I'd like to build an AI that can play a game of tic-tac-toe. So first, I'm trying to use OpenCV to "see" the board. To build my classifier, I used the following commands:
opencv_createsamples -vec pos_out.vec -img board.png -w 48 -h 48 -bg neg.txt -num 50
opencv_traincascade -data training_data/ -vec pos_out.vec -numPos 50 -numNeg 7 -bg neg.txt -w 48 -h 48
I don't have many pictures laying around so the seven background (negative) photos are just desktop backgrounds. The positive picture is a screenshot of a game of tic-tac-toe, cropped so just the board is visible.
The code that uses the classifier just takes the classifier as an argument, and a picture it's supposed to be looking in for a game board:
#include <opencv2/opencv.hpp>
#include <iostream>
#include <stdio.h>
using namespace std;
using namespace cv;
void detectAndDisplay(Mat frame);
CascadeClassifier board_cascade;
int main(int argc, char **argv)
{
CvCapture* capture;
Mat frame;
if (!board_cascade.load(argv[1])) {
fprintf(stderr, "Error loading cascade file %s.", argv[1]);
return -1;
}
frame = imread(argv[2], 1);
for (int i=0; i<10; i++)
detectAndDisplay(frame);
waitKey(0);
return 0;
}
void detectAndDisplay(Mat frame)
{
int i;
vector<Rect> boards;
Mat frame_gray;
cvtColor(frame, frame_gray, CV_BGR2GRAY);
equalizeHist(frame_gray, frame_gray);
board_cascade.detectMultiScale(frame_gray, boards, 1.5, 8, 0, Size(500, 500));
for(i=0; i<boards.size(); i++) {
Point center(boards[i].x + boards[i].width/2, boards[i].y+boards[i].height/2);
ellipse(frame, center, Size(boards[i].width/2, boards[i].height/2), 0, 0, 360, Scalar(255, 0, 0), 2, 8, 0);
printf("Width: %d height: %d x: %d y: %d\n", boards[i].width, boards[i].height, boards[i].x, boards[i].y);;
}
if (i > 0) {
int startx = boards[0].x;
int starty = boards[0].y;
int width = boards[0].width;
int height = boards[0].height;
for (i=1; i<=6; i+=2) {
for (int j=1; j<=6; j+=2) {
Point center(startx + (width/6 * i), starty + (height/6 * j));
ellipse(frame, center, Size(30, 30), 0, 0, 360, Scalar(255, 0, 0), 2, 8, 0);
}
}
}
imshow("Board detection", frame);
}
This is board.png, which I use as my "positive" image. This is the result when the board in the image is the same size as the "positive" image, and this is the result when its not. As you can see, it does reasonably alright when the board is the same size, but not when its larger.
I've never "trained" a classifier before, so I was hoping to get some pointers on how to improve my results. Would adding more positive samples help? Or are there some parameters I should be modifying somewhere?
Thanks!