I know this has been asked to death, but I have followed every link and solution to no avail. Im training a cascade with 10 original postive images and creating 200 samples from each one. I have 544 negatives. According to this: How to train cascade properly, it should work, but mine fails before starting first stage. I've tried increasing/reducing original samples and how many new samples are made but it doesnt make a difference.
PARAMETERS:
cascadeDirName: classifier
vecFileName: samples.vec
bgFileName: negatives.txt
numPos: 1800
numNeg: 544
numStages: 13
precalcValBufSize[Mb] : 2048
precalcIdxBufSize[Mb] : 2048
stageType: BOOST
featureType: HAAR
sampleWidth: 24
sampleHeight: 34
boostType: GAB
minHitRate: 0.999
maxFalseAlarmRate: 0.5
weightTrimRate: 0.95
maxDepth: 1
maxWeakCount: 100
mode: ALL
===== TRAINING 0-stage =====
<BEGIN
POS OpenCV Error: Bad argument (Can not get new positive sample. The most possible reason is insufficient count of samples in given vec-file.
My confusion is compounded by the huge amount of conflict about this topic, for example this post http://abhishek4273.com/2014/03/16/traincascade-and-car-detection-using-opencv/ states that there should be more negative than positive, whereas the first link says the opposite.