This paper introduces the use of local binary patterns (LBP) extracted from a time-frequency representation (TFR) for acoustic scene classification. As LBP provides a description of the global TFR texture we propose a novel zoning mechanism that provides a simple solution to extract spectrally relevant local features which better characterize the audio TFRs. To further improve the classification performance, we perform feature and score level fusion of the proposed LBP (with zoning) with histogram of gradients (HOG) of the TFR images. Our technique demonstrates an improved performance by achieving a classification accuracy of 95.2% using a fusion of time-frequency derived features
Abstract—Dynamic texture (DT) is an extension of texture to the temporal domain. Description and rec...
The various time-frequency (TF) representations of acoustic signals share the common objective to de...
In speech-related classification tasks, frequency-domain acoustic features such as logarithmic Mel-f...
In this paper we present an approach for acoustic scene classification, which aggregates spectral an...
This paper presents an approach for acoustic scene classification using the local binary pattern (LB...
International audienceThis paper addresses the problem of audio scenes classification and contribute...
Classification of environmental sounds is a fundamental pro-cedure for a wide range of real-world ap...
Time-frequency representations of audio signals often resem-ble texture images. This paper derives a...
This paper presents a novel approach for acoustic scene classification based on efficient acoustic f...
Local Binary Patterns (LBP) have been used in 2-D image processing for applications such as texture ...
Abstract. Time-frequency (t-f) analysis has clearly reached a certain maturity. One can now often pr...
In this paper, we present the details of our proposed framework and solution for the DCASE 2019 Task...
<p>Acoustic scene classification is a difficult problem mostly due to the high density of events con...
In this paper, we study the use of spectral patterns to represent the characteristics of the rhythm ...
This paper presents novel time-frequency (t-f) feature extraction approach for the classification of...
Abstract—Dynamic texture (DT) is an extension of texture to the temporal domain. Description and rec...
The various time-frequency (TF) representations of acoustic signals share the common objective to de...
In speech-related classification tasks, frequency-domain acoustic features such as logarithmic Mel-f...
In this paper we present an approach for acoustic scene classification, which aggregates spectral an...
This paper presents an approach for acoustic scene classification using the local binary pattern (LB...
International audienceThis paper addresses the problem of audio scenes classification and contribute...
Classification of environmental sounds is a fundamental pro-cedure for a wide range of real-world ap...
Time-frequency representations of audio signals often resem-ble texture images. This paper derives a...
This paper presents a novel approach for acoustic scene classification based on efficient acoustic f...
Local Binary Patterns (LBP) have been used in 2-D image processing for applications such as texture ...
Abstract. Time-frequency (t-f) analysis has clearly reached a certain maturity. One can now often pr...
In this paper, we present the details of our proposed framework and solution for the DCASE 2019 Task...
<p>Acoustic scene classification is a difficult problem mostly due to the high density of events con...
In this paper, we study the use of spectral patterns to represent the characteristics of the rhythm ...
This paper presents novel time-frequency (t-f) feature extraction approach for the classification of...
Abstract—Dynamic texture (DT) is an extension of texture to the temporal domain. Description and rec...
The various time-frequency (TF) representations of acoustic signals share the common objective to de...
In speech-related classification tasks, frequency-domain acoustic features such as logarithmic Mel-f...