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How to change x-axis ticks labels in stackedplot?

  h = stackedplot(rand(6,3));   I want to set x-axis ticks according to my own defined set i.e., instead of 1:6, I want to replace x-axisticks [1, 2,3 ,4,5,6] to ['A', 'S','T', 'AAA', 'BBB', 'ZZZ'] , by rotating it to 90 degree that is vertically insted of horizontally?     NOTE:- Matlabsolutions.com  provide latest  MatLab Homework Help, MatLab Assignment Help  ,  Finance Assignment Help  for students, engineers and researchers in Multiple Branches like ECE, EEE, CSE, Mechanical, Civil with 100% output.Matlab Code for B.E, B.Tech,M.E,M.Tech, Ph.D. Scholars with 100% privacy guaranteed. Get MATLAB projects with source code for your learning and research. There does not seem to be an easy way to set the  XTick  or  XTickLabel  of a  StackedLineChart  object (such as what's created by  stackedplot ):   data = rand(6,3); h = stackedplot(1:6,data); % try a couple of things, neither of which work try set(h,'XTick',1:6,'XTic

Why am I unable to import files into the Map Viewer in the

 Why am I unable to import files into the Map Viewer in the Mapping Toolbox 2.1 (R14SP2) on Mac OS X 10.3.x?

I am using the Map Viewer in the Mapping Toolbox 2.1 (R14SP2) on Mac OS X 10.3.8. I attempt to import an image into the Map Viewer using the following steps:
 
1. Enter the following command at MATLAB command line to start the Map Viewer:
 
mapview
2. From the menu bar of the Map Viewer, select "File -> Import From File..."
 
However, instead of seeing the Import Data dialog box, I receive the following error at the command line:
 
 ??? No method 'returnExtensionString' with matching signature found for class 'com.mathworks.hg.util.dFilter'. 

 ??? Error while evaluating uimenu Callback.

 NOTE:-


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This bug has been fixed in Release 14 Service Pack 3 (R14SP3). For previous product releases, read below for any possible workarounds:
 
There is a bug in the Mapping Toolbox 2.1 (R14SP2) in the way that the Map Viewer handles importing files on Mac OS X 10.3.x.
 
To work around this issue, load the file into the workspace using functions such as IMREAD or GEOTIFFREAD, and then import from the workspace into the Map Viewer by selecting "File-> Import From Workspace -> Raster Data -> Image..." from the menu bar of the Map Viewer. For example, to import the "boston.tif" file in the "mapdemos" folder, use the following:
 
[boston_X, boston_cmap, boston_R, bbox] = geotiffread('boston.tif'); 

boston_rgb = ind2rgb8(boston_X, boston_cmap);

Open the "Import Image Data" dialog by selecting "File-> Import From Workspace -> Raster Data -> Image..." from the menu bar of the Map Viewer. In the dialog,


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