Generation and Analysis of Constrained Random Sampling Patterns

Jacek Pierzchlewski, Thomas Arildsen

Research output: Contribution to journalJournal articleResearchpeer-review

1 Citation (Scopus)

Abstract

Random sampling is a technique for signal acquisition which is gaining popularity in practical signal processing systems. Nowadays, event-driven analog-to-digital converters make random sampling feasible in practical applications. A process of random sampling is defined by a sampling pattern, which indicates signal sampling points in time. Practical random sampling patterns are constrained by ADC characteristics and application requirements. In this paper, we introduce statistical methods which evaluate random sampling pattern generators with emphasis on practical applications. Furthermore, we propose a new random pattern generator which copes with strict practical limitations imposed on patterns, with possibly minimal loss in randomness of sampling. The proposed generator is compared with existing sampling pattern generators using the introduced statistical methods. It is shown that the proposed algorithm generates random sampling patterns dedicated for event-driven-ADCs better than existed sampling pattern generators. Finally, implementation issues of random sampling patterns are discussed.
Original languageEnglish
JournalCircuits, Systems and Signal Processing
Volume35
Issue number10
Pages (from-to)3619–3643
Number of pages25
ISSN0278-081X
DOIs
Publication statusPublished - 2016

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Random Sampling
Sampling
Generator
Event-driven
Statistical method
Statistical methods
Analog-to-digital Converter
Signal sampling
Randomness
Signal Processing
Digital to analog conversion
Signal processing
Evaluate
Requirements

Cite this

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title = "Generation and Analysis of Constrained Random Sampling Patterns",
abstract = "Random sampling is a technique for signal acquisition which is gaining popularity in practical signal processing systems. Nowadays, event-driven analog-to-digital converters make random sampling feasible in practical applications. A process of random sampling is defined by a sampling pattern, which indicates signal sampling points in time. Practical random sampling patterns are constrained by ADC characteristics and application requirements. In this paper, we introduce statistical methods which evaluate random sampling pattern generators with emphasis on practical applications. Furthermore, we propose a new random pattern generator which copes with strict practical limitations imposed on patterns, with possibly minimal loss in randomness of sampling. The proposed generator is compared with existing sampling pattern generators using the introduced statistical methods. It is shown that the proposed algorithm generates random sampling patterns dedicated for event-driven-ADCs better than existed sampling pattern generators. Finally, implementation issues of random sampling patterns are discussed.",
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Generation and Analysis of Constrained Random Sampling Patterns. / Pierzchlewski, Jacek; Arildsen, Thomas.

In: Circuits, Systems and Signal Processing, Vol. 35, No. 10, 2016, p. 3619–3643.

Research output: Contribution to journalJournal articleResearchpeer-review

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AU - Arildsen, Thomas

PY - 2016

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