Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a problem with training a model using the PASCAL dev kit with the Discriminatively trained deformable part model system developed by Felzenszwalb, D. McAllester, D. Ramaman and his team which is implemented in Matlab.

Currently I have this output error when I tried to train a 1-component model for 'cat' using 10 positive and 10 negative images.


??? Index exceeds matrix dimensions.

Error in ==> pascal_train at 48
models{i} = train(cls, models{i}, spos{i}, neg(1:maxneg),
0, 0, 4, 3, ...

Error in ==> pascal at 28
model = pascal_train(cls, n, note);

And this is the pascal_train file

function model = pascal_train(cls, n, note)

% model = pascal_train(cls, n, note)
% Train a model with 2*n components using the PASCAL dataset.
% note allows you to save a note with the trained model
% example: note = 'testing FRHOG (FRobnicated HOG)

% At every "checkpoint" in the training process we reset the 
% RNG's seed to a fixed value so that experimental results are 
% reproducible.

if nargin < 3
  note = '';

[pos, neg] = pascal_data(cls, true, VOCyear);
% split data by aspect ratio into n groups
spos = split(cls, pos, n);

cachesize = 24000;
maxneg = 200;

% train root filters using warped positives & random negatives
  load([cachedir cls '_lrsplit1']);
  for i = 1:n
    % split data into two groups: left vs. right facing instances
    models{i} = initmodel(cls, spos{i}, note, 'N');
    inds = lrsplit(models{i}, spos{i}, i);
    models{i} = train(cls, models{i}, spos{i}(inds), neg, i, 1, 1, 1, ...
                      cachesize, true, 0.7, false, ['lrsplit1_' num2str(i)]);
  save([cachedir cls '_lrsplit1'], 'models');

% train root left vs. right facing root filters using latent detections
% and hard negatives
  load([cachedir cls '_lrsplit2']);
  for i = 1:n
    models{i} = lrmodel(models{i});
    models{i} = train(cls, models{i}, spos{i}, neg(1:maxneg), 0, 0, 4, 3, ...
                      cachesize, true, 0.7, false, ['lrsplit2_' num2str(i)]);
  save([cachedir cls '_lrsplit2'], 'models');

% merge models and train using latent detections & hard negatives
  load([cachedir cls '_mix']);
  model = mergemodels(models);
 48:   model = train(cls, model, pos, neg(1:maxneg), 0, 0, 1, 5, ...
                cachesize, true, 0.7, false, 'mix');

save([cachedir cls '_mix'], 'model');

% add parts and update models using latent detections & hard negatives.
  load([cachedir cls '_parts']);
  for i = 1:2:2*n
    model = model_addparts(model, model.start, i, i, 8, [6 6]);
  model = train(cls, model, pos, neg(1:maxneg), 0, 0, 8, 10, ...
                cachesize, true, 0.7, false, 'parts_1');
  model = train(cls, model, pos, neg, 0, 0, 1, 5, ...
                cachesize, true, 0.7, true, 'parts_2');
  save([cachedir cls '_parts'], 'model');

save([cachedir cls '_final'], 'model');

I have highlighted the line of code where the error occurs at line 48.

I am pretty sure that the system is reading in both the positive and negative images for training correctly. I have no idea where this error is occurring since matlab does not indicate precisely which index is exceeding the matrix dimensions.

I have tried to tidy up the code as much as possible do guide me if I have done wrong somewhere.

Any suggestions where I should start looking at?

Ok, I tried with the use of display to check the variables in use for pascal_train; disp(i); disp(size(models)); disp(size(spos)); disp(length(neg)); disp(maxneg);

So the results returned were;


 1     1

 1     1



share|improve this question
I removed the Pascal tag from your question, because as it's used here it refers specifically to the Pascal programming language, not the use of Pascal_data in matlab. The definition of the tags will provide you with the intent that they are used to signify here. In this case, it was misleading as your question was not related to the Pascal language in any way. :-) –  Ken White Jan 24 '13 at 3:54
Ok! My bad, thanks! =) –  user1968818 Jan 24 '13 at 4:23

2 Answers 2

up vote 0 down vote accepted

I don't have an answer to your question, but here is a suggestion that might help you debug this problem yourself.

In the Matlab menu go to Debug-> Stop if Errors/Warnings ... and select "Always stop if error (dbstop if error)". Now run your script again and this time when you get the error, matlab will stop at the line where the error occurred as if you put a breakpoint there. At that point you have the whole workspace at your disposal and you can check all variables and matrix sizes to see which variable is giving you the error you are seeing.

share|improve this answer
Hmm, i did that and yes i do get the whole workspace, with the variables...i checked my structs and ensure that the index were not out of bound..so it's puzzling but then again I am a newbie at matlab..I would love to post images but i need 10 rep point =( –  user1968818 Jan 24 '13 at 4:25
You may have already done this, but so in case you haven't. Since your code is failing at models{i} = train(cls, models{i}, spos{i}, neg(1:maxneg), 0, 0, 4, 3, ..., check size(models), size(spos) and make sure they are larger than or equal to the value of i when the line fails. Also check if length(neg) >= maxneg. –  Karthik V Jan 24 '13 at 4:31
Ok i edited the post with the results –  user1968818 Jan 24 '13 at 5:30
Why is there a need to heck if length(neg) is >= maxneg? This implies that I must use more than the limit of negative images? In this case, I used 10 but the limit was 200. –  user1968818 Jan 24 '13 at 5:34
when you use neg(1:maxneg), you are assuming that neg is a vector with atleast maxneg points, if the length is lower than this then this is illegal and Matlab will signal an error. From the edit you posted to your question, it is clear that the length of neg is only 10. I believe that is the source of your error. –  Karthik V Jan 24 '13 at 7:33

Just replace:

models{i} = train(cls, models{i}, spos{i}, neg(1:maxneg),


models{i} = train(cls, models{i}, spos{i}, neg(1:min(length(neg),maxneg)),

there are several similar sentences at other place in this script, you should revise them all.

The reason is that your train sample set is small, so you list 'neg' is short than maxneg(200)

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.