예제 #1
0
        public static void RotFromTo2Quat(Matrix x, Matrix y, Matrix q)
        {
            Matrix axis = new Matrix(3, 1);

            axis.Cross(y, x);
            axis.Normalize();

            double angle = Math.Acos(x.Dot(y));
            double s     = Math.Sin(angle / 2.0);

            q[0] = axis[0] * s;
            q[1] = axis[1] * s;
            q[2] = axis[2] * s;
            q[3] = Math.Cos(angle / 2.0);
        }
예제 #2
0
        // quaternion ops; quat is ((X, Y, Z), W)
        public static void QuatMult(Matrix a, Matrix b, Matrix c)
        {
            Matrix v1 = new Matrix(3, 1);
            Matrix v2 = new Matrix(3, 1);
            Matrix v3 = new Matrix(3, 1);

            v1[0] = a[0];
            v1[1] = a[1];
            v1[2] = a[2];
            double s1 = a[3];

            v2[0] = b[0];
            v2[1] = b[1];
            v2[2] = b[2];
            double s2 = b[3];

            v3.Cross(v1, v2);

            c[0] = s1 * v2[0] + s2 * v1[0] + v3[0];
            c[1] = s1 * v2[1] + s2 * v1[1] + v3[1];
            c[2] = s1 * v2[2] + s2 * v1[2] + v3[2];
            c[3] = s1 * s2 - v1.Dot(v2);
        }
        public double MinimizeOneStep(Matrix parameters)
        {
            // initial value of the function; callee knows the size of the returned vector
            var errorVector = function(parameters);
            var error = errorVector.Dot(errorVector);

            // Jacobian; callee knows the size of the returned matrix
            var J = jacobianFunction(parameters);

            // J'*J
            var JtJ = new Matrix(parameters.Size, parameters.Size);
            //stopWatch.Restart();
            //JtJ.MultATA(J, J); // this is the big calculation that could be parallelized
            JtJ.MultATAParallel(J, J);
            //Console.WriteLine("JtJ: J size {0}x{1} {2}ms", J.Rows, J.Cols, stopWatch.ElapsedMilliseconds);

            // J'*error
            var JtError = new Matrix(parameters.Size, 1);
            //stopWatch.Restart();
            JtError.MultATA(J, errorVector); // error vector must be a column vector
            //Console.WriteLine("JtError: errorVector size {0}x{1} {2}ms", errorVector.Rows, errorVector.Cols, stopWatch.ElapsedMilliseconds);



            // allocate some space
            var JtJaugmented = new Matrix(parameters.Size, parameters.Size);
            var JtJinv = new Matrix(parameters.Size, parameters.Size);
            var delta = new Matrix(parameters.Size, 1);
            var newParameters = new Matrix(parameters.Size, 1);

            // find a value of lambda that reduces error
            double lambda = initialLambda;
            while (true)
            {
                // augment J'*J: J'*J += lambda*(diag(J))
                JtJaugmented.Copy(JtJ);
                for (int i = 0; i < parameters.Size; i++)
                    JtJaugmented[i, i] = (1.0 + lambda) * JtJ[i, i];

                //WriteMatrixToFile(errorVector, "errorVector");
                //WriteMatrixToFile(J, "J");
                //WriteMatrixToFile(JtJaugmented, "JtJaugmented");
                //WriteMatrixToFile(JtError, "JtError");


                // solve for delta: (J'*J + lambda*(diag(J)))*delta = J'*error
                JtJinv.Inverse(JtJaugmented);
                delta.Mult(JtJinv, JtError);

                // new parameters = parameters - delta [why not add?]
                newParameters.Sub(parameters, delta);

                // evaluate function, compute error
                var newErrorVector = function(newParameters);
                double newError = newErrorVector.Dot(newErrorVector);

                // if error is reduced, divide lambda by 10
                bool improvement;
                if (newError < error)
                {
                    lambda /= lambdaIncrement;
                    improvement = true;
                }
                else // if not, multiply lambda by 10
                {
                    lambda *= lambdaIncrement;
                    improvement = false;
                }

                // termination criteria:
                // reduction in error is too small
                var diff = new Matrix(errorVector.Size, 1);
                diff.Sub(errorVector, newErrorVector);
                double diffSq = diff.Dot(diff);
                double errorDelta = Math.Sqrt(diffSq / error);

                if (errorDelta < minimumReduction)
                    state = States.ReductionStepTooSmall;

                // lambda is too big
                if (lambda > maximumLambda)
                    state = States.LambdaTooLarge;

                // change in parameters is too small [not implemented]

                // if we made an improvement, accept the new parameters
                if (improvement)
                {
                    parameters.Copy(newParameters);
                    error = newError;
                    break;
                }

                // if we meet termination criteria, break
                if (state != States.Running)
                    break;
            }

            rmsError = Math.Sqrt(error / errorVector.Size);
            return rmsError;
        }
        public static double PlaneFit(IList<Matrix> points, out Matrix X, out double D)
        {
            X = new Matrix(3, 1);

            var mu = new RoomAliveToolkit.Matrix(3, 1);
            for (int i = 0; i < points.Count; i++)
                mu.Add(points[i]);
            mu.Scale(1f / (float)points.Count);

            var A = new RoomAliveToolkit.Matrix(3, 3);
            var pc = new RoomAliveToolkit.Matrix(3, 1);
            var M = new RoomAliveToolkit.Matrix(3, 3);
            for (int i = 0; i < points.Count; i++)
            {
                var p = points[i];
                pc.Sub(p, mu);
                M.Outer(pc, pc);
                A.Add(M);
            }

            var V = new RoomAliveToolkit.Matrix(3, 3);
            var d = new RoomAliveToolkit.Matrix(3, 1);
            A.Eig(V, d); // TODO: replace with 3x3 version?

            //Console.WriteLine("------");
            //Console.WriteLine(A);
            //Console.WriteLine(V);
            //Console.WriteLine(d);

            double minEigenvalue = Double.MaxValue;
            int minEigenvaluei = 0;
            for (int i = 0; i < 3; i++)
                if (d[i] < minEigenvalue)
                {
                    minEigenvalue = d[i];
                    minEigenvaluei = i;
                }

            X.CopyCol(V, minEigenvaluei);

            D = -X.Dot(mu);

            // min eigenvalue is the sum of squared distances to the plane
            // signed distance is: double distance = X.Dot(point) + D;

            return minEigenvalue;
        }
예제 #5
0
		// quaternion ops; quat is ((X, Y, Z), W)
		public static void QuatMult(Matrix a, Matrix b, Matrix c)		
		{
			Matrix v1 = new Matrix(3,1);
			Matrix v2 = new Matrix(3,1);
			Matrix v3 = new Matrix(3,1);

			v1[0] = a[0];
			v1[1] = a[1];
			v1[2] = a[2];
			double s1 = a[3];

			v2[0] = b[0];
			v2[1] = b[1];
			v2[2] = b[2];
			double s2 = b[3];

			v3.Cross(v1, v2);

			c[0] = s1*v2[0] + s2*v1[0] + v3[0];
			c[1] = s1*v2[1] + s2*v1[1] + v3[1];
			c[2] = s1*v2[2] + s2*v1[2] + v3[2];
			c[3] = s1*s2 - v1.Dot(v2);
		}
예제 #6
0
		public static void RotFromTo2Quat(Matrix x, Matrix y, Matrix q)		
		{
			Matrix axis = new Matrix(3,1);
			axis.Cross(y, x);
			axis.Normalize();

			double angle = Math.Acos(x.Dot(y));
			double s = Math.Sin(angle/2.0);
		
			q[0] = axis[0]*s;
			q[1] = axis[1]*s;
			q[2] = axis[2]*s;
			q[3] = Math.Cos(angle/2.0);
		}
예제 #7
0
        public double MinimizeOneStep(Matrix parameters)
        {
            // initial value of the function; callee knows the size of the returned vector
            var errorVector = function(parameters);
            var error       = errorVector.Dot(errorVector);

            // Jacobian; callee knows the size of the returned matrix
            var J = jacobianFunction(parameters);

            // J'*J
            var JtJ = new Matrix(parameters.Size, parameters.Size);

            //stopWatch.Restart();
            //JtJ.MultATA(J, J); // this is the big calculation that could be parallelized
            JtJ.MultATAParallel(J, J);
            //Console.WriteLine("JtJ: J size {0}x{1} {2}ms", J.Rows, J.Cols, stopWatch.ElapsedMilliseconds);

            // J'*error
            var JtError = new Matrix(parameters.Size, 1);

            //stopWatch.Restart();
            JtError.MultATA(J, errorVector); // error vector must be a column vector
            //Console.WriteLine("JtError: errorVector size {0}x{1} {2}ms", errorVector.Rows, errorVector.Cols, stopWatch.ElapsedMilliseconds);



            // allocate some space
            var JtJaugmented  = new Matrix(parameters.Size, parameters.Size);
            var JtJinv        = new Matrix(parameters.Size, parameters.Size);
            var delta         = new Matrix(parameters.Size, 1);
            var newParameters = new Matrix(parameters.Size, 1);

            // find a value of lambda that reduces error
            double lambda = initialLambda;

            while (true)
            {
                // augment J'*J: J'*J += lambda*(diag(J))
                JtJaugmented.Copy(JtJ);
                for (int i = 0; i < parameters.Size; i++)
                {
                    JtJaugmented[i, i] = (1.0 + lambda) * JtJ[i, i];
                }

                //WriteMatrixToFile(errorVector, "errorVector");
                //WriteMatrixToFile(J, "J");
                //WriteMatrixToFile(JtJaugmented, "JtJaugmented");
                //WriteMatrixToFile(JtError, "JtError");


                // solve for delta: (J'*J + lambda*(diag(J)))*delta = J'*error
                JtJinv.Inverse(JtJaugmented);
                delta.Mult(JtJinv, JtError);

                // new parameters = parameters - delta [why not add?]
                newParameters.Sub(parameters, delta);

                // evaluate function, compute error
                var    newErrorVector = function(newParameters);
                double newError       = newErrorVector.Dot(newErrorVector);

                // if error is reduced, divide lambda by 10
                bool improvement;
                if (newError < error)
                {
                    lambda     /= lambdaIncrement;
                    improvement = true;
                }
                else // if not, multiply lambda by 10
                {
                    lambda     *= lambdaIncrement;
                    improvement = false;
                }

                // termination criteria:
                // reduction in error is too small
                var diff = new Matrix(errorVector.Size, 1);
                diff.Sub(errorVector, newErrorVector);
                double diffSq     = diff.Dot(diff);
                double errorDelta = Math.Sqrt(diffSq / error);

                if (errorDelta < minimumReduction)
                {
                    state = States.ReductionStepTooSmall;
                }

                // lambda is too big
                if (lambda > maximumLambda)
                {
                    state = States.LambdaTooLarge;
                }

                // change in parameters is too small [not implemented]

                // if we made an improvement, accept the new parameters
                if (improvement)
                {
                    parameters.Copy(newParameters);
                    error = newError;
                    break;
                }

                // if we meet termination criteria, break
                if (state != States.Running)
                {
                    break;
                }
            }

            rmsError = Math.Sqrt(error / errorVector.Size);
            return(rmsError);
        }