JOURNAL ARTICLE

Probabilistic Approach for Detection of High-Frequency Periodic Signals Using an Event Camera.

  • Published In: New Mathematics & Natural Computation, 2026, v. 22, n. 1. P. 99 1 of 3

  • Database: Academic Search Ultimate 2 of 3

  • Authored By: Ben-Ezra, David El-Chai; Arad, Ron; Padowicz, Ayelet; Tugendhaft, Israel 3 of 3

Abstract

Being inspired by the biological eye, event camera is a novel asynchronous technology that poses a paradigm shift in acquisition of visual information. This paradigm enables event cameras to capture pixel-size fast motions much more naturally compared to classical cameras. In this paper, we present a new asynchronous event-driven algorithm for detection of high-frequency pixel-size periodic signals using an event camera. Development of such new algorithms to efficiently process the asynchronous information of event cameras is essential to utilize its special properties and potential, and being a main challenge in the research community. It turns out that this algorithm, which was developed in order to satisfy the new paradigm, is related to an untreated theoretical problem in probability: Let 0 ≤ τ 1 ≤ τ 2 ≤ ⋯ ≤ τ m ≤ 1 originated from an unknown distribution. Let also , δ ∈ ℝ , and d ∈ ℕ. What can be said about the probability Φ (m , d) of having more than d adjacent τ i -s pairs that the distance between them is δ , up to an error ? This problem, which reminds the area of order statistic, shows how the new visualization paradigm is also an opportunity to develop new areas and problems in mathematics. [ABSTRACT FROM AUTHOR]

Additional Information

  • Source:New Mathematics & Natural Computation. 2026/03, Vol. 22, Issue 1, p99
  • Document Type:Article
  • Subject Area:Science
  • Publication Date:2026
  • ISSN:1793-0057
  • DOI:10.1142/S1793005726500067
  • Accession Number:189089834
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