i try to training a classifier, i have create a file .vec whit create sample and it's ok.
Info file name: C:\OpenCV\positive.txt
Img file name: (NULL)
Vec file name: C:\OpenCV\sample.vec
BG file name: (NULL)
Num: 20
BG color: 0
BG threshold: 80
Invert: FALSE
Max intensity deviation: 40
Max x angle: 1.1
Max y angle: 1.1
Max z angle: 0.5
Show samples: FALSE
Width: 50
Height: 50
Create training samples from images collection...
Done. Created 20 samples
and now use training.bat, this is the file:
C:\OpenCV\opencv-2_4\build\x86\vc10\bin\opencv_traincascade.exe -data classifier -vec "C:\OpenCV\samples.vec" -bg "C:\OpenCV\negative.txt" -npos 20 -nneg 16 -numStages 4 -minHitRate 0.999 -maxFalseAllarmRate 0.5 -w 74 -h 100 -mode ALL -precalcvalBuffSize 256 -precalcdxBufSize 256
But when i call training.bat in dos give me this error:
Image reader can not be created from -vec C:\OpenCV\samples.vec and -bg C:\OpenCV\negative.txt.
can someone help?
It generally pops when the files do not exist in the directory you are calling, make sure you wrote the file name and path correctly, and make sure the vector file you are calling has the ".vec" extension.
Related
I am trying to train my own OpenCV Haar Classifier for cup detection.
I have 100 images which contain cup and 400 images which do not contain cup, So,
No of Positive Images = 100
No. of Negative Images = 400
At first I created dat for both of them by
find ./Negative_Images -name '*.jpg' >negatives.dat
find ./Positive_Images -name '*.jpg' >positives.dat
Next, I run the following command to generate samples (I put value for sample 100 as no of my positive images are 100. Is it right? )
perl createtrainsamples.pl positives.dat negatives.dat samples 100 "opencv_createsamples -bgcolor 0 -bgthresh 0 -maxxangle 1.1 -maxyangle 1.1 maxzangle 0.5 -maxidev 40 -w 80 -h 60"
Now 100 samples (*.jpg.vec) are created in samples folder. Next, I run the following command to generate samples.vac
python ./tools/mergevec.py -v samples/ -o samples.vec
mergevec.py found in the tutorial by mrnugget
Now for the next command is "opencv_haartraining",
opencv_traincascade -data classifier -vec samples.vec -bg negatives.dat -precalcValBufSize 2500 -precalcIdxBufSize 2500 -numPos 100 -numNeg 400 -numStages 15 -minhitrate 0.99 -maxfalsealarm 0.5 -w 80 -h 60
I am receiving error Error: Can not get new positive sample
Someone solved it by numPos = noOfPositiveImages*0.9, But it did not work for me
From different sources, I found a formula to calculate the value for numPose.
vec-file has to contain >= (numPose + (numStages-1) * (1 - minHitRate) * numPose) + S
So far I understand, for me
vec-file has to contain = 100 (As I had 100 positive Images, and from those 100 samples were created)
numStage = 4 (Or it can be any other value, as I want)
minHitRate = 0.99
S = count of samples from vec-file.(Some other place says, the count of all the skipped samples from vec-file (for all stages))
I do not understand, what value should I put for S?
Can anyone explain this formula with example? What value should I put in the command to solve this error?
I'm trying to run my first opencv training set and I'm not convinced that opencv_traincascade is making progress. For my training set I have 9 positive images and 10 negative images. To create samples I have used
opencv_createsamples -vec box.vec -w 44 -h 50
and for my training set I run
opencv_traincascade -data data -vec box.vec -bg bg.txt -numPos 8 -numNeg 10 -numStages 2 -w 44 -h 50 -featureType LBP
All positive and negative images are 44x50 and here is the output of both tools
opencv_createsamples
Info file name: (NULL)
Img file name: (NULL)
Vec file name: box.vec
BG file name: (NULL)
Num: 1000
BG color: 0
BG threshold: 80
Invert: FALSE
Max intensity deviation: 40
Max x angle: 1.1
Max y angle: 1.1
Max z angle: 0.5
Show samples: FALSE
Original image will be scaled to:
Width: $backgroundWidth / 44
Height: $backgroundHeight / 50
opencv_traincascade
PARAMETERS:
cascadeDirName: data
vecFileName: box.vec
bgFileName: bg.txt
numPos: 8
numNeg: 10
numStages: 1
precalcValBufSize[Mb] : 1024
precalcIdxBufSize[Mb] : 1024
acceptanceRatioBreakValue : -1
stageType: BOOST
featureType: LBP
sampleWidth: 44
sampleHeight: 50
boostType: GAB
minHitRate: 0.995
maxFalseAlarmRate: 0.5
weightTrimRate: 0.95
maxDepth: 1
maxWeakCount: 100
===== TRAINING 0-stage =====
<BEGIN
POS count : consumed 8 : 8
NEG count : acceptanceRatio 10 : 1
The training never shows any other output even after many hours of run time. I see no data in my data directory. Clearly i'm doing something wrong and I'd love to know what it is.
I need to detect special image (something like symbol +) in scanned document. I'm going to train cascade using opencv_traincascade program (opencv 3.0)
This is my file structure:
C:\imgs\learn1
Bad
1.bmp
....
Good
1.bmp
....
Bad.dat
Good.dat
This my Bad.dat:
Bad\1.bmp
...
Bad\53.bmp
Bad\img001.jpg
...
Bad\img146.jpg
This is my Good.dat (every good file fully contains the special image and nothing more)
Good\1.bmp 1 0 0 60 59
...
Good\100.bmp 1 0 0 27 28
I've successfuly created vec file.
C:\opencv\build\x64\vc12\bin>opencv_createsamples.exe
-info C:\imgs\learn1\Good.dat
-vec samples.vec
-w 10 -h 10
Info file name: C:\imgs\learn1\Good.dat
Img file name: (NULL)
Vec file name: samples.vec
BG file name: (NULL)
Num: 1000
BG color: 0
BG threshold: 80
Invert: FALSE
Max intensity deviation: 40
Max x angle: 1.1
Max y angle: 1.1
Max z angle: 0.5
Show samples: FALSE
Width: 10
Height: 10
Create training samples from images collection...
C:\imgs\learn1\Good.dat(101) : parse errorDone. Created 100 samples
This is call and result of opencv_traincascade
C:\opencv\build\x64\vc12\bin>
-opencv_traincascade.exe
-data haarcascade
-vec C:\opencv\build\x64\vc12\bin\samples.vec
-bg C:\imgs\learn1\Bad.dat
-numStages 16
-minhiteate 0.99
-maxFalseAlarmRate 0.5
-numPos 80
-numNeg 199
-w 10
-h 10
-mode ALL
-precalcValBufSize 1024
-precalcIdxBufSize 1024
PARAMETERS:
cascadeDirName: haarcascade
vecFileName: C:\opencv\build\x64\vc12\bin\samples.vec
bgFileName: C:\imgs\learn1\Bad.dat
numPos: 80
numNeg: 199
numStages: 16
precalcValBufSize[Mb] : 1024
precalcIdxBufSize[Mb] : 1024
acceptanceRatioBreakValue : -1
stageType: BOOST
featureType: HAAR
sampleWidth: 10
sampleHeight: 10
boostType: GAB
minHitRate: 0.995
maxFalseAlarmRate: 0.5
weightTrimRate: 0.95
maxDepth: 1
maxWeakCount: 100
mode: ALL
===== TRAINING 0-stage =====
<BEGIN
POS count : consumed 80 : 80
Train dataset for temp stage can not be filled. Branch training terminated.
Cascade classifier can't be trained. Check the used training parameters.
As you can see, there is some error. Can you help me what is wrong exactly? "Check the used training parameters" is very general phrase.
(The folder C:\opencv\build\x64\vc12\bin\haarcascade exists)
I don't know what was wrong, but I've done it.
1)I've increased number of positive examples to 400
2)I've increased number of negative examples to 398
3)I found that if an image size 61 x 60, I shoud write in Good.dat
Good\1.bmp 1 0 0 60 59
(Image coordinates begin from 0 and end at width-1 and height-1 values)
4)I found type error: minhiteate - > minHitRate
and nothing helps...
5)I try to train in openvc 2.4 and i've got my cascade.xml file
But now I can't use it because of other error, but it's offtopic. (now I,m googling)
Im trying to train a haar cascade. For that as a test run, I'm taking 5 positive images (which have the image). I use a program called objectmarker.exe to mark the object in the image and store the coordinates as well as the height and width of the rectangle in a text file (positives.txt)
Now when I try to create a .vec file using the the text file from command line, the program executes, but i get the following:
positive(1).txt : parse errorDone. Created 0 samples
The .vec file does get generated but if i try to view it, it opens a window and crashes.
I use the following code
C:\Sahil\Major Project\Haartraining Stuff\Haartraining Stuff\STEPS\step 02>openc
v_createsamples.exe -info positives.txt -num5 -vec vec5.vec -w 20 -h 20
Info file name: positives.txt
Img file name: (NULL)
Vec file name: vec5.vec
BG file name: (NULL)
Num: 1000
BG color: 0
BG threshold: 80
Invert: FALSE
Max intensity deviation: 40
Max x angle: 1.1
Max y angle: 1.1
Max z angle: 0.5
Show samples: FALSE
Width: 20
Height: 20
Create training samples from images collection...
positives.txt(1) : parse errorDone. Created 0 samples
my postives.txt is in the following format
C:/Sahil/Major Project/Haartraining Stuff/Haartraining Stuff/STEPS/step 02/rawdata/00007 001 (3).bmp_0000_0065_0107_0107_0199.bmp 1 1 2 106 193
C:/Sahil/Major Project/Haartraining Stuff/Haartraining Stuff/STEPS/step 02/rawdata/00007 001 (4).bmp_0000_0065_0107_0107_0199.bmp 1 1 2 108 195
C:/Sahil/Major Project/Haartraining Stuff/Haartraining Stuff/STEPS/step 02/rawdata/00007 001.bmp_0000_0065_0107_0107_0199.bmp 1 2 5 110 195
C:/Sahil/Major Project/Haartraining Stuff/Haartraining Stuff/STEPS/step 02/rawdata/img1.bmp 1 4 4 103 190
C:/Sahil/Major Project/Haartraining Stuff/Haartraining Stuff/STEPS/step 02/rawdata/img2.bmp 1 3 5 118 217
kindly suggest what i can do to correct this error. as i cannot proceed further
How is opencv_createsamples.exe distinguishing image file names? It might be written not to check white characters in paths/file names. Try without spaces either in the paths and file names.
I'm trying to train a new haar-cascade for faces.
I have a positive dataset of 2000 cropped face images (just the face) and 3321 negative random images.
I created positive's list using the following command:
opencv_createsamples.exe -info info.txt -vec vector.vec -num 2000 -w 10 -h 10
Where the file info.txt contains the following lines:
AJ_Cook_0001.ppm 1 0 0 64 64
AJ_Lamas_0001.ppm 1 0 0 64 64
Aaron_Eckhart_0001.ppm 1 0 0 64 64
Aaron_Guiel_0001.ppm 1 0 0 64 64
Aaron_Patterson_0001.ppm 1 0 0 64 64
Aaron_Peirsol_0001.ppm 1 0 0 64 64
Afterwords, I ran haar_training using the following command:
opencv_haartraining.exe -data harrcascade -vec vector.vec -bg infofile.txt -nstages 20 -minhitrate 0.9999 -maxfalsealarm 0.5 -npos 2000 -nneg 3321 -w 10 -h 10 -nonsym -mem 1024
Where the file infofile.txt contains the names of the background images:
Bing_000527adc064a067a7f7986f00b140fe.jpg
Bing_002744f85b0bee37f489f43fad5f613f.jpg
Bing_0048e7e5e487203dedba9feb03696b1e.jpg
Bing_00513e8879f4f544717df2c8ea0494b1.jpg
Bing_00543a6cf117f559a05f0fb7e10bd361.jpg
Training took about only an two hours and no xml file was generated. The folder harrcascade contains 20 folder with a txt file named 'AdaBoostCARTHaarClassifier.txt' but no xml was generated.
I have two questions:
Why did training took so very little time?
Why no xml file was generated?
What am I missing here?
Thanks,
Gil.
See my answer to your other question. If no xml file was produced, it is very likely that you have run out of positive samples. Try using 1500 instead of 2000.
Better yet, check out trainCascadeObjectDetector, a function in the Computer Vision System Toolbox for Matlab, which lets you generate an xml file compatible with OpenCV.