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IEEE Transactions on Audio, Speech, and Language Processing | 2006

Audio-based context recognition

Antti Eronen; Vesa T. Peltonen; Juha T. Tuomi; Anssi Klapuri; Seppo Fagerlund; Timo Sorsa; Gaëtan Lorho; Jyri Huopaniemi

The aim of this paper is to investigate the feasibility of an audio-based context recognition system. Here, context recognition refers to the automatic classification of the context or an environment around a device. A system is developed and compared to the accuracy of human listeners in the same task. Particular emphasis is placed on the computational complexity of the methods, since the application is of particular interest in resource-constrained portable devices. Simplistic low-dimensional feature vectors are evaluated against more standard spectral features. Using discriminative training, competitive recognition accuracies are achieved with very low-order hidden Markov models (1-3 Gaussian components). Slight improvement in recognition accuracy is observed when linear data-driven feature transformations are applied to mel-cepstral features. The recognition rate of the system as a function of the test sequence length appears to converge only after about 30 to 60 s. Some degree of accuracy can be achieved even with less than 1-s test sequence lengths. The average reaction time of the human listeners was 14 s, i.e., somewhat smaller, but of the same order as that of the system. The average recognition accuracy of the system was 58% against 69%, obtained in the listening tests in recognizing between 24 everyday contexts. The accuracies in recognizing six high-level classes were 82% for the system and 88% for the subjects.


systems man and cybernetics | 1991

Neural networks in process fault diagnosis

Timo Sorsa; H.N. Koivo; Hannu Koivisto

Fault detection and diagnosis is an important problem in process automation. Both model-based methods and expert systems have been suggested to solve the problem, along with the pattern recognition approach. A number of possible neural network architectures for fault diagnosis are studied. The multilayer perceptron network with a hyperbolic tangent as the nonlinear element seems best suited for the task. As a test case, a realistic heat exchanger-continuous stirred tank reactor system is studied. The system has 14 noisy measurements and 10 faults. The proposed neural network was able to learn the faults in under 3000 training cycles and then to detect and classify the faults correctly. Principal component analysis is used to illustrate the fault diagnosis problem in question. >


international conference on acoustics, speech, and signal processing | 2002

Computational auditory scene recognition

Vesa T. Peltonen; Juha T. Tuomi; Anssi Klapuri; Jyri Huopaniemi; Timo Sorsa

In this paper, we address the problem of computational auditory scene recognition and describe methods to classify auditory scenes into predefined classes. By auditory scene recognition we mean recognition of an environment using audio information only. The auditory scenes comprised tens of everyday outside and inside environments, such as streets, restaurants, offices, family homes, and cars. Two completely different but almost equally effective classification systems were used: band-energy ratio features with 1-NN classifier and Mel-frequency cepstral coefficients with Gaussian mixture models. The best obtained recognition rate for 17 different scenes out of 26 and for an analysis duration of 30 seconds was 68.4%. For comparison, the recognition accuracy of humans was 70% for 25 different scenes and the average response time was around 20 seconds. The efficiency of different acoustic features and the effect of test sequence length were studied.


Automatica | 1993

Application of artificial networks in process fault diagnosis

Timo Sorsa; H.N. Koivo

Abstract Fault diagnosis has been studied very actively during recent years. Estimation methods, rule-base reasoning and pattern recognition techniques are the most common methods used to solve problems. In recent years artificial neural networks have been used successfully in pattern recognition tasks and their suitability for fault diagnosis problems has also been demonstrated. However, the results presented in the literature usually consider very simple example situations. In this paper a realistic heat exchanger-continuous stirred tank reactor system is studied as a test case. The system with 14 noisy measurements and 10 fault situations is studied. The arrangement of different fault categories is visualized by the principal component analysis. The fault detection and diagnosis is based on the classification of process measurements and the classification is carried out using neural networks.


international conference on acoustics, speech, and signal processing | 2003

Audio-based context awareness - acoustic modeling and perceptual evaluation

Antti Eronen; Juha T. Tuomi; Anssi Klapuri; Seppo Fagerlund; Timo Sorsa; Gaëtan Lorho; Jyri Huopaniemi

The paper concerns the development of a system for the recognition of a context or an environment based on acoustic information only. Our system uses Mel-frequency cepstral coefficients and their derivatives as features, and continuous density hidden Markov models (HMM) as acoustic models. We evaluate different model topologies and training methods for HMMs and show that discriminative training can yield a 10% reduction in error rate compared to maximum-likelihood training. A listening test is made to study the human accuracy in the task and to obtain a baseline for the assessment of the performance of the system. Direct comparison to human performance indicates that the system performs somewhat worse than human subjects do in the recognition of 18 everyday contexts and almost comparably in recognizing six higher level categories.


Archive | 2004

Method and System for Managing Metadata

Juha Lehikoinen; Ilkka Salminen; Pertti Huuskonen; Timo Sorsa; Harri Lakkala; Tero Hakala; Mika Karhu


Journal of the Acoustical Society of America | 2003

Method and a system for recognizing a melody

Jyri Huopaniemi; Timo Sorsa; Peter Boda


Archive | 2003

Automatic extraction of musical portions of an audio stream

Ole Kirkeby; Jyri Huopaniemi; Timo Sorsa


international symposium/conference on music information retrieval | 2001

Melodic Resolution in Music Retrieval

Timo Sorsa; Jyri Huopaniemi


international symposium/conference on music information retrieval | 2002

Mobile Melody Recognition System with Voice-Only User Interface.

Timo Sorsa; Katriina Halonen

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Juha T. Tuomi

Tampere University of Technology

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Anssi Klapuri

Queen Mary University of London

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Gaëtan Lorho

Tampere University of Technology

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H.N. Koivo

Tampere University of Technology

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