I am trying to create head detector using LBP features in OpenCV, using traincascade utility. The head detector, I hope, will result in something similar to OpenCV's profileface created by Vladim Pivarevsky. I want to recreate the model because current model only handle frontal and left side face.

I follow Naotoshi Seo tutorial and use dataset from Irshad Ali website. Unfortunately, resulting model performs slowly with lots of false detection.

The traincascade is run as follow:

opencv_traincascade -data "data" -vec "samples.vec" -bg "out_negatives.dat" -numPos 26000 -numNeg 4100 -numStages 16 -featureType LBP -w 20 -h 20 -bt GAB -minHitRate 0.995 -maxFalseAlarmRate 0.3 -weightTrimRate 0.95 -maxDepth 1 -maxWeakCount 100 -maxCatCount 256 -featSize 1

I tried using other dataset, now frontal face from http://fei.edu.br/~cet/facedatabase.html but the result is still same: slow detection and lot of false positives.

Anybody have knowledge or experience in creating cascade haar/lbp model? Please give any suggestion so I can improve the accuracy of the model. I tried using OpenCV built-in model, and the result is good (lbpfrontalface.xml). Thank you so much!

4 Answers 4


The best way is "trial and error"... You really need differents faces, and the greater difference is better. You can take one face and via createsamples do many faces. But this way, you never have good cascade. You should have many different faces, and if they will not be enough, you can increase them through createsamples. For example, you have 500 different faces by createsamples you can do with them 5000, then perhaps cascade will satisfy you.

About start training: to much positive:) or too few negative. You need for example 5000 pos and 2500 neg (pos = 2*neg). At least in my case it was the best choice.

  • I tried your suggestion, 12000 positives and 5000 negatives. The positives created from 2000 face, using create samples to make it to 12000. But still, too much false positives. Can you give me example of your working traincascade parameter? My parameter is as follows: opencv_traincascade -data "data" -vec "samples.vec" -bg "out_negatives.dat" -numPos 10000 -numNeg 5600 -numStages 16 -featureType LBP -w 20 -h 20 -minHitRate 0.995 -maxFalseAlarmRate 0.5 -weightTrimRate 0.95 -maxDepth 1 -maxWeakCount 100 -maxCatCount 256 -featSize 1
    – bonchenko
    Jun 24, 2013 at 4:18
  • If you have false "faces" and true too, I can recommend you try increase numStages. Else something wrong in your positive. My parameters are "-data h_data -vec vecs/vec -bg bg/negative.txt -numPos 5000 -numNeg 2500 -numStages 14 -featureType HAAR -minHitRate 0.999 -maxFalseAlarmRate 0.3 -w 14 -h 24" but I train cascade for bottles(I have trained lbp too but haar was better). Also you should read this. It most good answer I saw.
    – McBodik
    Jun 24, 2013 at 9:04
  • Thanks! Now the false positives have decreased to ---> 0, I change the 0maxFalseAlarmRate to 0.1 and makWeakCount 300. One problem though, is still the speed. Now I will try @GPPK answer about increasing sample size. Although, because I use .MergeVector from Sonots for positive vector, I seems to be unable to use other size tha 20x20. What do you use to create the positive vector?
    – bonchenko
    Jun 24, 2013 at 9:11
  • I use createsamples. It can create vec like "-num 5456 -bg bg/negative.txt -vec vecs/vec -info samples/info.txt -maxxangle 0.1 -maxyangle 0.1 -maxzangle 0.1 -maxidev 30 -bgcolor 255 -bgthresh 0 -w 14 -h 24". But in faces 20x20 is normal, face is square rather than a rectangle(bottles in my case). Good luck. When you'll have result, share your experience :)
    – McBodik
    Jun 24, 2013 at 9:21
  • @McBodik, do you have the xml? Could you share this with us?
    – dcorbatta
    May 23, 2014 at 18:51

In short, it's normal to get a lot of false positives after stage 1 of modeling. You need to take those false positives and add them to the negative dataset and repeat the modeling (stage 2). This is called hard negative mining. It is essential. You can multiply the false negatives by incrementally rotating them through 360 degrees.

Three other important points: 1) opencv_createsamples is bad for faces; 2) Use negatives that are challenging (suitable); 3) LBP is second rate in many contexts.

  1. Faces are fairly symmetrical and never display a trapezium like distortion in when photographed. Use very small angles if you must, like 0.02 radians. Further, you will find when you look at the images in the .vec file that the background fill around the distorted edges looks quite unnatural.

  2. Not only the number of negatives is important, but the quality of the of the negatives is important. Faces are smooth compared to many negative images (eg trees, Rocky Mountains etc) so it is relatively easy to distinguish a face from a pine tree at a distance. However, you will get a lot of false positives from smooth surfaces like walls. It is best to include challenging images in the negative dataset. I found that the best background were images of smooth painted plasterboard walls. Take a video whilst walking along some walls, use ffmpeg to chop it up into a heap of images. Again, you can multiply these negatives by incrementally rotating them through 360 degrees, then flip and rotate again.

  3. Be patient, use HAAR not LBP.

AI is all the rage now, just divide up 100,000 uncropped images into folders for the corresponding classes and start training your model. However, you may find this approach only gets 98-99% correct classification rate. Way too many false positives. You will get better results with much less data doing what I said above (whether using HAAR cascades or neural nets). This is the real data science work: shrewd selection of the negative and positive datasets and the time consuming work in defining the boundary boxes.


It will be slow, relatively as it starts at 20x20 and searches the whole image then gets slightly bigger, searches again etc. - try increasing your sample size to decrease the time to run.

I also noticed you don't have anywhere near as many bg images as positive. Try increasing that to at least the same as your positive and that should help.

I suggest also cracking out the haar features and see if that gives you any results.

everything else seems fine without looking at your input data


For any one strugling with flase positives. Take a look at file traincascade/imagestorage.cpp, at class CvCascadeImageReader::NegReader and methods get and nextImg

I have to rewrite logic of taking negative samples. When soft negatives are generated they are cut with scaling from background image in step manner fasion in original implementation. In my case the background samples must be only randomly cut from thise negatives using window size/train size.

In my case it looks like because of scaling larger portions of soft samples into small window, training was stoped to early as it had always blury negative samples and FA passed contrary to real images detected with cascade later

  • Btw. The claim about randomnes of NEG samples in link below is falsive. There is no random pickup, full deterministic ratating a set. "3.The numNeg [..] They are picked randomly (cropped and scaled from the negative images) " answers.opencv.org/question/22964/…
    – Artur Bac
    Nov 12, 2019 at 17:23

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