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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

How to return the state of preivew camera?

 thank you for your help in advance.

 
Is there something like fopen for gige camera "Preview(g)"?
 
here is what the code looks like.
 
   Camlist = gigecamlist;
    IP = string(Camlist{1,3});
    g= gigecam(IP,'PixelFormat','mono8');  
    g_Res = [g.Width g.Height];
 %----------------lines to created figure with tabs-------------------------------------------------------
streamingHandle = uicontrol(tab_ini,'Style','PushButton','String', 'Streaming','Position',[135 10 80 20],'Callback', {@streaming,tab_ini,g_Res,g});
%------------------------------------------------------ callback funtion for push button
function streaming(object_handle,event, tab_ini, g_Res, g)
%% How can i return a value from 'preview(g)' to condition "if"  
% if Preview(g) ==1;  is opened
% closePreview(g);
% end
dock_tab = axes(tab_ini,'units','pixels','Position',[35,40,g_Res(1),g_Res(2)],'box','on');
nBands = 1; % grey scale
I = image(zeros(g_Res(2),g_Res(1), nBands),'Parent',dock_tab); 
preview(g, I);

 




NOTE:-

Matlabsolutions.com provide latest MatLab Homework Help,MatLab 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.


%avoid warnings about struct() preventing hiding implementation details
old_warning_state = warning('off', 'MATLAB:structOnObject');
gs = struct(g);
gsw = struct(gs.webcamImpl);
gscpc = struct(gsw.CamPreviewController);
warning(old_warning_state);

if gscpc.IsPreviewing
    closePreview(g)
end
Note: you cannot do this directly: several of the properties are hidden properties.



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