I am having issues with 'data overload' while processing point cloud data in MATLAB. This is what I am currently doing:
- I begin with my raw data files, each in the order of ~30Mb each.
I then do initial processing on them to extract n individual objects and remove outlying points, which are all combined into a 1 x n structure,
testset, saved into
So far so good. Now things become complicated:
For each point in each object in
testset, I will compute one of a number of features, which ends up being a matrix of some size (for each point). The size of the matrix, and some other properties of the computation, are parameters of the calculations. I save these computed features in a 1 x n cell array, each cell of which contains an array of the matrices for each point.
I then save this cell array in a
.matfile, where the name specified the parameters, the name of the test data used and the types of features extracted. For example:
Now for each of these files, I then do some further processing (using a classification algorithm). Again there are more parameters to set.
So now I am in a tricky situation, where each final piece of the initial data has come through some path, but the path taken (and the parameters set along that path) are not intrinsically held with the data itself.
So my question is:
Is there a better way to do this? Can anyone who has experience in working with large datasets in MATLAB suggest a way to store the data and the parameter settings more efficiently, and more integrally?
Ideally, I would be able to look up a certain piece of data without having to use regex on the file strings—but there is also an incentive to keep individually processed files separate to save system memory when loading them in (and to help prevent corruption).
The time taken for each calculation (some ~2 hours) prohibits computing data 'on the fly'.