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How to properly extract data from text file?

 I have a data in a text file that looks basically like this:

 

 

LineType: 1
PlayMode: Single
GameType: OneBalloon
LineType: SumR3
TranslationSpeed: 0
SensivityBalloon1: 0.09
SensivityBalloon2: 0
LevelLength: 20
Season: Summer
Backgrounddifficulty: Easy
StarScore[1] DistanceScore[1] StabilityScore[1] ScoreFrames[1] Frame[1] Time[1] ForcePlayer1[1] BalloonPath_X[1] BalloonPath_Y[1] CharacterPath_X[1] CharacterPath_Y[1] IsInactive[1] 
0 0 0 0 0 0 30653 0 4.225888 0 2.150741 0 
1 0 0 0 1 0 30641 0 -2.579402 0 -4.643577 0

And I am using this to extract data starting from the StarScore:

file = fullfile('file.txt');
Subject(1).T = readtable(file,'Delimiter',' ', ...
             'ReadVariableNames',true, 'HeaderLines', 10);
Subject(1).T(:, 13) = [];
Two questions I have:
 
1) The problem with this is that, the headerline should be at 11, but MATLAB extracted the first data as the header if I put HeaderLines to 11. It skips the first line. Why?
 
2) How to extract the first few information from the text file on a different cell and stop before it reaches starScore?

NOTE:-


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The first one is (relatively) easy -- you set 'ReadVariableNames',true whose meaning per documentation is "the first row of the region to read contains the variable names for the table." Hence, the count of lines to skip is based on all the information to be parsed, not just the data portion; if you want the header line for names it becomes one of the data lines. So in that case 'HeaderLines' is just 10; you want the 11 th line.
 
I don't understand the second request, sorry...
 
ADDENDUM
 
OK, the second came to me  Another approach to same end result...
 
 hdrdata=regexp(textread(file,'%s','headerlines', 10, ...
                  'delimiter','\n','whitespace',''),'split');
which will leave you a 10x1 cell array each of which contains the text/value pair.
 
 
While TMW has deprecated the venerable textread over its uptown


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