Publication | Closed Access
Acoustic fall detection using Gaussian mixture models and GMM supervectors
139
Citations
8
References
2009
Year
Unknown Venue
EngineeringMachine LearningFall Detection AccuracyHome EnvironmentAcoustic ModelingSpeech RecognitionSupport Vector MachineImage AnalysisData SciencePattern RecognitionAudio AnalysisRobust Speech RecognitionAcoustic Signal ProcessingHealth SciencesMachine VisionComputer ScienceSignal ProcessingComputer VisionAudio MiningHuman FallsSpeech ProcessingActivity RecognitionAcoustic Fall Detection
We present a system that detects human falls in the home environment, distinguishing them from competing noise, by using only the audio signal from a single far-field microphone. The proposed system models each fall or noise segment by means of a Gaussian mixture model (GMM) supervector, whose Euclidean distance measures the pairwise difference between audio segments. A support vector machine built on a kernel between GMM supervectors is employed to classify audio segments into falls and various types of noise. Experiments on a dataset of human falls, collected as part of the Netcarity project, show that the method improves fall classification F-score to 67% from 59% of a baseline GMM classifier. The approach also effectively addresses the more difficult fall detection problem, where audio segment boundaries are unknown. Specifically, we employ it to reclassify confusable segments produced by a dynamic programming scheme based on traditional GMMs. Such post-processing improves a fall detection accuracy metric by 5% relative.
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