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Please explain to me, in few words, how the Viola-Jones face detection method works.

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here is answer en.wikipedia.org/wiki/Viola-Jones_object_detection_framework ask what is not clear – Andrey Apr 27 '11 at 18:00
up vote 60 down vote accepted

The Viola-Jones detector is a strong, binary classifier build of several weak detectors

Each weak detector is an extremely simple binary classifier

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

enter image description here

Actually, at a low level, the basic component of an object detector is just something required to say if a certain sub-region of the original image contains an istance of the object of interest or not. That is what a binary classifier does.

The basic, weak classifier is based on a very simple visual feature (those kind of features are often referred to as “Haar-like features”)
enter image description here

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.

enter image description here
These feature are characterised by the fact that they are easy to calculate and with the use of an integral image, very efficient to calculate.

Lienhart introduced an extended set of twisted Haar-like feature (see image)

enter image description here
These are the standard Haar-like feature that have been twisted by 45 degrees. Lienhart did not originally make use of the twisted checker board Haar-like feature (x2y2) since the diagonal elements that they represent can be simply represented using twisted features, however it is clear that a twisted version of this feature can also be implemented and used.

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

enter image description here
This means that the number of different sized 45 degrees twisted features available is significantly reduced as compared to the standard vertically and horizontally aligned features.

So we have something like: enter image description here

About the formula, the Fast computation of Haar-like features using integral images looks like:

enter image description here

Finally, here is a c++ implementation which uses ViolaJones.h by Ivan Kusalic

to see the complete c++ project go here

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Can you explain me, a bit better, what is a visual feature(the meaning of the squares in the picture) and what means the final formula that is in your answer? – BlackShadow Apr 27 '11 at 18:17
@BlackShadow: updated answer – cMinor Apr 27 '11 at 18:28
This is a pretty fantastic answer! – Jon Trauntvein Apr 27 '11 at 18:33
Ok, thanks a lot. I have one last question (in reference to the JCooper answer): how can work the face detection with haar features if we have a white guy with blue or green eyes (so that the difference of light between the nose and the eyes isn't considerable)? – BlackShadow Apr 27 '11 at 19:03
@BlackShadow It still works pretty well because eyes are set back in the head. The shadows from top-down lighting can trigger the feature. – JCooper Apr 28 '11 at 15:50

The Wikipedia article does a pretty good job, I think:


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i don't understand what is the meaning of "features" in the Viola-Jones method... – BlackShadow Apr 27 '11 at 18:07
@BlackShadow The features are pretty simple. It largely consists of adding up all the pixel values within a rectangle and comparing them to the sum of the pixel values within another rectangle. The black rectangle mean that the pixel values are counted as being negative. The white rectangles are positive. When you add them up, you see if the total sum is greater than zero. – JCooper Apr 27 '11 at 18:20
ok, but i don't understand how this method can works for detecting faces in a picture... – BlackShadow Apr 27 '11 at 18:28
@BlackShadow It turns out that upright faces have two dark eyes separated by a light nose (for light-skinned people, at least). The rectangles make for a rough approximation that finds those. Likewise, the mouth is a different color. Because the feature is so simple. You can look for them very fast in multiple sizes all over an image. – JCooper Apr 27 '11 at 18:31

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