Book Image

Machine Learning for OpenCV

By : Michael Beyeler
Book Image

Machine Learning for OpenCV

By: Michael Beyeler

Overview of this book

Machine learning is no longer just a buzzword, it is all around us: from protecting your email, to automatically tagging friends in pictures, to predicting what movies you like. Computer vision is one of today's most exciting application fields of machine learning, with Deep Learning driving innovative systems such as self-driving cars and Google’s DeepMind. OpenCV lies at the intersection of these topics, providing a comprehensive open-source library for classic as well as state-of-the-art computer vision and machine learning algorithms. In combination with Python Anaconda, you will have access to all the open-source computing libraries you could possibly ask for. Machine learning for OpenCV begins by introducing you to the essential concepts of statistical learning, such as classification and regression. Once all the basics are covered, you will start exploring various algorithms such as decision trees, support vector machines, and Bayesian networks, and learn how to combine them with other OpenCV functionality. As the book progresses, so will your machine learning skills, until you are ready to take on today's hottest topic in the field: Deep Learning. By the end of this book, you will be ready to take on your own machine learning problems, either by building on the existing source code or developing your own algorithm from scratch!
Table of Contents (13 chapters)

Tuning hyperparameters with grid search

The most commonly used tool for hyperparameter tuning is grid search, which is basically a fancy term for saying we will try all possible parameter combinations with a for loop.

Let's have a look at how that is done in practice.

Implementing a simple grid search

Returning to our k-NN classifier, we find that we have only one hyperparameter to tune: k. Typically, you would have a much larger number of open parameters to mess with, but the k-NN algorithm is simple enough for us to manually implement grid search.

Before we get started, we need to split the dataset as we have done before into training and test sets. Here we choose a 75-25 split:

In [1]: from sklearn.datasets import...