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I have been experimenting with face detection in OpenCV (Open Source Computer Vision Library), and found that one could use Haar cascades to detect faces as there are several of them provided with OpenCV. However, I have noticed that there are also several LBP cascades. After doing some research, I found that LBP stands for Local Binary Patterns, and it can also be used for face detection, according to the OpenCV Face Detection Documentation.

What I would like to know is, which works better? Which one performs faster, and which one is more accurate? It seems that LBP performs faster, but I'm not 100% sure about that either. Thanks.

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up vote 31 down vote accepted

LBP is faster (a few times faster) but less accurate. (10-20% less than Haar).

If you want to detect faces on an embedded system, I think LBP is the choice, because it does all the calculations in integers. Haar uses floats, whick is a killer for embedded/mobile.

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which paper does opencv refer to with LBP algorithm on face detection? "Face Detection Based on Multi-Block LBP Representation"? – Samuel Dec 18 '13 at 5:01

An LBP cascade can be trained to perform similarly (or better) than the Haar cascade, but out of the box, the Haar cascade is about 3x slower, and depending on your data, about 1-2% better at accurately detecting the location of a face. This increase in accuracy is quite significant given that face detection can operate in the 95%+ accuracy range.

Below are some results when using the MUCT dataset.

A correct detection is noted when there is at least a 50% overlap between the ground-truth and OpenCV detected coordinates.

|   Hits  |  Misses  | False Detects  | Multi-hit   |
|  3635   |   55     |   63           |    5        |


|   Hits  |  Misses  | False Detects  | Multi-hit   |
| 3569    |  106     |   77           |    3        |
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Also, in training stages, LBP is faster than Haar. With 2000 pos sample and 300 neg sample, training using Haar type, it took about 5-6 days to complete, but with LBP, it took only some hours.

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the question you have asked will have a different answer depending on the type of thing being detected, the training settings and the parameters used during detection as well as the criteria for testing the cascades.

the accuracy of both HAAR and LBP cascades depend on the data sets (positive and negative samples) used for training them and the parameters used during training.

according to Lienhart et al,2000, in the case of face detection:

  • your -numStages, -maxDepth and -maxWeakCount parameters should be sufficiently high to achieve the desired -minHitRateand-maxFalseAlarmRate`.
  • tree based training is more accurate than stump based,
  • gentle adaboost is preferable to discrete and real adaboost,
  • the min size of training sample matters but a systematic study about it has yet to be done.

also, flags used in detectMultiScale() yield a drastic change in speed as well as accuracy on a given hardware configuration.

for testing the cascade you should settle on a data set and a method such as k-fold cross validation.

but my personal opinion is that you should look into LBP for all detection related tasks simply because LBP training can take minutes while HAAR training can take days for the same training data set and parameters.

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May be it will useful for you:

There is a Simd Library, which has an implementation of HAAR and LBP cascade classifiers. It can use standard HAAR and LBP casscades from OpenCV. This implementation has SIMD optimizations with using of SSE and AVX, so it works in 2-3 times faster then original OpenCV implementation. There is an using example:

    #include "Simd/SimdDetection.hpp"
    #include "Test/TestUtils.h"
    int main()
        typedef Simd::Detection<Simd::Allocator> Detection;
        Detection::View image;
        Test::Load(image, "../../data/image/lena.pgm");
        Detection detection;
        Detection::Objects objects;
        detection.Detect(image, objects);
        for (size_t i = 0; i < objects.size(); ++i)
            Size s = objects[i].rect.Size();
                            Rect(1, 1, s.x - 1, s.y - 1), 255);
        Save(image, "result.pgm");
        return 0;   
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