.  The Big Questions in Geography , 2002 .

[24]  Tung Fung,et al.  Object‐oriented classification for urban land cover mapping with ASTER imagery , 2007 .

[25]  M. Bock,et al.  Object-oriented methods for habitat mapping at multiple scales – Case studies from Northern Germany and Wye Downs, UK , 2005 .

[26]  Thomas Blaschke,et al.  A comparison of three image-object methods for the multiscale analysis of landscape structure , 2003 .

[27]  Roman Arbiol,et al.  Advanced Classification Techniques: A Review , 2007 .

[28]  Huiping Liu,et al.  Accuracy analysis of remote sensing change detection by rule-based rationality evaluation with post-classification comparison , 2004 .

[29]  N. W. Park,et al.  Quantitative assessment of landslide susceptibility using high‐resolution remote sensing data and a generalized additive model , 2008 .

[30]  T. Blaschke,et al.  Object‐based land‐cover classification for the Phoenix metropolitan area: optimization vs. transportability , 2008 .

[31]  Curt H. Davis,et al.  A hierarchical fuzzy classification approach for high-resolution multispectral data over urban areas , 2003, IEEE Trans. Geosci. Remote. Sens..

[32]  Alan H. Strahler,et al.  On the nature of models in remote sensing , 1986 .

[33]  A. Cracknell Review article Synergy in remote sensing-what's in a pixel? , 1998 .

[34]  A Koestler,et al.  Ghost in the Machine , 1970 .

[35]  Thomas Blaschke,et al.  Object-oriented image analysis and scale-space: Theory and methods for modeling and evaluating multi-scale landscape structure , 2001 .

[36]  C. Tao,et al.  Automatic Segmentation of High-resolution Satellite Imagery by Integrating Texture, Intensity, and Color Features , 2005 .

[37]  J. Schiewe,et al.  SEGMENTATION OF HIGH-RESOLUTION REMOTELY SENSED DATA - CONCEPTS, APPLICATIONS AND PROBLEMS , 2002 .

[38]  Charles G. O'Hara,et al.  An object-based approach to detect road features for informal settlements near Sao Paulo, Brazil , 2008 .

[39]  Wolfgang Reinhardt,et al.  Image segmentation for the purpose of object-based classification , 2003, IGARSS 2003. 2003 IEEE International Geoscience and Remote Sensing Symposium. Proceedings (IEEE Cat. No.03CH37477).

[40]  Nikos Koutsias,et al.  Object-based classification using Quickbird imagery for delineating forest vegetation polygons in a Mediterranean test site , 2008 .

[41]  Stefan Lang,et al.  Object-based mapping and object-relationship modeling for land use classes and habitats , 2006 .

[42]  Wenjun Chen,et al.  A semi-automatic segmentation procedure for feature extraction in remotely sensed imagery , 2005, Comput. Geosci..

[43]  R. Lucas,et al.  The delineation of tree crowns in Australian mixed species forests using hyperspectral Compact Airborne Spectrographic Imager (CASI) data , 2006 .

[44]  R. Kettig,et al.  Classification of Multispectral Image Data by Extraction and Classification of Homogeneous Objects , 1976, IEEE Transactions on Geoscience Electronics.

[45]  B. Koch,et al.  Landscape structure assessment with image grey‐values and object‐based classification at three spatial resolutions , 2005 .

[46]  Thomas Blaschke,et al.  Fernerkundung und GIS : neue Sensoren - innovative Methoden , 2002 .

[47]  Godela Rossner,et al.  Mapping and indicator approaches for the assessment of habitats at different scales using remote sensing and GIS methods , 2004 .

[48]  Gregory Duveiller,et al.  Deforestation in Central Africa: Estimates at regional, national and landscape levels by advanced processing of systematically-distributed Landsat extracts , 2008 .

[49]  T. Kuhn,et al.  The Structure of Scientific Revolutions. , 1964 .

[50]  Philippe De Maeyer,et al.  Object-oriented change detection for the city of Harare, Zimbabwe , 2009, Expert Syst. Appl..

[51]  Manfred Ehlers,et al.  Automated analysis of ultra high resolution remote sensing data for biotope type mapping: new possibilities and challenges , 2003 .

[52]  Jon Atli Benediktsson,et al.  A new approach for the morphological segmentation of high-resolution satellite imagery , 2001, IEEE Trans. Geosci. Remote. Sens..

[53]  Suha Berberoglu,et al.  Assessing different remote sensing techniques to detect land use/cover changes in the eastern Mediterranean , 2009, Int. J. Appl. Earth Obs. Geoinformation.

[54]  Peter M. Atkinson,et al.  Fine Spatial Resolution Simulated Satellite Sensor Imagery for Land Cover Mapping in the United Kingdom , 1999 .

[55]  Robert M. Haralick,et al.  Decision Making in Context , 1983, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[56]  Uwe Weidner,et al.  Contribution to the Assessment of Segmentation Quality for Remote Sensing Applications , 2008 .

[57]  A. Rango,et al.  Object-oriented image analysis for mapping shrub encroachment from 1937 to 2003 in southern New Mexico , 2004 .

[58]  Chad Hendrix,et al.  A Comparison of Urban Mapping Methods Using High-Resolution Digital Imagery , 2003 .

[59]  B. Koch,et al.  Object-oriented remote sensing tools for biodiversity assessment: A European approach , 2003 .

[60]  B. Gorte Probabilistic segmentation of remotely sensed images , 1998 .

[61]  O. Loucks,et al.  From Balance of Nature to Hierarchical Patch Dynamics: A Paradigm Shift in Ecology , 1995, The Quarterly Review of Biology.

[62]  徐凯,et al.  Classification and Extraction of Urban Land-Use Information from High-Resolution Image Based on Object Multi-features , 2006 .

[63]  Mustafa Turker,et al.  Building‐based damage detection due to earthquake using the watershed segmentation of the post‐event aerial images , 2008 .

[64]  K. Navulur Multispectral Image Analysis Using the Object-Oriented Paradigm , 2006 .

[65]  Ben Gorte,et al.  A method for object-oriented land cover classification combining Landsat TM data and aerial photographs , 2003 .

[66]  Julien Radoux,et al.  A quantitative assessment of boundaries in automated forest stand delineation using very high resolution imagery , 2007 .

[67]  D. Lemp,et al.  Segment-based characterization of roof surfaces using hyperspectral and laser scanning data , 2005, Proceedings. 2005 IEEE International Geoscience and Remote Sensing Symposium, 2005. IGARSS '05..

[68]  Alfred Stein,et al.  Urban social vulnerability assessment with physical proxies and spatial metrics derived from air- and spaceborne imagery and GIS data , 2009 .

[69]  Timothy C. Coburn,et al.  Geographical Information Systems: Principles, Techniques, Applications and Management: 2nd Edition, Volumes 1 and 2, Paul A. Longley, Michael F. Goodchild, David J. Maguire and David W. Rhind (Eds.), 11240 pp., Wiley, New York, 1999, ISBN 0-471-32182-6, US $345.00 , 2000 .

[70]  Geoffrey J. Hay,et al.  Uncertainties in land use data , 2006 .

[71]  Gotthard Meinel,et al.  Pixelorientierte versus segmentorien- tierter Klassifikation von IKONOS- Satellitenbilddaten - ein Methodenver- gleich , 2001 .

[72]  R. Mathieu,et al.  Mapping private gardens in urban areas using object-oriented techniques and very high-resolution satellite imagery , 2007 .

[73]  U. Benz,et al.  Multi-resolution, object-oriented fuzzy analysis of remote sensing data for GIS-ready information , 2004 .

[74]  Frédéric Jacob,et al.  Remote sensing of soil surface characteristics from a multiscale classification approach , 2008 .

[75]  Sunil Narumalani,et al.  Utilizing geometric attributes of spatial information to improve digital image classification , 1998 .

[76]  Barbara Koch,et al.  Pixelbasierte Klassifizierung im Vergleich und zur Ergänzung zum objektbasierten Verfahren , 2003 .

[77]  Zhang Baolei,et al.  Exploration on method of auto-classification for main ground objects of Three Gorges Reservoir area , 2005 .

[78]  James C. Tilton,et al.  Image segmentation by region growing and spectral clustering with a natural convergence criterion , 1998, IGARSS '98. Sensing and Managing the Environment. 1998 IEEE International Geoscience and Remote Sensing. Symposium Proceedings. (Cat. No.98CH36174).

[79]  Wei Su,et al.  Textural and local spatial statistics for the object‐oriented classification of urban areas using high resolution imagery , 2008 .

[80]  Marco Neubert,et al.  Segment-based analysis of high resolution satellite and laser scanning data , 2001 .

[81]  Josef Strobl,et al.  What’s wrong with pixels? Some recent developments interfacing remote sensing and GIS , 2001 .

[82]  T. Blaschke TOWARDS A FRAMEWORK FOR CHANGE DETECTION BASED ON IMAGE OBJECTS , 2005 .

[83]  Thomas Blaschke,et al.  OBJECT BASED IMAGE ANALYSIS FOR AUTOMATED INFORMATION EXTRACTION - A SYNTHESIS , 2006 .

[84]  S. M. Jong,et al.  The Importance of Scale in Object-based Mapping of Vegetation Parameters with Hyperspectral Imagery , 2007 .

[85]  Martin D. Levine,et al.  Rule-based image segmentation: A dynamic control strategy approach , 1985, Comput. Vis. Graph. Image Process..

[86]  C Kong Classification and Extraction of Urban Land-Use Information from High-Resolution Image Based on Object Multi-features , 2006 .

[87]  H. J. H. Kux,et al.  Object-based Image Analysis using QuickBird satellite images and GIS data, case study Belo Horizonte (Brazil) , 2008 .

[88]  Arno Schäpe,et al.  Multiresolution Segmentation : an optimization approach for high quality multi-scale image segmentation , 2000 .

[89]  Brian Johnson,et al.  Object-based target search using remotely sensed data: A case study in detecting invasive exotic Australian Pine in south Florida , 2008 .

[90]  Howard Hunt Pattee,et al.  Hierarchy Theory: The Challenge of Complex Systems , 1973 .

[91]  Geoffrey J. Hay,et al.  An object-specific image-texture analysis of H-resolution forest imagery☆ , 1996 .

[92]  Sankar K. Pal,et al.  A review on image segmentation techniques , 1993, Pattern Recognit..

[93]  M. Grenier,et al.  ACCURACY ASSESSMENT METHOD FOR WETLAND OBJECT-BASED CLASSIFICATION , 2008 .

[94]  Emmanuel P. Baltsavias,et al.  Object extraction and revision by image analysis using existing geodata and knowledge: current status and steps towards operational systems☆ , 2004 .

[95]  Dirk Tiede,et al.  Domain-specific class modelling for one-level representation of single trees , 2008 .

[96]  Peng Gong,et al.  Integration of object-based and pixel-based classification for mapping mangroves with IKONOS imagery , 2004 .

[97]  D. Opitz,et al.  Object recognition and image segmentation: the Feature Analyst® approach , 2008 .

[98]  A. Jacquin,et al.  A hybrid object-based classification approach for mapping urban sprawl in periurban environment , 2008 .

[99]  Jürgen Böhner,et al.  Image Segmentation using Representativeness Analysis and Region Growing , 2006 .

[100]  Mike Thelwall,et al.  Sources of Google Scholar citations outside the Science Citation Index: A comparison between four science disciplines , 2008, Scientometrics.

[101]  Martin Volk,et al.  The comparison index: A tool for assessing the accuracy of image segmentation , 2007, Int. J. Appl. Earth Obs. Geoinformation.

[102]  N. Coops,et al.  What is the Value of a Good Map? An Example Using High Spatial Resolution Imagery to Aid Riparian Restoration , 2007, Ecosystems.

[103]  R. Lathrop,et al.  A Multi-scale Segmentation Approach to Mapping Seagrass Habitats Using Airborne Digital Camera Imagery , 2006 .

[104]  Stefan Lang Image objects vs. landscape objects. Interpretation, hierarchical representation and significance , 2005 .

[105]  A. Kimerling,et al.  A per-segment approach to improving aspen mapping from high-resolution remote sensing imagery , 2003 .

[106]  Jianguo Wu,et al.  A spatially explicit hierarchical approach to modeling complex ecological systems: theory and applications , 2002 .

[107]  G. Hay,et al.  A Multiscale Object-Specific Approach to Digital Change Detection , 2003 .

[108]  J. Strobl,et al.  Object-Oriented Image Processing in an Integrated GIS/Remote Sensing Environment and Perspectives for Environmental Applications , 2000 .

[109]  Yun Zhang,et al.  Region based segmentation of QuickBird multispectral imagery through band ratios and fuzzy comparison , 2009 .

[110]  Florian Thomas Albrecht Assessing the spatial accuracy of object-based image classifications , 2008 .

[111]  D. Flanders,et al.  Preliminary evaluation of eCognition object-based software for cut block delineation and feature extraction , 2003 .

[112]  Tobias Langanke,et al.  Combined object-based classification and manual interpretation–synergies for a quantitative assessment of parcels and biotopes , 2009 .

[113]  Jian-guo Wu Hierarchy and scaling: Extrapolating informa-tion along a scaling ladder , 1999 .

[114]  N. Coops,et al.  Application of high spatial resolution satellite imagery for riparian and forest ecosystem classification , 2007 .

[115]  S. Franklin,et al.  OBJECT-BASED ANALYSIS OF IKONOS-2 IMAGERY FOR EXTRACTION OF FOREST INVENTORY PARAMETERS , 2006 .

[116]  Claude Caron,et al.  GIScience Journals Ranking and Evaluation: An International Delphi Study , 2008, Trans. GIS.

[117]  Michael F. Goodchild,et al.  Extending geographical representation to include fields of spatial objects , 2002, Int. J. Geogr. Inf. Sci..

[118]  Matti Pietikäinen,et al.  Unsupervised texture segmentation using feature distributions , 1997, Pattern Recognit..

[119]  B. Kartikeyan,et al.  A segmentation approach to classification of remote sensing imagery , 1998 .

[120]  Mark Gahegan Characterizing the Semantic Content of Geographic Data, Models, and Systems , 1999 .

[121]  Patrick Bogaert,et al.  Forest change detection by statistical object-based method , 2006 .

[122]  David M. McKeown,et al.  Automating Knowledge Acquisition For Aerial Image Interpretation , 1987, Photonics West - Lasers and Applications in Science and Engineering.

[123]  P. Mayaux,et al.  An object-based method for mapping and change analysis in mangrove ecosystems , 2008 .

[124]  Gilberto Câmara,et al.  Spring: integrating remote sensing and gis by object-oriented data modelling , 1996, Comput. Graph..

[125]  G. Hay,et al.  Size-constrained Region Merging (SCRM): An Automated Delineation Tool for Assisted Photointerpretation , 2008 .

[126]  Warren B. Cohen,et al.  Object-based semi-automatic approach for forest structure characterization using lidar data in heterogeneous Pinus sylvestris stands. , 2008 .

[127]  S. Lang,et al.  Strategies for semi-automated habitat delineation and spatial change assessment in an Alpine environment , 2008 .

[128]  F. D. van der Meer,et al.  Shape-based classification of spectrally identical objects , 2008 .

[129]  Marcelle Grenier,et al.  Object-Based Classification as an Alternative Approach to the Traditional Pixel-Based Classification to Identify Potential Habitat of the Grasshopper Sparrow , 2008, Environmental management.

[130]  M. Goodchild,et al.  The future of GIS and spatial analysis , 1999 .

[131]  C. Aubrecht,et al.  Integrating earth observation and GIScience for high resolution spatial and functional modeling of urban land use , 2009, Comput. Environ. Urban Syst..

[132]  C. Burnett,et al.  Assessing the mire conservation status of a raised bog site in Salzburg using object-based monitoring and structural analysis , 2007 .

[133]  Patrick Bogaert,et al.  An object-based change detection method accounting for temporal dependences in time series with medium to coarse spatial resolution , 2008 .

[134]  R. A. Diaz Varela,et al.  Automatic habitat classification methods based on satellite images: a practical assessment in the NW Iberia coastal mountains. , 2008 .

[135]  T. Blaschke,et al.  Hierarchical object representation –Comparative multi-scale mapping of anthropogenic and natural features , 2003 .

[136]  Tenley M. Conway,et al.  Determining land-use information from land cover through an object-oriented classification of IKONOS imagery , 2008 .

[137]  Qihao Weng,et al.  A survey of image classification methods and techniques for improving classification performance , 2007 .

[138]  T. Blaschke,et al.  BRIDGING REMOTE SENSING AND GIS – WHAT ARE THE MAIN SUPPORTIVE PILLARS ? , 2006 .

[139]  Geoffrey J. Hay,et al.  Detecting dominant landscape objects through multiple scales: An integration of object-specific methods and watershed segmentation , 2004, Landscape Ecology.

[140]  M. Baatz,et al.  Progressing from object-based to object-oriented image analysis , 2008 .

[141]  Gunter Menz,et al.  Object-Based Image Analysis and Treaty Verification , 2008 .

[142]  A. Troy,et al.  Modeling Residential Lawn Fertilization Practices: Integrating High Resolution Remote Sensing with Socioeconomic Data , 2008, Environmental management.

[143]  D. Al-Khudhairy,et al.  Structural Damage Assessments from Ikonos Data Using Change Detection, Object-Oriented Segmentation, and Classification Techniques , 2005 .

[144]  Josef Strobl,et al.  Geospatial Crossroads @ GI_Forum '08. Proceedings of the Geoinformatics Forum Salzburg , 2008 .

[145]  Danel Hölbling,et al.  ENVI Feature Extraction 4.5 , 2008 .

[146]  S. M. Jong,et al.  Remote Sensing Image Analysis: Including The Spatial Domain , 2011 .

[147]  P. Hofmann,et al.  Detecting informal settlements from QuickBird data in Rio de Janeiro using an object based approach , 2008 .

[148]  K. Steinnocher,et al.  Object-oriented analysis of image and LiDAR data and its potential for a dasymetric mapping application , 2008 .

[149]  Stefan Lang,et al.  Object-based image analysis for remote sensing applications: modeling reality – dealing with complexity , 2008 .

[150]  C. Burnett,et al.  A multi-scale segmentation/object relationship modelling methodology for landscape analysis , 2003 .

[151]  M. Shiba,et al.  USING eCOGNITION FOR IMPROVED FOREST MANAGEMENT AND MONITORING SYSTEMS IN PRECISION FORESTRY , 2006 .

[152]  D. Walker,et al.  Quantification of shelterbelt characteristics using high-resolution imagery , 2009 .

[153]  D. Stow,et al.  Monitoring shrubland habitat changes through object-based change identification with airborne multispectral imagery , 2008 .

[154]  A. C. Seijmonsbergen,et al.  Improved landsat-based forest mapping in steep mountainous terrain , 2003 .

[155]  C. V. D. Sande,et al.  A segmentation and classification approach of IKONOS-2 imagery for land cover mapping to assist flood risk and flood damage assessment , 2003 .

[156]  D. Stow,et al.  Object‐based classification of residential land use within Accra, Ghana based on QuickBird satellite data , 2007, International journal of remote sensing.

[157]  Manchun Li,et al.  Review of remotely sensed imagery classification patterns based on object-oriented image analysis , 2006 .

[158]  Michael F. Goodchild,et al.  Geographical information science , 1992, Int. J. Geogr. Inf. Sci..

[159]  G. Hay,et al.  A scale-space primer for exploring and quantifying complex landscapes , 2002 .

[160]  B. Devereux,et al.  An efficient image segmentation algorithm for landscape analysis , 2004 .

[161]  C. Woodcock,et al.  Combining Spectral and Texture Data in the Segmentation of Remotely Sensed Images , 1996 .

[162]  M. Goodchild GIScience, Geography, Form, and Process , 2004 .

[163]  D. Tiede,et al.  Characterising mountain forest structure using landscape metrics on LiDAR-based canopy surface models , 2008 .

[164]  Thomas Blaschke,et al.  Sensoriamento Remoto e Sig Avançados: novos sistemas sensores métodos inovadores , 2005 .

[165]  Zhang Xiangmin,et al.  Comparison of pixel‐based and object‐oriented image classification approaches—a case study in a coal fire area, Wuda, Inner Mongolia, China , 2006 .

[166]  Curtis E. Woodcock,et al.  Nested-hierarchical scene models and image segmentation , 1992 .

[167]  G. J. Hay,et al.  A multiscale framework for landscape analysis: Object-specific analysis and upscaling , 2001, Landscape Ecology.

[168]  M. Neubert,et al.  Assessing image segmentation quality – concepts, methods and application , 2008 .

[169]  Hui Lin,et al.  Design and Implementation of a High Spatial Resolution Remote Sensing Image Intelligent Interpretation System , 2007, Data Sci. J..

[170]  A. Lobo,et al.  Classification of Mediterranean crops with multisensor data: per-pixel versus per-object statistics and image segmentation , 1996 .

[171]  Geoffrey J. Hay,et al.  Geographic Object-Based Image Analysis (GEOBIA): A new name for a new discipline , 2008 .

[172]  G. Hay,et al.  An automated object-based approach for the multiscale image segmentation of forest scenes , 2005 .

[173]  Kai An,et al.  Object-oriented urban dynamic monitoring — A case study of Haidian District of Beijing , 2007 .

[174]  Manfred Ehlers,et al.  Automated Techniques for Environmental Monitoring and Change Analyses for Ultra High Resolution Remote Sensing Data , 2006 .

[175]  Manfred Ehlers,et al.  A novel method for generating 3D city models from high resolution and multi‐sensor remote sensing data , 2005 .

[176]  H. Simon,et al.  The Organization of Complex Systems , 1977 .

[177]  Eléonore Wolff,et al.  Segmentation of very high spatial resolution satellite images in urban areas for segment-based classification , 2005 .

[178]  Zhengjun Liu,et al.  Building extraction from high resolution imagery based on multi-scale object oriented classification and probabilistic Hough transform , 2005, Proceedings. 2005 IEEE International Geoscience and Remote Sensing Symposium, 2005. IGARSS '05..

[179]  M. Amin,et al.  Impact factors: use and abuse. , 2003, Medicina.

[180]  Alexandre Carleer,et al.  Assessment of Very High Spatial Resolution Satellite Image Segmentations , 2005 .

[181]  Duccio Rocchini,et al.  Planning restoration in a cultural landscape in Italy using an object-based approach and historical analysis , 2008 .

[182]  G. Hay,et al.  Object-Based Image Analysis , 2008 .

[183]  P. Gong,et al.  Object-based Detailed Vegetation Classification with Airborne High Spatial Resolution Remote Sensing Imagery , 2006 .

[184]  Stefan Lang,et al.  Object-fate analysis - spatial relationships for the assessment of object transition and correspondence , 2008 .

[185]  Jean Louchet,et al.  Using colour, texture, and hierarchial segmentation for high-resolution remote sensing , 2008 .

[186]  A. Troy,et al.  An object‐oriented approach for analysing and characterizing urban landscape at the parcel level , 2008 .

[187]  Sven Nussbaum,et al.  Object-based Image Analysis , 2009 .

[188]  P. Marpu,et al.  Change detection using object features , 2008 .

[189]  Bruce E. Gorham,et al.  Using digital photographs and object-based image analysis to estimate percent ground cover in vegetation plots , 2006 .

[190]  Ling Bian,et al.  Object-Oriented Representation of Environmental Phenomena: Is Everything Best Represented as an Object? , 2007 .

[191]  D. Civco,et al.  A COMPARISON OF LAND USE AND LAND COVER CHANGE DETECTION METHODS , 2002 .