Automatic detection of equipment alarms in a neonatal intensive care unit environment: a knowledge-based approach

Ganna Raboshchuk, Peter Jancovic, Climent Nadeu, A.P. Lilja, M Kokuer, B.M. Mahamud, A.R. Veciana

Research output: Contribution to conference (unpublished)Paperpeer-review

Abstract

Alarm sounds triggered by biomedical equipment play a key role in providing healthcare in a neonatal intensive care unit (NICU). This paper presents our work on automatic detection of acoustic alarms in a noisy NICU environment, where knowledge about the particular characteristics of each alarm class is integrated at different stages of the detection system. The feature extraction is based on applying, around alarm-specific frequencies, a method for detection of sinusoidal signals, which employs the normalised short-term magnitude and phase spectrum. Also, the ratios of magnitudes at those frequencies are taken as features. The system consists of a set of GMM-based detectors, each designed to deal with a specific alarm. Temporal structure of alarms, in terms of duration of signal and silence intervals in every alarm period, is incorporated by aggregating the frame-level posterior probabilities. The experimental evaluations are performed with a database recorded in a real-world hospital environment. The performance of the detection system is assessed both at the frame level and at the alarm period level.
Original languageEnglish
DOIs
Publication statusPublished - Sept 2015
EventInterspeech 2015 - Dresden, Germany
Duration: 6 Sept 201510 Sept 2015

Conference

ConferenceInterspeech 2015
Country/TerritoryGermany
CityDresden
Period6/09/1510/09/15

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