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Adaptive statistical inferential methods for detection and classification in sensor systems

机译:用于传感器系统检测和分类的自适应统计推论方法

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In this paper, we investigate the multiple hypothesis problems of target detection and tracking in sensor systems. In many practical situations, the observational data may be expensive to acquire and the speed of decision can be affected by unnecessary amount of observational data. Motivated by the importance of accuracy and efficiency of sensor systems, we propose novel adaptive statistical inferential methods to reduce the amount of required observational data while achieving acceptable level of accuracy. Toward this goal, we propose adaptive methods in the general framework of testing multiple hypotheses for the detection and classification problems. The feasibility and optimality of the methods have been established
机译:在本文中,我们研究了传感器系统中目标检测和跟踪的多个假设问题。在许多实际情况下,观测数据的获取成本可能很高,并且决策速度可能会受到不必要数量的观测数据的影响。出于对传感器系统准确性和效率的重要性的考虑,我们提出了新颖的自适应统计推论方法,以减少所需观测数据的数量,同时达到可接受的准确性水平。为了实现这一目标,我们在测试多个假设的总体框架中提出了针对检测和分类问题的自适应方法。确定了方法的可行性和最优性

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