I'm currently using OpenCV to try to detect objects on a black cloth covered table. The camera will not always be looking at the same direction (it's a robot's head) but only one image will be processed, so speed is not an imperative. I haved used
cv::findContours with the most adequate parameters I could find, before removing contours which have a too small area. This gets me close to the result I want but some contours which are not in the table area are obviously detected.
What would be a good way to filter those ?
I was thinking of three solutions (which could be combined for better results) :
- Cropping the image to just keep the table area, but I can't think of a good criteria (
- Removing contours which are not closed. This does not limit itself to convex contours (the orange dolphin on the right is not, for instance). Would checking the distance between the first
cv::Pointand the last
cv::Pointin the contour (which is a
vector<cv::Point>) work ?
- Studying a circle a few pixels outside of each contour and check the HSV channels to find out if all pixels of the circle are dark enough to be considered as part of the table.
If anyone has an efficient way to filter those contours, or just input and advice about one of the filtering methods above, it would be just great. Also the robot hand you can see on the bottom right will not be an issue because they will be out of the field of view during the real experiment.