基于学习策略的传感器决策融合算法

Hu Xuehai, Wang Houjun, Ren Dairong
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引用次数: 0

摘要

在雷达和声纳系统的目标探测中,很难给出目标出现的先验概率和系统错误决策的代价。在一些实际应用中,目标出现的概率是不断变化的。现有的分布式系统决策融合算法难以解决未知和可变目标的决策融合问题。本文采用学习策略实时估计目标概率,实现自适应决策融合。分析表明,在检测未知和可变目标时,该算法可以根据检测对象自适应修改相关参数。检测性能随学习时间的增加有较好的收敛性,算法性能优于NP和贝叶斯算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensors' decision fusion algorithm based on the learning strategy
In the target detection of radar and sonar systems,it's difficult to give prior probability of the target's appearance and the cost of system's wrong decision. In some practical applications,the probability of target's appearance will continually change. It is difficult for the existing distributed system's decision fusion algorithm to solve the decision fusion problem of unknown and variable targets.In this paper learning strategies is used to estimate target probability in real-time and to achieve adaptive decision fusion.Analysis shows that,in the detection of unknown and variable targets, this algorithm can adaptively modify related parameters according to the detected objects.The detection performance has good convergence with the increase of study time and the algorithm performance is better than NP and Bayes algorithm.
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