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Using OPencv Facerecognizer API, I got a problem delaying me. I trained a mass of images using LBPH model (graycolor, size = 90*90 ), then I serialized the object into xml file, using save() function :

virtual void save(FileStorage& fs) const = 0;

I got a serialized file, of size about 1.9 GB my problem is not here, it is when I use the load function to load that file, the process takes infinite time blocking all other services on my pc, and finishes with "killed" at console.

looking into load function of opencv I found the follwoing code:

void LBPH::load(const FileStorage& fs) {
    fs["radius"] >> _radius;
    fs["neighbors"] >> _neighbors;
    fs["grid_x"] >> _grid_x;
    fs["grid_y"] >> _grid_y;
    //read matrices
    readFileNodeList(fs["histograms"], _histograms);
    fs["labels"] >> _labels;
}

template<typename _Tp>
inline void readFileNodeList(const FileNode& fn, vector<_Tp>& result) {
    if (fn.type() == FileNode::SEQ) {
        for (FileNodeIterator it = fn.begin(); it != fn.end();) {
            _Tp item;
            it >> item;
            result.push_back(item);
        }
    }
}

it seems that it takes a long time in for loop. Does any one tried to accelerate this kind of code? or any suggestion could be helpful? Or even did any one think of splitting a big file into multiple files ??

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