Home /Research /Audio Bank: A high-level acoustic signal representation for audio event recognition
HRI

Audio Bank: A high-level acoustic signal representation for audio event recognition

Tushar Sandhan, Sukanya Sonowal, Jin Young Choi

Year
2014
Citations
8

Abstract

Automatic audio event recognition plays a pivotal role in making human robot interaction more closer and has a wide applicability in industrial automation, control and surveillance systems. Audio event is composed of intricate phonic patterns which are harmonically entangled. Audio recognition is dominated by low and mid-level features, which have demonstrated their recognition capability but they have high computational cost and low semantic meaning. In this paper, we propose a new computationally efficient framework for audio recognition. Audio Bank, a new high-level representation of audio, is comprised of distinctive audio detectors representing each audio class in frequency-temporal space. Dimensionality of the resulting feature vector is reduced using non-negative matrix factorization preserving its discriminability and rich semantic information. The high audio recognition performance using several classifiers (SVM, neural network, Gaussian process classification and k-nearest neighbors) shows the effectiveness of the proposed method.

Keywords

Computer scienceSpeech recognitionAudio miningAudio signalEvent (particle physics)Artificial intelligenceRepresentation (politics)Audio signal processingNon-negative matrix factorizationAudio analyzer

Related papers

Browse all HRI papers