# resample and normalize a numpy array for gesture recognition

i'm going to write a little application to recognize gesture (for now with the mouse).

now, record the mouse coordinate in a numpy array of Point object (simple class with x and y attributes). for training my system (based on HMM) i need (i think...) some sample of the same lenght normalized beetween the same range.

Say, for example, that i need an array of 8 element length for my training and for my classifier. And i have just recordered a1( 5-len element ), and a2( 9-len element ). How to achive len(a1)==len(a2)==8 ?

EDIT: i found a website that explain my problem: http://www.creativedistraction.com/demos/gesture-recognition-kinect-with-hidden-markov-models-hmms/ he uses k-means for reduce element in 8 cluster..

SOLUTION: i have some scattered points (i don't know how many) and i want to reduce it to a 8 meaning point. one of the technique i can use is to clusterize them with some cluster algorithms. KMeans could be one possibility. in scipy with this code: from scipy.cluster.vq import kmeans2

``````def clusterize(numpy_array, n_cluster):
centroids, labels = kmeans2(numpy_array, n_cluster)
#print centroids, labels
return centroids
``````

note: if numpy_array size is less then n_cluster i noticed that the solutions are not good, but in my real case after some trials i observed that i have more than (numpy_array size>=60, n_cluster=8). this is quite logical: k-means is not a deterministic alorightm but it is a iterative process that involved some random initialization, because there are no analitical good solution for this kind of problem (if i understood well).

for sure there are some mathematical insight that i don't want to delve into. this do the work.

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I'm not sure this is what you need, but this will linearly interpolate from the input along `n` evenly spaced points.
``````input = np.array([0, 1, 2, 3, 4]) ** 2