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Problem characterization in tracking/fusion algorithm evaluation

机译:跟踪/融合算法评估中的问题表征

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The performance of a tracking/fusion algorithm depends very much on the complexity of the problem. This paper presents an approach for evaluating tracking/fusion algorithms that consider the difficulty of the problem. Evaluation is performed by characterizing the performance of the basic functions of prediction and association. The problem complexity is summarized by means of context metrics. Two context metrics for characterizing prediction and association difficulty are normalized target mobility and normalized target density. These metrics should be presented along with the performance metrics. The context metrics also support more efficient generation of input data for performance evaluation. Simple tests for evaluating basic tracking algorithm functions are presented
机译:跟踪/融合算法的性能在很大程度上取决于问题的复杂性。本文提出了一种评估跟踪/融合算法的方法,该方法考虑了问题的难度。通过表征预测和关联的基本功能的性能来执行评估。通过上下文度量总结问题的复杂性。表征预测和关联难度的两个上下文度量是标准化目标迁移率和标准化目标密度。这些指标应与性能指标一起提出。上下文度量标准还支持更高效地生成用于性能评估的输入数据。提出了用于评估基本跟踪算法功能的简单测试

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