Infrared and Laser Engineering, Volume. 33, Issue 2, 198(2004)

Multi-sensor fusion algorithm based on MTF

[in Chinese]* and [in Chinese]
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    References(6)

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    [3] [3] Bar-Shalom Y, Campo L. The effect of the common process noise on the two-sensor fused-track covariance[J]. IEEE Transactions on Aerospace and Electronic Systems, 1986, 22(6): 803-805.

    [4] [4] Chang K, Saha R, Bar-Shalom Y. On optimal track-to-track fusion[J]. IEEE Transactions on Aerospace and Electronic Systems ,1997, 33(4)I:1271-1275.

    [5] [5] Bar-Shalom Y. On the track-to-track correlation problem[J]. IEEE Trans on Automatic Control, 1981,26(2):571-572.

    [6] [6] Barbara F La Scala,Alfonso Farina. Choosing a track association method[J]. Information Fusion ,2002,2(2):119-121.

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    [in Chinese], [in Chinese]. Multi-sensor fusion algorithm based on MTF[J]. Infrared and Laser Engineering, 2004, 33(2): 198

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    Paper Information

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    Received: May. 8, 2003

    Accepted: Jun. 17, 2003

    Published Online: May. 25, 2006

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