CN102707278B - Multi-target tracking method for singular value decomposition - Google Patents

Multi-target tracking method for singular value decomposition Download PDF

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CN102707278B
CN102707278B CN201210044944.XA CN201210044944A CN102707278B CN 102707278 B CN102707278 B CN 102707278B CN 201210044944 A CN201210044944 A CN 201210044944A CN 102707278 B CN102707278 B CN 102707278B
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target
target tracking
singular value
value decomposition
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史忠科
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Northwestern Polytechnical University
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Abstract

The invention discloses a multi-target tracking method for singular value decomposition. The multi-target tracking method is used for solving the technical problem that the conventional target tracking method is unstable in numerical value structure so as to cause target tracking loss in the radar tracking process. The technical scheme is that an evaluated error covariance matrix is subjected to singular value decomposition, a numerical value stabilizing structural model is established, two positive semi-definite matrixes in a covariance matrix without error evaluation are subtracted, and a symmetric matrix containing a negative eigenvalue is not generated in a word length limited processing system. The evaluated error covariance matrix is subjected to singular value decomposition, so that a multi-target tracking structural model with stable numerical value is established, the two positive semi-definite matrixes in an evaluated error covariance matrix are prevented from being subtracted, and numerical divergence is avoided in the word length limited processing system; and therefore, the reliability of the target tracking system is guaranteed, the target tracking loss in the radar tracking process and the whole radar system error are avoided.

Description

The multi-object tracking method of svd
Technical field
The present invention relates to a kind of Radar Multi Target tracking, particularly a kind of multi-object tracking method of svd, belongs to areas of information technology.
Background technology
Multitarget Tracking is all widely used at military and civil area, can be used for aerial target and detects, follows the tracks of and attack, Air Missile defence, air traffic control, harbour and marine surveillance etc.In recent years, along with the change of battlefield surroundings, the development of antagonism and anti-countermeasure techniques, has produced the series of problems such as the strong clutter of background, low signal-to-noise ratio, low detection probability and high false alarm rate, and the precision of multi-object tracking method and accuracy are had higher requirement.
The object of multiple target tracking is by received information source corresponding to measurement of detector, forms different observation set or track, according to track, estimates the number of tracked target and the kinematic parameter of each target, realizes the tracking to a plurality of targets.For the basic filtering method of multiple goal state estimation have that alpha-beta filtering, alpha-beta-γ filtering, Kalman filtering, EKF, gaussian sum are approximate, optimal nonlinear filtering, particle filter and auto adapted filtering etc.Alpha-beta and alpha-beta-γ wave filter are due to simple in structure, and calculated amount is little, and when computer resource is short in early days, application is very wide.Kalman filtering is a kind of basic skills of multiple target tracking, but need to know the mathematical models of system, and is only applicable to linear system, has limited the application of algorithm.EKF expands to non-linear field by kalman filtering theory, is similar to the conditional probability distribution of state by a Gaussian distribution; And when approximate condition does not meet, Gaussian sum filter device is similar to the conditional probability distribution of state by the weighted sum of a Gaussian distribution.Optimal nonlinear filtering is described the dynamic process of target with Makov transition probability, have good characteristic, but calculated amount is larger, is therefore never used widely.Particle filter adopts stochastic sampling, because calculated amount is too large and particle degenerate problem, is not suitable for practical application.In order to improve particle filter, Unscented kalman filtering adopts deterministic sampling, and the particle point number of sampling is reduced, and avoided the particle point degenerate problem in particle filter, so its application is very wide.Adaptive filter method, by the detection to target maneuver, is adjusted the state of filter parameter or increase wave filter in real time, makes wave filter adapt in real time target travel, is particularly suitable for the tracking to maneuvering target; At present, actual radar tracking system the most frequently used be still JPDA(Joint Probabilistic Data Association, JPDA) method (James A.Roecker, A Class of Near Optimal JPDA Algorithms, IEEE TRANSACTIONS ON AEROSPACEAND ELECTRONIC SYSTEMS, 1994, VOL.30(2): 504-51O), other method great majority are to simplification of JPDA method etc.Yet, in the variance battle array that the method errors such as JPDA are estimated, there are two positive semidefinite matrixs to subtract each other, in the disposal system of limited wordlength, can produce the symmetric matrix that contains positive and negative eigenwert, cause radar tracking enabling objective to lose and follow and whole radar system mistake.
Summary of the invention
In order to solve the unstable technological deficiency that causes radar tracking enabling objective to lose and follow of existing method for tracking target value structure, the invention provides a kind of multi-object tracking method of svd, the method is in the time and measurement renewal of multiple target tracking, by the svd to estimation error variance battle array, set up numerical stability structural model, not having has two positive semidefinite matrixs to subtract each other in the variance battle array of estimation of error, in the disposal system of limited wordlength, can guarantee can not produce the symmetric matrix that contains negative eigenwert, can avoid radar tracking enabling objective to lose follows and whole radar system mistake.
The present invention solves the technical scheme that its technical matters adopts, a kind of multi-object tracking method of svd, and its feature comprises the following steps:
1, in N target following of definition, the discretization model of i target is
x i(k+1)=Φ(k+1,k)x i(k)+Λω i(k),
Wherein:
Figure GDA00001720766500021
for state vector, (x, y, z) is the position coordinates of target under ground reference rectangular coordinate system, ω i(k) represent that variance is Q i(k) process noise vector, Φ (k+1, k)=Φ=diag[Φ 1, Φ 1, Φ 1] be state-transition matrix, Λ = ∫ kT ( k + 1 ) T Φ ( k + 1 , τ ) Γ ( τ ) dτ = Λ 1 0 0 0 Λ 1 0 0 0 Λ 1 , Γ (t) is matrix of coefficients, Γ = Γ 1 0 0 0 Γ 1 0 0 0 Γ 1 , Γ 1=[0?0?1] T Φ 1 = 1 T 1 2 T 2 0 1 T 0 0 1 , Λ 1 = 1 6 T 3 1 2 T 2 T T , T is the sampling period;
The time of i target is updated to:
x i(k/k-1)=Φx i(k-1/k-1)
By calling singular value decomposition algorithm, obtain
V i ( k / k - 1 ) D i ( k / k - 1 ) V i T ( k / k - 1 ) = Y ( k / k - 1 ) Y T ( k / k - 1 )
Wherein: x i(k/k-1) be that i target is at kT one-step prediction value constantly, V (k/k-1) D (k/k-1) V t(k/k-1) be the variance battle array of corresponding one-step prediction error, Y ( k / k - 1 ) = Φ V i ( k - 1 / k - 1 ) D i 1 2 ( k - 1 / k - 1 ) Λ Q i 1 2 ( k - 1 ) , V i(k/k-1) be orthogonal matrix, D i(k/k-1) be diagonal matrix; Starting condition is x i(0/0) and
V i ( 0 / 0 ) D i ( 0 / 0 ) V i T ( 0 / 0 ) = P i ( 0 / 0 ) ;
2, i target observation equation is: z i(k)=g i[x i(k)]+v i(k)
Wherein: z i(k) be the r dimension observation vector to i target, g i[x i(k)] be corresponding output, v i(k) represent that variance is R i(k) measure noise, by calling singular value decomposition algorithm, obtain
V ‾ i ( k / k ) D ‾ i ( k / k ) V ‾ i T ( k / k ) = Y ‾ ( k / k ) Y ‾ T ( k / k )
G i ( k ) = V ‾ i ( k / k ) D ‾ i - 1 ( k / k ) V ‾ i T ( k / k ) R i - 1 ( k )
x i ( k / k ) = x i ( k / k - 1 ) + G i ( k ) { Σ j = 1 m λ ij ( k ) z ij ( k ) - g i [ x i ( k / k - 1 ) ] }
Wherein: Y ‾ ( k / k ) = V i T ( k / k - 1 ) D i - 1 2 ( k / k - 1 ) H i T ( k ) ,
Figure GDA00001720766500036
for orthogonal matrix,
Figure GDA00001720766500037
for diagonal matrix; z ij(k) be the j(j=1 of radar to i target, 2 ..., m) individual echo, x i(k/k) be i target kT filter value constantly, λ ij(k) be weight coefficient, and: Σ j = 1 m λ i , j ( k ) = 1 , H i ( k ) = ∂ g i [ x i ( k ) ] ∂ x i ( k ) | x i ( k ) = x i ( k / k - 1 ) ;
3, i tracking method of estimation is: by calling singular value decomposition algorithm, obtain
V i ( k / k ) D i ( k / k ) V i T ( k / k ) = A ( k ) A T ( k )
Wherein: A ( k ) = V ‾ i T ( k / k - 1 ) D ‾ i - 1 2 ( k / k - 1 ) G i ( k ) d T ( 1 - Ω uu T ) ,
Figure GDA000017207665000312
u = 1 1 · · · 1 , d = Δ i , 1 T ( k ) Δ i , 2 T ( k ) · · · Δ i , m T ( k ) ;
Δ i, j(k) be j candidate's echo information vector,
Δ i,j(k)=z i,j(k)-g i[x i(k/k-1)]。
Useful result of the present invention is: by estimation error variance battle array being carried out three times to svd, set up the multiple target tracking structural model of numerical stability, avoided two positive semidefinite matrixs in the variance battle array of estimation of error to subtract each other, in the disposal system of limited wordlength, there will not be numerical value to disperse, thereby guaranteed the reliability of multi-object tracking method, avoided radar tracking enabling objective to lose and followed and whole radar system mistake.
Below in conjunction with example, the present invention is elaborated.
Embodiment
1, in N target following of definition, the discretization model of i target is
x i(k+1)=Φ(k+1,k)x i(k)+Λω i(k),
Wherein:
Figure GDA00001720766500041
for state vector, (x, y, z) is the position coordinates of target under ground reference rectangular coordinate system, ω i(k) represent that variance is Q i(k) process noise vector, Φ (k+1, k)=Φ=diag[Φ 1, Φ 1, Φ 1] be state-transition matrix, Λ = ∫ kT ( k + 1 ) T Φ ( k + 1 , τ ) Γ ( τ ) dτ = Λ 1 0 0 0 Λ 1 0 0 0 Λ 1 , Γ (t) is matrix of coefficients, Γ = Γ 1 0 0 0 Γ 1 0 0 0 Γ 1 , Γ 1=[0?0?1] T Φ 1 = 1 T 1 2 T 2 0 1 T 0 0 1 , Λ 1 = 1 6 T 3 1 2 T 2 T T , T is the sampling period;
The time of i target is updated to:
x i(k/k-1)=Φx i(k-1/k-1)
By calling singular value decomposition algorithm, obtain
V i ( k / k - 1 ) D i ( k / k - 1 ) V i T ( k / k - 1 ) = Y ( k / k - 1 ) Y T ( k / k - 1 )
Wherein: x i(k/k-1) be that i target is at kT one-step prediction value constantly, V (k/k-1) D (k/k-1) V t(k/k-1) be the variance battle array of corresponding one-step prediction error, Y ( k / k - 1 ) = Φ V i ( k - 1 / k - 1 ) D i 1 2 ( k - 1 / k - 1 ) Λ Q i 1 2 ( k - 1 ) , V i(k/k-1) be orthogonal matrix, D i(k/k-1) be diagonal matrix; Starting condition is x i(0/0) and
V i ( 0 / 0 ) D i ( 0 / 0 ) V i T ( 0 / 0 ) = P i ( 0 / 0 ) ;
2, i target observation equation is: z i(k)=g i[x i(k)]+v i(k)
Wherein: z i(k) be the r dimension observation vector to i target, g i[x i(k)] be corresponding output, v i(k) represent that variance is R i(k) measure noise, by calling singular value decomposition algorithm, obtain
V ‾ i ( k / k ) D ‾ i ( k / k ) V ‾ i T ( k / k ) = Y ‾ ( k / k ) Y ‾ T ( k / k )
G i ( k ) = V ‾ i ( k / k ) D ‾ i - 1 ( k / k ) V ‾ i T ( k / k ) R i - 1 ( k )
x i ( k / k ) = x i ( k / k - 1 ) + G i ( k ) { Σ j = 1 m λ ij ( k ) z ij ( k ) - g i [ x i ( k / k - 1 ) ] }
Wherein: Y ‾ ( k / k ) = V i T ( k / k - 1 ) D i - 1 2 ( k / k - 1 ) H i T ( k ) ,
Figure GDA000017207665000413
for orthogonal matrix,
Figure GDA000017207665000414
for diagonal matrix; z ij(k) be the j(j=1 of radar to i target, 2 ..., m) individual echo, x i(k/k) be i target kT filter value constantly, λ ij(k) be weight coefficient, and:
Figure GDA00001720766500051
for example get g i[x i(k)]=[r i(k) α i(k) β i(k)] t, r ifor radar can be measured oblique distance, α ifor angular altitude, β iposition angle, and
r i = x i 2 + y i 2 + z i 2 α i = tan - 1 z i x i 2 + y i 2 β i = tan - 1 x i y i
H i ( k ) = ∂ g i [ x i ( k ) ] ∂ x i ( k ) | x i ( k ) = x i ( k / k - 1 )
= x i x i 2 + y i 2 + z i 2 0 0 y i x i 2 + y i 2 + z i 2 0 0 z i x i 2 + y i 2 + z i 2 0 0 - x i z i ( x i 2 + y i 2 + z i 2 ) x i 2 + y i 2 0 0 - y i z i ( x i 2 + y i 2 + z i 2 ) x i 2 + y i 2 0 0 x i 2 + y i 2 ( x i 2 + y i 2 + z i 2 ) 0 0 y i x i 2 + y i 2 0 0 - x i x i 2 + y i 2 0 0 0 0 0 x i ( k ) = x i ( k / k - 1 ) ;
3, i tracking method of estimation is: by calling singular value decomposition algorithm, obtain
V i ( k / k ) D i ( k / k ) V i T ( k / k ) = A ( k ) A T ( k )
Wherein: A ( k ) = V ‾ i T ( k / k - 1 ) D ‾ i - 1 2 ( k / k - 1 ) G i ( k ) d T ( 1 - Ω uu T ) ,
Figure GDA00001720766500057
u = 1 1 · · · 1 , d = Δ i , 1 T ( k ) Δ i , 2 T ( k ) · · · Δ i , m T ( k ) ;
Δ i, j(k) be j candidate's echo information vector, Δ i, j(k)=z i, j(k)-g i[x i(k/k-1)].

Claims (1)

1. a multi-object tracking method for svd, is characterized in that comprising the following steps:
(1), in N target following of definition, the discretization model of i target is
x i(k+1)=Φ(k+1,k)x i(k)+Λω i(k),
Wherein:
Figure FDA0000393586740000011
for state vector, (x, y, z) is the position coordinates of target under ground reference rectangular coordinate system, ω i(k) represent that variance is Q i(k) process noise vector, Φ (k+1, k)=Φ=diag[Φ 1, Φ 1, Φ 1] be state-transition matrix,
Figure FDA0000393586740000012
Γ is matrix of coefficients,
Figure FDA0000393586740000013
Figure FDA0000393586740000014
Figure FDA0000393586740000015
t is the sampling period;
The time of i target is updated to:
x i(k/k-1)=Φx i(k-1/k-1)
By calling singular value decomposition algorithm, obtain
V i(k/k-1)D i?(k/k-1)V i T(k/k-1)=Y(k/k-1)Y T(k/k-1)
Wherein: x i(k/k-1) be that i target is at kT one-step prediction value constantly, V (k/k-1) D (k/k-1) V t(k/k-1) be the variance battle array of corresponding one-step prediction error,
Figure FDA0000393586740000016
v i(k/k-1) be orthogonal matrix, D i(k/k-1) be diagonal matrix; Starting condition is x iand V (0/0) i(0/0) D i(0/0) V i t(0/0)=P i(0/0);
(2), i target observation equation is: z i(k)=g i[x i(k)]+v i(k)
Wherein: z i(k) be the r dimension observation vector to i target, g i[x i(k)] be corresponding output, v i(k) represent that variance is R i(k) measurement noise, obtains by calling singular value decomposition algorithm
Figure FDA0000393586740000017
Figure FDA0000393586740000021
Wherein:
Figure FDA0000393586740000022
Figure FDA0000393586740000023
for orthogonal matrix, for diagonal matrix; z i,j(k) be the j(j=1 of radar to i target, 2 ..., m) individual echo, x i(k/k) be i target kT filter value constantly, λ i,j(k) be weight coefficient, and:
Figure FDA0000393586740000025
Figure FDA0000393586740000026
(3), i target following method of estimation is: by calling singular value decomposition algorithm, obtain
V i(k/k)D i(k/k)V i T(k/k)=A(k)A T(k)
Wherein:
Figure FDA0000393586740000027
Figure FDA0000393586740000028
Figure FDA0000393586740000029
i,j(k) be j candidate's echo information vector,
i,j(k)=z i,j(k)-g i[x i(k/k-1)]。
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