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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 do I see a green screen when executing a model that contains

 Why do I see a green screen when executing a model that contains the Chroma Resampling block from the Video and Image Processing Blockset 1.0 (R14+)?

I am using both a camera and the Texas Instruments DM642 Evaluation Module (EVM) in conjunction with my Simulink model. The model contains a Color Space Conversion block, the 'Conversion' parameter of which is set to "R'G'B' to Y'CrCb". The appropriate outputs are fed into a Chroma Resampling block.
 
When the 'Resampling' parameter of the Chroma Resampling block is set to either "4:2:2 to 4:2:0 (MPEG 1)" or "4:2:2 to 4:2:0 (MPEG 2)", then the display connected to my DM642 EVM flashes a green screen.


NOTE:-

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When the Texas Instruments DM642 Evaluation Module (EVM) exceeds its processor limits, then the video monitor connected to the board displays one of the following symptoms:
  • a green screen
  • a flashing green screen
  • a "frozen" screen (i.e., the video output is not updated)
Using the Chroma Resampling block in a Simulink model can result in this issue.
 
Note that the DM642 EVM Video ADC and DAC blocks from the Embedded Target for Texas Instruments C6000 DSP library were implemented in such a way that the video signals are transposed. In general, this implementation results in better Simulink performance since the DM642 EVM returns data that is row-major, while Simulink handles column-major data. However, correct use of the Chroma Resampling block involves transposing its inputs and outputs as demonstrated in the attached model named wChromaBlock.mdl. The transpose operations are computationally expensive, and they can easily exceed the processing limits of the DM642 EVM.

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