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Data compression, data fusion and Kalman filtering in wavelet packet sub-bands of a multisensor tracking system

机译:多传感器跟踪系统小波包子带中的数据压缩,数据融合和卡尔曼滤波

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In a multisensor target tracking system in which centralised Kalman filtering is employed, the amount of data to be transmitted from the sensors to the central processor demands a huge communication cost. In addition, the amount of data received by the central processor further imposes an enormous computational load on the Kalman filter. The authors propose the use of wavelet packet decomposition on the observed data vectors so that the insignificant sub-band components may be suppressed transmitted resulting in the communication cost. Furthermore, optimum fusion is applied to the sub-band components before the data vectors are reconstructed. Two tracking schemes, tracking by reconstructed compressed data (TRCD) and tracking by compressed sub-band data (TSCD), are proposed. In TRCD, Kalman filtering is applied to the reconstructed data vector, whereas in TCSD, Kalman filtering is only applied to the components in the dominant sub-band of the decomposition. Simulation results show that, in terms of communications and/or computation economy, these two schemes offer attractive alternatives without over-sacrificing performance.
机译:在采用集中式卡尔曼滤波的多传感器目标跟踪系统中,要从传感器传输到中央处理器的数据量需要巨大的通信成本。另外,中央处理器接收的数据量进一步在卡尔曼滤波器上施加了巨大的计算负荷。作者提议在观察到的数据向量上使用小波包分解,以便可以抑制不重要的子带分量的传输,从而导致通信成本。此外,在重构数据矢量之前,将最佳融合应用于子带分量。提出了两种跟踪方案,分别是通过重构压缩数据(TRCD)进行跟踪和通过压缩子带数据(TSCD)进行跟踪。在TRCD中,将Kalman滤波应用于重构的数据矢量,而在TCSD中,Kalman滤波仅应用于分解的主子带中的分量。仿真结果表明,就通信和/或计算经济性而言,这两种方案在不牺牲性能的情况下提供了有吸引力的选择。

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