一种适用于非平稳输入序列的DFT NIST检验新方法

Yehonatan Avraham, M. Pinchas
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引用次数: 1

摘要

美国国家标准与技术研究所(NIST)的文件列出了用于估计信号随机性程度概率的15个测试。NIST文档中的第6个测试是适用于固定输入序列的离散傅立叶变换(DFT)测试。但是,对于输入序列不是平稳的情况,DFT测试提供了不准确的结果。针对这些情况,设计了NIST文档中的第7和第8个测试(非重叠模板匹配测试和重叠模板匹配测试)来对这些非平稳序列进行分类。但是,即使使用NIST文件中的第七和第八项测试,结果也并不总是准确的。因此,NIST测试不能给出非平稳输入序列情况的正确答案。在本文中,我们提供了一种新的算法或测试,它可以取代NIST测试6、7和8。提议的测试也适用于非平稳序列,并且提供比现有的非平稳序列测试(NIST测试编号6,7和8)更准确的结果。新提出的检验是基于Wigner函数和广义高斯分布(GGD)。此外,该算法还能对测试序列中循环截面的可疑位置进行报警和指示。这样,我们可以选择修复或去除循环截面的可疑位置(这部分不在本文的讨论范围之内),这样,修复后的序列或缩短后的序列(去除截面的原始序列)就会得到一个具有高概率随机度的序列。
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A New Approach for the DFT NIST Test Applicable for Non-Stationary Input Sequences
The National Institute of Standards and Technology (NIST) document is a list of fifteen tests for estimating the probability of signal randomness degree. Test number six in the NIST document is the Discrete Fourier Transform (DFT) test suitable for stationary incoming sequences. But, for cases where the input sequence is not stationary, the DFT test provides inaccurate results. For these cases, test number seven and eight (the Non-overlapping Template Matching Test and the Overlapping Template Matching Test) of the NIST document were designed to classify those non-stationary sequences. But, even with test number seven and eight of the NIST document, the results are not always accurate. Thus, the NIST test does not give a proper answer for the non-stationary input sequence case. In this paper, we offer a new algorithm or test, which may replace the NIST tests number six, seven and eight. The proposed test is applicable also for non-stationary sequences and supplies more accurate results than the existing tests (NIST tests number six, seven and eight), for non-stationary sequences. The new proposed test is based on the Wigner function and on the Generalized Gaussian Distribution (GGD). In addition, this new proposed algorithm alarms and indicates on suspicious places of cyclic sections in the tested sequence. Thus, it gives us the option to repair or to remove the suspicious places of cyclic sections (this part is beyond the scope of this paper), so that after that, the repaired or the shortened sequence (original sequence with removed sections) will result as a sequence with high probability of random degree.
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