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Design of Data Association Filter Using Neural Networks for Multi-Target Tracking

机译:基于神经网络的多目标跟踪数据关联过滤器设计

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In this paper, we have developed the MHDA scheme for data association. This scheme is important in providing a computationally feasible alternative to complete enumeration of JPDA which is intractable. We have proved that given an artificial measurement and track's configuration, MHDA scheme converges to a proper plot in a finite number of iterations. Also, a proper plot which is not the global solution can be corrected by re-initializing one or more times. In this light, even if the performance is enhanced by using the MHDA, we also note that the difficulty in tuning the parameters of the MHDA is critical aspect of this scheme. The difficulty can, however, be overcome by developing suitable automatic instruments that will iteratively verify convergence as the network parameters vary.
机译:在本文中,我们开发了用于数据关联的MHDA方案。该方案对于为难于处理的JPDA的完整枚举提供一个计算上可行的替代方案非常重要。我们已经证明,在进行人工测量和跟踪配置的情况下,MHDA方案可以在有限的迭代次数中收敛到适当的图。另外,可以通过重新初始化一次或多次来校正不是全局解的适当图。因此,即使通过使用MHDA来提高性能,我们也注意到调整MHDA参数的困难是该方案的关键方面。但是,可以通过开发合适的自动仪器克服困难,该自动仪器将随着网络参数的变化反复验证收敛性。

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