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Evaluating image classification techniques on ASTER data for lithological discrimination in the Barberton Greenstone Belt, Mpumalanga, South AfricaKemp, Jacobus Nicholas, Zietsman, H. L., Stevens, G. 12 1900 (has links)
Thesis (MSc (Geography and Environmental Studies))--University of Stellenbosch, 2005. / 81 Leaves printed on single pages i-xi, preliminary pages and numbered pages 1- 70. Includes bibliography, list of tables and list of figures. / Digitized at 300 dpi color PDF format (OCR), using KODAK i 1220 PLUS scanner. / ENGLISH ABSTRACT: Geological field mapping is often limited by logistical and cost constraints as well as the
scope and extent of observations possible using ground-based mapping. Remote sensing
offers, among others, the advantages of an increased spectral range for observations and a
regional perspective of areas under observation. This study aimed to determine the accuracy
of a collection of image classification techniques when applied to ASTER reflectance data.
Band rationing, the Crosta Technique, Constrained Energy Minimization, Spectral Correlation
Mapping and the Maximum Likelihood Classifier were evaluated for their efficiency in
detecting and discriminating between greenstone and granitoid material. The study area was
the Archaean Barberton Greenstone Belt in the eastern Mpumalanga Province, South Africa.
ASTER reflectance imagery was acquired and pre-processed. Training and reference data was
extracted from the image through visual inspection and expert knowledge. The training data
was used in conjunction with USGS mineral spectra to train the five classification algorithms
using the ERDAS's software package. This resulted in abundance images for the target
materials specified by the training data. The Maximum Likelihood Classifier produced a
classified thematic map. The reference data was used to perform a rigorous classification
accuracy assessment procedure. All abundance images were thresholded to varying levels,
obtaining accuracy statistics at every level. In so doing, threshold levels could be defined for
every abundance image in such a way that the reliability of the classification was optimized.
For each abundance image, as well as for the output map of the Maximum Likelihood
Classifier, user's- and producer's accuracies as well as kappa statistics were derived and used
as comparative measures of efficiency between the five techniques. This information was also
used to assess the spectral separability of the target materials.
The Maximum Likelihood Classifier outperformed the other techniques significantly,
achieving an overall classification accuracy of 81.1% and an overall kappa value of 0.748.
Greenstone rocks were accurately discriminated from granitoid rocks with accuracies between
72.9% and 98.5%, while granitoid rocks showed very poor ability to be accurately
distinguished from each other.
The main recommendations from this study are that thermal infrared and gamma-ray data be
considered, together with better vegetation masking and an investigation into object orientated
techniques. / AFRIKAANSE OPSOMMING: Geologiese veldkartering word algemeen beperk deur logistiese en koste-verwante faktore,
sowel as die beperkte bestek waartoe waarnemings met veld-gebasseerde tegnieke gemaak
kan word. Afstandswaarneming bied, onder andere, 'n vergrote spekrale omvang vir
waarnemings en 'n regionale perspektief van die area wat bestudeer word. Hierdie studie was
gemik daarop om die akkuraatheid van 'n versameling beeld-klassifikasie tegnieke, toegepas
op ASTER data, te bepaal. Bandverhoudings, die Crosta Tegniek, "Constrained Energy
Minimization", Spektrale Korrellasie Kartering, en Maksimum Waarskynlikheid Klassifikasie
is evalueer op grond van hul vermoë om groensteen en granitoied-rotse op te spoor en tussen
hulle te onderskei. Die studiegebied was die Argalese Barberton Groensteengordel in die
oostelike Mpumalanga Provinsie in Suid Afrika.
'n ASTER refleksie beeld is verkry, waarop voorverwerking uitgevoer is. Opleidings- en
verwysingsdata is van die beeld verkry deur visuele inspeksie en vakkundige kennis. Die
opleidingsdata is saam met VSGO mineraalspektra gebruik om die vyf klassifikasie
algoritmes met behulp van die ERDAS sagteware pakket op te lei. Die resultaat was
volopheidsbeelde vir die teikenmateriale gespesifiseer in die opleidingsdata. Die Maksimum
Waarskynlikheid algoritme het 'n geklassifiseerde tematiese beeld gelewer. Met behulp van
die verwysingsdata is 'n streng akkuraatheidstoetsing prosedure uitgevoer. Vir alle
volopheidsbeelde is 'n reeks drempelwaardes gestel, en by elke drempelwaarde is
akkuraatheidsstatistieke afgelei. Op hierdie manier kon 'n drempelwaarde vir elke
volopheidsbeeld vasgestel word sodat die drempelwaarde die betroubaarheid van die
klassifikasie optimeer. Vir elke volopheidsbeeld, asook vir die tematiese kaart verkry van die
Maksimum Waarskynlikheid klassifikasie, is gebruikers- en produsent-akkuraathede en kappa
statistieke bereken. Hierdie waardes is gebruik as vergelykende maatstawwe van akkuraatheid
tussen die vyf tegnieke, asook van die spektrale skeibaarheid van die onderskeie
teikenmateriale.
Die Maksimum Waarskynlikheid klassifikasie het die beste resultate gelewer, met 'n algehele
klassifikasie akkuraatheid van 81.1%, en 'n gemiddelde kappa waarde van 0.748.
Groensteenrotse kon met hoë akkuraathede van tussen 72.9% en 98.5% van granitoiedrotse
onderskei word, terwyl granitoiedrotse 'n swak vermoë getoon het om van mekaar onderskei
te word. Die belangrikste aanbevelings vanuit hierdie studie is dat termiese uitstralingdata asook
gamma-straal data geimplimenteer word. Beter verwydering van plantegroei en 'n studie na
die lewensvatbaarheid van objekgeorienteerde metodes word ook aanbeveel.
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Bodembenuttingskartering van Sandton se landelik-stedelike soomgebied met behulp van satellietdataHirvela, Caroline 25 September 2014 (has links)
M.Sc. (Geography) / Landsat TM and SPOTMSS data were analysed and classified using two different procedures and the resulting maps were evaluated with respect to land use in the Sandton urban-rural fringe. The Landsat TM data consisted of 6 spectral bands (0,45-0,52, 0,52-0,60, 0,63-0,69, 0,760,90, 1,55-1,75, 2,08-2,35 IJm). The SPOT MSS data (one image taken in summer and one in winter) consisted of 3 spectral bands (0,50-0,59, 0,61-0,68, 0,79-0,89 IJm). The data from the two systems were stretched statistically so that all bands showed similar spread on both sides of the median. A ground truth map was obtained from the Sandton Town Council against which the final land use maps derived from Landsat and SPOT were compared for accuracy. The satellite data were analysed in two steps to compile the land use maps: The first step was a cluster analysis based on ISODATA of Ball and Hall (Ball, m..al, 1965). The result were 3 maps with 34, 30 and 35 spectral classes for Landsat TM and the SPOT seasonal images. The next step was a combination of cluster analysis and nearest-neighbour analysis. Examples of the land uses required for the final maps were chosen and for each a histogram of spectral classes was compiled. A nearest-neighbour analysis was done to determine how many pixels of the same class lie next to each other. All the pixels in the spectrally classified image were viewed in conjunction with the surrounding pixels; a histogram and nearest-neighbour analysis was done for each. The results were then compared to that of the land use examples and each pixel was allocated to the land use class which it most resembled. The evaluation involved a computerised comparison of the land use maps with the ground truth map obtained from the Sandton Town Council. The final results were three different land use maps, each created with one image (Landsat TM, SPOTsummer, or winter images). The land use classes identified on each map were: agricultural holdings; high density residential areas; low density residential areas; townhouses (only from the SPOTimages); a combination of commercial and industrial areas; parks; unused land; recreational areas. Comparative use of the two satellite based data acquisition systems leads the author to conclude that: Landsat TM was best for mapping agricultural holdings and high density residential areas; the SPOT summer image was best for mapping townhouses, parks, unused land and recreational areas, the SPOT winter image was best for mapping low density residential areas and commercial/industrial areas. Both systems may be regarded as data sources for urban research, for the mapping of land use in urban-rural fringes. The result of this study is the provision of an easily updated land use map of the Sandton urban-rural fringe to aid effective planning and control where future development will take place.
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Mapping and prediction of archaeological sites of habitation by modern humans using GIS and expert mapping on the south coast of South AfricaKleyn, Philippa May January 2015 (has links)
South Africa contains many archaeological resources including shell middens from the Middle Stone Age (MSA) and Later Stone Age (LSA). These shell middens give researchers insight into the behaviour of modern humans where the first fossil evidence appears in Africa around 200 000 years ago (Klein, 2008). Research into shell middens is therefore vital to understand the origin of human kind. This study investigates whether Geographical Information Systems (GIS) is a useful tool for predicting locations of unknown shell midden sites using the characteristics of known areas of modern human habitation. This was done using suitability analysis and expert mapping techniques. Ground truthing of the results of the desktop analysis revealed that GIS is not a useful tool for predicting sites of modern habitation as the characteristics that determine human habitation are too variable.
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