1 / 54

3D computer vision

3D computer vision. Tracking using Kalman filter (a summary). Aims. To obtain structure and camera motion from an image sequence Utilize inter-picture dynamic information for a sequence Such as constant speed, acceleration etc. Tracking methods. Aims Kalman filtering Condensation.

dora
Télécharger la présentation

3D computer vision

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. 3D computer vision Tracking using Kalman filter (a summary) Tracking V4a

  2. Aims • To obtain structure and camera motion from an image sequence • Utilize inter-picture dynamic information for a sequence • Such as constant speed, acceleration etc. Tracking V4a

  3. Tracking methods • Aims • Kalman filtering • Condensation Tracking V4a

  4. Part 1 General introduction to Kalman filter (KF) and Extended Kalman filters (EKF) Tracking V4a

  5. Kalman filter introduction • Based on • An Introduction to the Kalman FilterSourceTechnical Report: TR95-041 Year of Publication:1995 AuthorsGreg WelchGary BishopPublisher University of North Carolina at Chapel Hill Chapel Hill, NC, US (http://www.cs.unc.edu/~welch/media/pdf/kalman_intro.pdf) Tracking V4a

  6. The process : state= position, velocity, acceleration Tracking V4a

  7. Noise Tracking V4a

  8. %test_cov.m covariance n=100000; %sample %length x=randn(n,1); y=randn(n,1); var(x) std(x) mean(x) cov(x,y) -- result – Var= 1.0016 Std= 1.0008 Mean= 1.2479e-004 Cov(x,y)= 1.0016 -0.0042 -0.0042 1.0002 Example: Two normal distribution random data sets have small covariance(check) Tracking V4a

  9. From Matlab >help cov Consider A = [-1 1 2 ; -2 3 1 ; 4 0 3]. To obtain a vector of variances for each column of A: v = diag(cov(A))' v = 10.3333 2.3333 1.0000 Compare vector v with covariance matrix C: C = 10.3333 -4.1667 3.0000 -4.1667 2.3333 -1.5000 3.0000 -1.5000 1.0000 Ie. Cov([-1,-2,4]’)=10.333 Diagonals are variances of the columns Covariance of first and second column >> cov([-1 -2 4]',[1 3 0]')= 10.3333 -4.1667 -4.1667 2.3333 Also >> cov([1 3 0]',[2 1 3]') = 2.3333 -1.5000 -1.5000 1.0000 Covariance matrix Tracking V4a

  10. The Computation: Using the current information (a priori) to estimate the predicted future information (posteriori) • x is a state (e.g. position, velocity & acceleration, etc) • z is measurement (image position [u,v]T etc) • k is time step index Tracking V4a

  11. How good is the prediction? We judge it by looking at the error covariance: the smaller Pk the better. Tracking V4a

  12. How to make Pk small?Find optimal gain Kk to make Pk small Tracking V4a

  13. Error covariance Pk for update estimate Tracking V4a

  14. Kalman filter (KF) recursive functions Tracking V4a

  15. Kalman Filter (KF) Iteration flow Tracking V4a

  16. Extended Kalman filter EKF • Fro non linear problems Tracking V4a

  17. DefinitionsNote: measurement to state is non-linear • State transition Tracking V4a

  18. Extended Kalman filter iteration Tracking V4a

  19. EKF Iteration flow Tracking V4a

  20. Part IITwo-pass Kalman filter for structure and pose estimation Description Major reference [Yu, June 2005] Tracking V4a

  21. Two-pass Kalman filter for structure and pose estimation • Structure and pose updating Tracking V4a

  22. Model initializations • f=focal length (found by camera calibration) • Zinit=initial guess of z direction of the model points (e.g. Zinit=1 meter from the camera) Tracking V4a

  23. Add diagram Tracking V4a

  24. Kalman tracking Step 1: Kalman pose tracking Tracking V4a

  25. Kalman filtering pose trackingAssume model is known (by guessing) Tracking V4a

  26. Kalman pose filterStates • State transition Tracking V4a

  27. Kalman pose filter measurement • measurement Tracking V4a

  28. Kalman for pose estimationIMMKalmanPoseGen.m ‧ ‧ Tracking V4a

  29. State transition matrix A12x12 • Typical • A12x12 Tracking V4a

  30. State noise= Q12x12 , measurement noise=R12x12 • Typical Q, R, N=number of features Tracking V4a

  31. Motion and projection Tracking V4a

  32. Pose Jacobian Matrix ‧ Tracking V4a

  33. Yu-recursive Kalman [Yu, June 2005] algorithm Matlab for pose Jacobian matrices (full) • %************************************************************************ • function TestJacobian • % Try to solve the differentiate equations without simplification • clc,clear; • disp('TestJacobian'); • syms a b c; %yaw( around x axis), pitch(around y), roll(aroudn z) respectively • syms f X Y Z T1 T2 T3; • F = [ • %u • f*((cos(b)*cos(c)*X - cos(b)*sin(c)*Y + sin(b)*Z+ T1)... • /((-cos(a)*sin(b)*cos(c) + sin(a)*sin(c))*X ... • + (cos(a)*sin(b)*sin(c)+ sin(a)*cos(c))*Y + cos(a)*cos(b)*Z + T3)); • %v • ((sin(a)*sin(b)*cos(c)+ cos(a)*sin(c))*X ... • + (-sin(a)*sin(b)*sin(c)+ cos(a)*cos(c))*Y - sin(a)*sin(b)*Z + T2)... • /((-cos(a)*sin(b)*cos(c) + sin(a)*sin(c))*X + (cos(a)*sin(b)*sin(c)... • + sin(a)*cos(c))*Y + cos(a)*cos(b)*Z + T3)] • V = [a,b,c]; • Fjaco = jacobian(F,V); • disp('Fjaco ='); • disp(Fjaco); • size(Fjaco) • Fjaco(1,1) • %************************ Tracking V4a

  34. Yu-recursive Kalman [Yu, June 2005] algorithm Matlab for pose Jacobian matrices (approximation) • '=================test jacobian for chang,wong ieee_mm 2 pass lowe==================' • %use twist (small) angles approximation. • clear, clc; • syms R dR M TT XYZ ZZ x y z f u v a1 a2 a3 t1 t2 t3 aa1 aa2 aa3 tt1 tt2 tt3 • R=[1 -aa3 aa2; aa3 1 -aa1; -aa2 aa1 1]; • dR=[1 -a3 a2; a3 1 -a1; -a2 a1 1]; • M=[x;y;z]; • TT=[tt1;tt2;tt3]; • dt=[t1;t2;t3] • XYZ=dR*R*M+TT+dt; % R is a matrix multiplication transform • u=f*XYZ(1)/XYZ(3); • v=f*XYZ(2)/XYZ(3); • ja=jacobian([u ;v],[a1 a2 a3]) Tracking V4a

  35. Kalman tracking Step2: Kalman structure tracking Tracking V4a

  36. Kalman filtering structure trackingAssume pose is known Tracking V4a

  37. Kalman structure filterStates • Structure State transition Tracking V4a

  38. Kalman structure filter iteration Tracking V4a

  39. EKF Iteration flow Tracking V4a

  40. Yu-recursive Kalman [Yu, June 2005] algorithm Matlab for structure Jacobian matrices (full) • % Solve the problem without simplification • % Since is the yaw, pitch, roll of the rotation respectively. The R can be represent by as: • % • % Substitute R into (1), we have the following program (in matlab): • %************************************************************************ • function TestJacobian • % Try to solve the differentiate equations without simplification • clc,clear; • disp('TestJacobian'); • syms a b c; %yaw( around x axis), pitch(around y), roll(aroudn z) respectively • syms f X Y Z T1 T2 T3; • F = [ • %u • f*((cos(b)*cos(c)*X - cos(b)*sin(c)*Y + sin(b)*Z+ T1)... • /... • ((-cos(a)*sin(b)*cos(c) + sin(a)*sin(c))*X ... • + (cos(a)*sin(b)*sin(c)+ sin(a)*cos(c))*Y + cos(a)*cos(b)*Z + T3)); • %v • ((sin(a)*sin(b)*cos(c)+ cos(a)*sin(c))*X ... • + (-sin(a)*sin(b)*sin(c)+ cos(a)*cos(c))*Y - sin(a)*sin(b)*Z + T2)... • /... • ((-cos(a)*sin(b)*cos(c) + sin(a)*sin(c))*X + (cos(a)*sin(b)*sin(c)... • + sin(a)*cos(c))*Y + cos(a)*cos(b)*Z + T3)] • V = [X,Y,Z]; • Fjaco = jacobian(F,V); • %************************ Tracking V4a

  41. Structure Jacobian • function lpf = KalmanStructJacobSP(RT_solution, a, f, u, v, initz) • b = 1/f; • tx = RT_solution(1); • ty = RT_solution(2); • tzxb = RT_solution(3); • wx = RT_solution(4); • wy = RT_solution(5); • wz = RT_solution(6); • temp1 = 1 - b*sin(wy)*(u + a*b*u) + b*cos(wy)*sin(wx)*(v + a*b*v) + b*cos(wy)*cos(wx)*(a - initz) + tzxb; • lpf = zeros(2, 1); • lpf(1) = (cos(wz)*cos(wy)*b*u + (cos(wz)*sin(wy)*sin(wx) - sin(wz)*cos(wx))*b*v + cos(wz)*sin(wy)*cos(wx) + sin(wz)*sin(wx))/(temp1) - ... • (cos(wz)*cos(wy)*(u + a*b*u) + (cos(wz)*sin(wy)*sin(wx) - sin(wz)*cos(wx))*(v + a*b*v) + ... • (cos(wz)*sin(wy)*cos(wx) + sin(wz)*sin(wx))*(a - initz) + tx)*(((-b)^2)*sin(wy)*u + (b^2)*cos(wy)*sin(wx)*v + b*cos(wy)*cos(wx)) /(temp1^2); • lpf(2) = (sin(wz)*cos(wy)*b*u + (sin(wz)*sin(wy)*sin(wx) + cos(wz)*cos(wx))*b*v + sin(wz)*sin(wy)*cos(wx) - cos(wz)*sin(wx))/(temp1) - ... • (sin(wz)*cos(wy)*(u + a*b*u) + (sin(wz)*sin(wy)*sin(wx) + cos(wz)*cos(wx))*(v + a*b*v) + ... • (sin(wz)*sin(wy)*cos(wx) - cos(wz)*sin(wx))*(a - initz) + ty)*(((-b)^2)*sin(wy)*u + (b^2)*cos(wy)*sin(wx)*v + b*cos(wy)*cos(wx)) /(temp1^2); • return Tracking V4a

  42. Yu-recursive Kalman [Yu, June 2005] algorithm Matlab for structure Jacobian matrices (approximate)) • '====test jacobian for structure=================' • %use twist (small) angles approximation. • clear, clc; • syms R dR M TT XYZ ZZ x y z f u v a1 a2 a3 t1 t2 t3 aa1 aa2 aa3 tt1 tt2 tt3 • R=[1 -aa3 aa2; aa3 1 -aa1; -aa2 aa1 1]; • dR=[1 -a3 a2; a3 1 -a1; -a2 a1 1]; • M=[x;y;z]; • TT=[tt1;tt2;tt3]; • dt=[t1;t2;t3] • XYZ=dR*R*M+TT+dt; % R is a matrix multiplication transform • u=f*XYZ(1)/XYZ(3); • v=f*XYZ(2)/XYZ(3); • ja=jacobian([u ;v],[x y z]) Tracking V4a

  43. Part BInteracting Multiple Model Method (IMM) structure and pose estimation Major reference [Yu Aug.2005] Tracking V4a

  44. Example: Interacting Multiple Model Method (IMM) for (IMM-KSFM) • 3 dynamic models =3 parallel Kalman structures • General, Rotation, Translation • Use IMM to find the suitable dynamic model at time t • Each Kalman structure is similar to IV-KSFR • Reference • Ying Kin Yu, Kin Hong Wong and Michael Ming Yuen Chang, "Merging Artificial Objects with Marker-less Video Sequences Based on the Interacting Multiple Model Method", IEEE Transactions on Multimedia, Volume 8, Issue 3, June 2006 Page(s):521 - 528. Tracking V4a

  45. Steps Tracking V4a

  46. Pose Tracking V4a

  47. IMM switching Tracking V4a

  48. Part CUSE Trifocal tensor (TRI-KSFM) structure and pose estimation Major reference [Yu Feb.2005] Tracking V4a

  49. Example : USE Trifocal tensor (TRI-KSFM) • Always use first second (I1, I2) frames as reference • Use It as the third frame to form a trifocal tensor at time t • If only pose output required, use one Kalman filter • If structure is needed use N Kalman filters for N features, similar to IV-KSFM. • Reference • Ying Kin YU, Kin Hong Wong and Michael Ming Yuen Chang, "Recursive 3D Model Reconstruction Based on Kalman Filtering", IEEE Transactions on Systems, Man and Cybernetics B, Vol.35, No.3, June 2005. Tracking V4a

  50. TRI-KSFM flow diagram Tracking V4a

More Related