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Quantization and Classification using K-Means Clustering

by Sara Wendte


Introduction

K-means clustering is a simple unsupervised learning method. This method can be applied to implement color quantization in an image by finding clusters of pixel values. Another useful application would be automatic classification of phonemes in a speech signal by finding clusters of formant values for different speakers.


Background


Theory


Color Quantization Application


Phoneme Classification Application


References

"14.2-Clustering-KMeansAlgorithm- Machine Learning - Professor Andrew Ng",
https://www.youtube.com/watch?v=Ao2vnhelKhI.

Stanford CS 221,"K Means",
http://stanford.edu/~cpiech/cs221/handouts/kmeans.html.

Purdue ECE 438, "ECE438 - Laboratory 9: Speech Processing (Week 1)", October 6, 2010,
https://engineering.purdue.edu/VISE/ee438L/lab9/pdf/lab9a.pdf.



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