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Multiple-Frame Best-Hypothesis Target Tracking with Multiple Sensors

机译:具有多个传感器的多帧最佳假设目标跟踪

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The concept of selecting the best hypothesis in the minimum mean square error (MMSE) sense was introduced in 1999 to provide alternative data association algorithms for data association with hard decisions using data from one or more sensors. The motivations for using the estimate based on the best hypothesis in the MMSE sense are two-fold. First, there are situations where there is a natural preference to make hard decisions rather than soft decisions. Secondly, given that a state estimate is based on a single hypothesis as in a typical hard decision, there is the desire to minimize the mean square of the estimation error, since that is a common metric in evaluating performance. For example, for estimation that involves data association, the traditional MMSE criterion leads to so called soft decisions that may not be appropriate for an interceptor with a small region of lethality while, in contrast, hard decisions might increase the probability of a successful engagement. In addition, in processing features for use in target typing, classification, or discrimination, soft decisions may degrade performance more than would a reasonable hard decision. While the best hypothesis method may be preferred for certain applications, the improved performance might be at the expense of increased processing load. Since the capability of available processors is increasing rapidly, emphasis can be expected to lean toward algorithms that take advantage of this enhanced capability to provide improved performance based on the specific needs of a target tracking application. The emphasis of this paper is on the use of data from multiple sensors in multiple-frame methods for data association, such as in multiple hypothesis tracking, using as the criteria the best hypothesis in the MMSE sense rather than the most probable hypothesis or the traditional MMSE that leads to soft decisions.
机译:在1999年引入了在最小均方误差(MMSE)意义上选择最佳假设的概念,为使用来自一个或多个传感器的数据与硬决策的数据关联提供替代数据关联算法。基于MMSE意义上的最佳假设使用估计的动机是双重的。首先,在某些情况下,天生倾向于做出硬性决定而不是软性决定。其次,由于状态估计是基于典型假设中的单个假设,因此希望将估计误差的均方根最小化,因为这是评估性能的常用指标。例如,对于涉及数据关联的估计,传统的MMSE标准会导致所谓的软决策,这种软决策可能不适合具有致命小区域的拦截器,相反,硬决策可能会增加成功交战的可能性。另外,在处理用于目标类型,分类或区分的功能时,软决策可能比合理的硬决策更能降低性能。虽然最好的假设方法对于某些应用可能是首选,但提高的性能可能是以增加处理负载为代价的。由于可用处理器的能力在迅速增加,因此可以期望重点转向利用这种增强功能的算法,以基于目标跟踪应用程序的特定需求提供改进的性能。本文的重点是在多框架方法中使用多个传感器的数据进行数据关联,例如在多假设跟踪中,以MMSE意义上的最佳假设而不是最可能的假设或传统作为标准MMSE导致软决策。

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