Improved Joint Probabilistic Data Association (JPDA) Filter Using Motion Feature for Multiple Maneuvering Targets in Uncertain Tracking Situations
Abstract
:1. Introduction
2. Uncertain Models and Fusion of Measurements and Observed Angles
2.1. Uncertain Models of Measurements and Observed Angles
2.2. Analyzing the Influence of Clutters on Measurements and Observed Angles
2.3. Uncertain Fusion of Measurements and Observed Angles
3. Fuzzy Recursive Least Squares Filter (FRLSF)
4. Improved Joint Probabilistic Data Association-Fuzzy Recursive Least Squares Filter (IJPDA-FRLSF)
4.1. Calculating the Generalized Joint Association Probability
4.2. The propsed IJPDA-FRLSF
- Step 1. Initialize state and filter covariance of target for using Equations (26) and (27), and start the recursive formulas at time .
- Step 2. Compute predicted innovation on measurement using Equation (18).
- Step 3. Compute innovation covariance using Equation (19).
- Step 4. Compute gain matrix using Equation (20).
- Step 5. Reconstruct the generalized joint association probability using Equation (34).
- Step 6. Compute the fuzzy fading factor using Equation (21).
- Step 7. Update the target state and filter covariance by FRLSF using Equations (35) and (36)
- Step 8. Repeat the steps 2–7 for the next iterations.
5. Experimental Results and Analysis
5.1. An Example of a Simulation Data Set: Two Crossing Targets
5.2. An Example of a Real Data Set: Three Crossing Targets
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Target I | Target II | ||
---|---|---|---|
Periods | Time | Periods | Time |
constant velocity (CV) | 14 s | constant velocity (CV) | 14 s |
constant turn (CT) | 1 s | constant turn (CT) | 1 s |
constant acceleration (CA) | 14 s | constant acceleration (CA) | 14 s |
constant turn (CT) | 1 s | constant turn (CT) | 1 s |
constant velocity (CV) | 5 s | constant velocity (CV) | 6 s |
Filter | CV | CT | CA | CT | CV |
---|---|---|---|---|---|
IJPDA-FRLSF | 21.5 | 22.0 | 22.1 | 22.5 | 22.0 |
IMM-JPDAF(II) | 14.8 | 13.3 | 32.0 | 37.3 | 37.0 |
IMM-JPDAF(IIIA) | 17.5 | 16.9 | 26.2 | 35.3 | 25.0 |
IMM-JPDAF(IIIB) | 22.7 | 23.5 | 35.3 | 47.2 | 38.5 |
Filter | CV | CT | CA | CT | CV |
---|---|---|---|---|---|
IJPDA-FRLSF | 22.1 | 21.9 | 22.1 | 22.6 | 21.8 |
IMM-JPDAF(II) | 15.0 | 15.0 | 30.9 | 36.8 | 37.2 |
IMM-JPDAF(IIIA) | 16.5 | 15.9 | 24.6 | 32.4 | 24.8 |
IMM-JPDAF(IIIB) | 23.7 | 23.4 | 36.0 | 46.5 | 38.1 |
Filter | CV | CT | CA | Total |
---|---|---|---|---|
IJPDA-FRLSF | mean | good | good | fair |
IMM-JPDAF(II) | good | mean | mean | mean |
IMM-JPDAF(IIIA) | fair | fair | fair | good |
IMM-JPDAF(IIIB) | poor | poor | poor | poor |
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Fan, E.; Xie, W.; Pei, J.; Hu, K.; Li, X.; Podpečan, V. Improved Joint Probabilistic Data Association (JPDA) Filter Using Motion Feature for Multiple Maneuvering Targets in Uncertain Tracking Situations. Information 2018, 9, 322. https://doi.org/10.3390/info9120322
Fan E, Xie W, Pei J, Hu K, Li X, Podpečan V. Improved Joint Probabilistic Data Association (JPDA) Filter Using Motion Feature for Multiple Maneuvering Targets in Uncertain Tracking Situations. Information. 2018; 9(12):322. https://doi.org/10.3390/info9120322
Chicago/Turabian StyleFan, En, Weixin Xie, Jihong Pei, Keli Hu, Xiaobin Li, and Vid Podpečan. 2018. "Improved Joint Probabilistic Data Association (JPDA) Filter Using Motion Feature for Multiple Maneuvering Targets in Uncertain Tracking Situations" Information 9, no. 12: 322. https://doi.org/10.3390/info9120322
APA StyleFan, E., Xie, W., Pei, J., Hu, K., Li, X., & Podpečan, V. (2018). Improved Joint Probabilistic Data Association (JPDA) Filter Using Motion Feature for Multiple Maneuvering Targets in Uncertain Tracking Situations. Information, 9(12), 322. https://doi.org/10.3390/info9120322