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Applying Bayesian decision theory to peak detection of stochastic signals

机译:贝叶斯决策理论在随机信号峰值检测中的应用

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Peak detection is a general problem in a wide range of applications. In many advanced signal processing systems, peak detection is used as a pre-processing step, and hence its accuracy for validation of output is crucial. The problem of peak detection can be divided into two stages, peak detection and peak selection and validation. Peak detection can be used in finding peaks in signals and extracting them. The second stage is peak validation in which only those peaks that are representing a special feature or event in signal should be chosen. This paper investigates peak selection and validation problems. A novel peak selection algorithm based on Bayesian decision theory is proposed. It is implemented in Matlab and experimental results show that the proposed peak detection algorithm can detect and select peaks reliably.
机译:峰值检测是广泛应用中的普遍问题。在许多高级信号处理系统中,峰值检测被用作预处理步骤,因此其准确性对输出验证至关重要。峰检测的问题可分为两个阶段,即峰检测以及峰选择和验证。峰值检测可用于发现信号中的峰值并提取它们。第二阶段是峰验证,其中仅应选择代表信号中特殊特征或事件的那些峰。本文研究了峰选择和验证问题。提出了一种基于贝叶斯决策理论的峰值选择算法。在Matlab中实现,实验结果表明,所提出的峰值检测算法能够可靠地检测和选择峰值。

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