Please explain to me, in few words, how the Viola-Jones face detection method works.
The Viola-Jones detector is a strong, binary classifier build of several weak detectors
During the learning stage, a cascade of weak detectors is trained so as to gain the desired hit rate / miss rate (or precision / recall) using Adaboost To detect objects, the original image is partitioned in several rectangular patches, each of which is submitted to the cascade
If a rectangular image patch passes through all of the cascade stages, then it is classified as “positive” The process is repeated at different scales
The basic, weak classifier is based on a very simple visual feature (those
kind of features are often referred to as “Haar-like features”)
Haar-like features consist of a class of local features that are calculated by subtracting the sum of a subregion of the feature from the sum of the remaining region of the feature.
Lienhart introduced an extended set of twisted Haar-like feature (see image)
These twisted Haar-like features can also be fast and efficiently calculated using an integral image that has been twisted 45 degrees. The only implementation issue is that the twisted features must be rounded to integer values so that they are aligned with pixel boundaries. This process is similar to the rounding used when scaling a Haar-like feature for larger or smaller windows, however one difference is that for a 45 degrees twisted feature, the integer number of pixels used for the height and width of the feature mean that the diagonal coordinates of the pixel will be always on the same diagonal set of pixels
So we have something like:
About the formula, the Fast computation of Haar-like features using integral images looks like:
to see the complete c++ project go here
The Wikipedia article does a pretty good job, I think: