The task of labeling the audio sample in outdoor condition or indoor condition is called Acoustic Scene Classification (ASC). The ASC use acoustic information to imply about the context of the recorded environment. Since ASC can only applied in indoor environment in real world, a new set of strategies and classification techniques are required to consider for outdoor environment. In this paper, we present the comparative study of different machine learning classifiers with Mel-Frequency Cepstral Coefficients (MFCC) feature. We used DCASE Challenge 2016 dataset to show the properties of machine learning classifiers. There are several classifiers to address the ASC task. In this paper, we compare the properties of different classifiers: K-nea...
International audienceThis paper investigates the use of supervised feature learning approaches for ...
This paper presents a novel application of convolutional neural networks (CNNs) for the task of acou...
Research work on automatic speech recognition and automatic music transcription has been around for ...
Predicting acoustic environment by analyzing and classifying sound recording of the scene is an emer...
This paper presents a baseline system for automatic acoustic scene classification based on the audio...
This thesis deals with creating a system whose task is to recognize what type of location the record...
The number of publications on acoustic scene classification (ASC) in environmental audio recordings ...
This report describes our contribution to the 2017 Detection and Classification of Acoustic Scenes ...
In this article, we present an account of the state of the art in acoustic scene classification (ASC...
This work was supported by the Centre for Digital Music Platform (grant EP/K009559/1) and a Leadersh...
This report describes our contribution to the 2017 Detection and Classification of Acoustic Scenes a...
This report describes our contribution to the 2017 Detection and Classification of Acoustic Scenes a...
International audienceIn this paper, we study the usefulness of various matrix factorization methods...
Public evaluation campaigns and datasets promote active development in target research areas, allow...
Public evaluation campaigns and datasets promote active development in target research areas, allowi...
International audienceThis paper investigates the use of supervised feature learning approaches for ...
This paper presents a novel application of convolutional neural networks (CNNs) for the task of acou...
Research work on automatic speech recognition and automatic music transcription has been around for ...
Predicting acoustic environment by analyzing and classifying sound recording of the scene is an emer...
This paper presents a baseline system for automatic acoustic scene classification based on the audio...
This thesis deals with creating a system whose task is to recognize what type of location the record...
The number of publications on acoustic scene classification (ASC) in environmental audio recordings ...
This report describes our contribution to the 2017 Detection and Classification of Acoustic Scenes ...
In this article, we present an account of the state of the art in acoustic scene classification (ASC...
This work was supported by the Centre for Digital Music Platform (grant EP/K009559/1) and a Leadersh...
This report describes our contribution to the 2017 Detection and Classification of Acoustic Scenes a...
This report describes our contribution to the 2017 Detection and Classification of Acoustic Scenes a...
International audienceIn this paper, we study the usefulness of various matrix factorization methods...
Public evaluation campaigns and datasets promote active development in target research areas, allow...
Public evaluation campaigns and datasets promote active development in target research areas, allowi...
International audienceThis paper investigates the use of supervised feature learning approaches for ...
This paper presents a novel application of convolutional neural networks (CNNs) for the task of acou...
Research work on automatic speech recognition and automatic music transcription has been around for ...