I am using C++ and OpenCV with combination of ROS. I use live images from my camera (intel realsense R200). I get depth and RGB images from my camera. In my c++ code I want to use these images to get odometry data and make a trajectory out of it.
I am trying to use the "cv::rgbd::Odometry::compute" function for odometry, but I always get false as return value ("isSuccess" value in the code is always 0). But I dont know which part I am doing wrong.
I read my images from camera using ROS and then in the Callback function, first I convert all images to grayscale and then I use Surf function for detecting the features. Then I want to use "compute" to get the transformation between current and previous frame.
As far as I understood "Rt" and "inintRt" are the output of function so it is enough to cunstruct them with correct size.
Can anyone see the problem? Am I missing anything?
boost::shared_ptr<rgbd::Odometry> odom;
Mat Rt = Mat(4,4, CV_64FC1);
Mat initRt = Mat(4,4, CV_64FC1);
Mat prevFtrM; //mask Matrix of previous image
Mat currFtrM; //mask Matrix of current image
Mat tempFtrM;
Mat imgprev;// previous depth image
Mat imgcurr;// current depth image
Mat imgprevC;// previous colored image
Mat imgcurrC;// current colored image
void Surf(Mat img) // detect features of the img and fill currFtrM
{
int minHessian = 400;
Ptr<SURF> detector = SURF::create( minHessian );
vector<KeyPoint> keypoints_1;
currFtrM = Mat::zeros(img.size(), CV_8U); // type of mask is CV_8U
Mat roi(currFtrM, cv::Rect(0,0,img.size().width,img.size().height));
roi = Scalar(255, 255, 255);
detector->detect( img, keypoints_1, currFtrM );
Mat img_keypoints_1;
drawKeypoints( img, keypoints_1, img_keypoints_1, Scalar::all(-1), DrawMatchesFlags::DEFAULT );
//-- Show detected (drawn) keypoints
imshow("Keypoints 1", img_keypoints_1 );
}
void Callback(const sensor_msgs::ImageConstPtr& clr, const sensor_msgs::ImageConstPtr& dpt)
{
if(!imgcurr.data || !imgcurrC.data) // first frame
{
// depth image
imgcurr = cv_bridge::toCvShare(dpt, sensor_msgs::image_encodings::TYPE_32FC1)->image;
// colored image
imgcurrC = cv_bridge::toCvShare(clr, "bgr8")->image;
cvtColor(imgcurrC, imgcurrC, COLOR_BGR2GRAY);
//find features in the image
Surf(imgcurrC);
prevFtrM = currFtrM;
//scale color image to size of depth image
resize(imgcurrC,imgcurrC, imgcurr.size());
return;
}
odom = boost::make_shared<rgbd::RgbdOdometry>(imgcurrC, Odometry::DEFAULT_MIN_DEPTH(), Odometry::DEFAULT_MAX_DEPTH(), Odometry::DEFAULT_MAX_DEPTH_DIFF(), std::vector< int >(), std::vector< float >(), Odometry::DEFAULT_MAX_POINTS_PART(), Odometry::RIGID_BODY_MOTION);
// depth image
imgprev = imgcurr;
imgcurr = cv_bridge::toCvShare(dpt, sensor_msgs::image_encodings::TYPE_32FC1)->image;
// colored image
imgprevC = imgcurrC;
imgcurrC = cv_bridge::toCvShare(clr, "bgr8")->image;
cvtColor(imgcurrC, imgcurrC, COLOR_BGR2GRAY);
//scale color image to size of depth image
resize(imgcurrC,imgcurrC, imgcurr.size());
cv::imshow("Color resized", imgcurrC);
tempFtrM = currFtrM;
//detect new features in imgcurrC and save in a vector<Point2f>
Surf( imgcurrC);
prevFtrM = tempFtrM;
//set camera matrix to identity matrix
float vals[] = {619.137635, 0., 304.793791, 0., 625.407449, 223.984030, 0., 0., 1.};
const Mat cameraMatrix = Mat(3, 3, CV_32FC1, vals);
odom->setCameraMatrix(cameraMatrix);
bool isSuccess = odom->compute( imgprevC, imgprev, prevFtrM, imgcurrC, imgcurr, currFtrM, Rt, initRt );
if(isSuccess)
cout << "isSuccess " << isSuccess << endl;
}
Update: I calibrated my camera and replaced the camera matrix with real values.