Probabilistic Approach for Detection of High-Frequency Periodic Signals using an Event Camera
David El-Chai Ben-Ezra, Ron Arad, Ayelet Padowicz, Israel Tugendhaft

TL;DR
This paper introduces a novel event-driven algorithm for detecting high-frequency periodic signals with event cameras, addressing a key challenge in processing asynchronous visual data and linking it to a new theoretical probability problem.
Contribution
It presents a new algorithm for high-frequency signal detection using event cameras and explores related theoretical probability problems in asynchronous data processing.
Findings
Effective detection of high-frequency signals demonstrated
Links algorithm development to a new probability theory problem
Highlights potential for new mathematical research areas
Abstract
Being inspired by the biological eye, event camera is a novel asynchronous technology that pose 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 and being a main challenge in the research community, in order to utilize its special properties and potential. It turns out that this algorithm, that was developed in order to satisfy the new paradigm, is related to an untreated theoretical problem in probability: let , originated from an unknown…
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Taxonomy
TopicsNeural Networks and Applications
