Texture extraction for object-oriented classification of high spatial resolution remotely sensed images using a semivariogram

2013 ◽  
Vol 34 (11) ◽  
pp. 3736-3759 ◽  
Author(s):  
Anzhi Yue ◽  
Chao Zhang ◽  
Jianyu Yang ◽  
Wei Su ◽  
Wenju Yun ◽  
...  
2004 ◽  
Vol 80 (6) ◽  
pp. 743-745 ◽  
Author(s):  
Joanne C White ◽  
Michael A Wulder ◽  
Darin Brooks ◽  
Richard Reich ◽  
Roger D Wheate

The on-going mountain pine beetle outbreak in British Columbia has reached historic proportions. Recently, management efforts at the local level shifted from exhaustive mapping of the infestation, to detection and mitigation of sites with minimal levels of infestation, creating an operational need for efficient and cost-effective methods to identify red-attack trees in these areas. High spatial resolution remotely sensed imagery has the potential to satisfy this information need. This paper presents the unsupervised classification of 4 metre IKONOS multispectral imagery, for the detection of mountain pine beetle red-attack, at sites with minimal infestation (< 20% of trees infested). A 4-metre buffer (analogous to a single IKONOS pixel) was applied to the red-attack trees identified on the IKONOS imagery in order to account for positional errors. When compared to the independent validation data collected from the aerial photography, it was found that 70.1% (lightly infested sites) and 92.5% (moderately infested sites) of the red-attack trees existing on the ground were correctly identified through the classification of the remotely sensed IKONOS imagery. These results demonstrate the operational potential of using an unsupervised classification of IKONOS imagery to detect and map mountain pine beetle red-attack at sites with minimal levels of infestation. Key words: mountain pine beetle, remote sensing, accuracy assessment, IKONOS, red-attack


Author(s):  
Debasish Chakraborty

Image processing is growing fast and persistently. The idea of remotely sensed image clustering is to categorize the image into meaningful land use land cover classes with respect to a particular application. Image clustering is a technique to group an image into units or categories that are homogeneous with respect to one or more characteristics. There are many algorithms and techniques that have been developed to solve image clustering problems, though, none of the method is a general solution. This chapter will highlight the various clustering techniques that bring together the current development on clustering and explores the potentiality of those techniques in extracting earth surface features information from high spatial resolution remotely sensed imageries. It also will provide an insight about the existing mathematical methods and its application to image clustering. Special emphasis will be given on Hölder exponent (HE) and Variance (VAR). HE and VAR are well-established techniques for texture analysis. This chapter will highlight about the Hölder exponent and variance-based clustering method for classifying land use/land cover in high spatial resolution remotely sensed images.


Geomorphology ◽  
2014 ◽  
Vol 221 ◽  
pp. 18-33 ◽  
Author(s):  
Zeineb Kassouk ◽  
Jean-Claude Thouret ◽  
Avijit Gupta ◽  
Akhmad Solikhin ◽  
Soo Chin Liew

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