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I extract 2 edge features (Hog feature and sobel operator) from a single image.

How can i create an image feature dataset in Scikit-learn python, like iris_dataset ? In the library there are csv files which represent datasets. A csv file containing only numbers. How were generate these numbers? feature extraction?

unfortunately i saw only a java tutorial here http://www.coccidia.icb.usp.br/coccimorph/tutorials/Tutorial-2-Creating-..., at 5 point talk about generating the training matrices (average and co-variance matrices)? There is any function in Scikit who generate these training arrays?

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up vote 2 down vote accepted

You don't need to wrap your data as a CSV file to load it as a dataset. scikit-learn models have a fit method that expects:

  • as first argument that is a regular numpy array (or scipy.sparse matrices) with shape (n_samples, n_features) (most often with dtype=numpy.float64) to encode the features vector for each sample in the training set,

  • and for supervised classification models, a second argument with shape (n_samples,) and dtype=numpy.int32 to encode the class label assignments encoded as integer values for each sample of the training set.

If you don't know the basic numpy datastructure and what shape and dtype mean, I stongly advise you to have a look at a tutorial such as SciPy Lecture Notes.

Edit: If you really need to read / write numerical CSV to / from numpy arrays, you can use numpy.loadtxt / numpy.savetxt

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yes, but, it's correct: i extract 100 numpy arrays from 100 hundred images and i make a 1 numpyarray composed by 100 numpy arrays?and put in n_features spot? –  postgres Dec 11 '12 at 19:53
and for samples what they mean (in tutorial: scikit-learn.org/stable/tutorial/basic/tutorial.html), an array of what? sorry for dummy questions but i do not figure out how worls this stuff! –  postgres Dec 11 '12 at 19:59
For a supervised task (e.g. classification problem), you typically train the model by calling model.fit(X, y) where X is a 2 dimensional array n_samples rows (one for each instance or image to classify) and n_features columns, one for each "feature" or "attribute" that describe your instances / samples / objects / images / whatever and y is one dimensional array of n_samples integer values, that represent the class label assignments for each row in X. E.g. for a binary classification problem each element in y can be either 0 or 1 for instance. –  ogrisel Dec 11 '12 at 20:07
By the way to concatenate several 1d arrays as rows of a 2D array you can use: docs.scipy.org/doc/numpy/reference/generated/numpy.vstack.html –  ogrisel Dec 11 '12 at 20:15
n_samples is not a variable name for an array. It's a way to tell "number of samples". It's an integer. If you have 3 images with 1000 HOG features each, they n_samples == 3, n_features == 1000 and X has shape (n_samples, n_features) == (3, 1000). Please follow the tutorial I gave you or learn numpy elsewhere first. –  ogrisel Dec 12 '12 at 15:53

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