约束信号:信息内容与检测的一般理论

M. Stecker
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引用次数: 0

摘要

本文提出了以概率约束为特征的信号的一般理论。与之前的工作(10)一样,理论发展使用拉格朗日乘子来实现约束,并使用最大熵原理来生成与约束一致的最可能概率分布函数。计算概率分布函数的方法与统计力学中计算配分函数的方法类似。研究了存在最大熵分布函数和熵的精确解析解的简单情况,并讨论了它们的意义。从理论和仿真两方面探讨了该技术在信号检测问题中的应用。结果表明,只要两种约束分布的均值不同,该方法就能很容易地对不同约束分布下的信号进行分类。对由形状不同但均值不同的约束分布控制的信号进行分类要困难得多。讨论了该问题的一些解决方法和方法的推广。
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Constrained Signals: A General Theory of Information Content and Detection
In this paper, a general theory of signals characterized by probabilistic constraints is developed. As in previous work (10), the theoretical development employs Lagrange multipliers to implement the constraints and the maximum en- tropy principle to generate the most likely probability distribution function consistent with the constraints. The method of computing the probability distribution functions is similar to that used in computing partition functions in statistical me- chanics. Simple cases in which exact analytic solutions for the maximum entropy distribution functions and entropy exist are studied and their implications discussed. The application of this technique to the problem of signal detection is ex- plored both theoretically and with simulations. It is demonstrated that the method can readily classify signals governed by different constraint distributions as long as the mean value of the constraints for the two distributions is different. Classi- fying signals governed by the constraint distributions that differ in shape but not in mean value is much more difficult. Some solutions to this problem and extensions of the method are discussed.
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