Recent methodologies for audio classification frequently involve cepstral and spectral features, applied to single channel recordings of acoustic scenes and events. Further, the concept of transfer learning has been widely used over the years, and has proven to provide an efficient alternative to training neural networks from scratch. The lower time and resource requirements when using pre-trained models allows for more versatility in developing system classification approaches. However, information on classification performance when using different features for multi-channel recordings is often limited. Furthermore, pre-trained networks are initially trained on bigger databases and are often unnecessarily large. This poses a challenge when...
In this thesis we classify samples of music according to the genre that the music belongs to using n...
In this paper, a novel collective network of binary classifiers (CNBC) framework is presented for co...
Audio information retrieval has been a popular research subject over the last decades and being a su...
© 2019 IEEE. Recent approaches to audio classification are typically developed for single channel re...
© 2019 IEEE. Current methodologies explored for audio classification, particularly multi-channel aud...
Research has shown the efficacy of using convolutional neural networks (CNN) with audio spectrograms...
This thesis deals with creating a system whose task is to recognize what type of location the record...
Deep learning can be used for audio signal classification in a variety of ways. It can be used to de...
In recent years deep learning has become one of the most popular machine learning techniques for a ...
Audio classification can be used in many different applications. Rapid increase in the amount of aud...
This project is based upon two previous projects handed to the author by the Norwegian University of...
This work proposes bag-of-features deep learning models for acoustic scene classi?cation (ASC) – ide...
A convolutional neural network (CNN) training framework is described and implemented. The framework ...
In this thesis we investigate the use of deep neural networks applied to the field of computational a...
In this paper, we present the details of our proposed framework and solution for the DCASE 2019 Task...
In this thesis we classify samples of music according to the genre that the music belongs to using n...
In this paper, a novel collective network of binary classifiers (CNBC) framework is presented for co...
Audio information retrieval has been a popular research subject over the last decades and being a su...
© 2019 IEEE. Recent approaches to audio classification are typically developed for single channel re...
© 2019 IEEE. Current methodologies explored for audio classification, particularly multi-channel aud...
Research has shown the efficacy of using convolutional neural networks (CNN) with audio spectrograms...
This thesis deals with creating a system whose task is to recognize what type of location the record...
Deep learning can be used for audio signal classification in a variety of ways. It can be used to de...
In recent years deep learning has become one of the most popular machine learning techniques for a ...
Audio classification can be used in many different applications. Rapid increase in the amount of aud...
This project is based upon two previous projects handed to the author by the Norwegian University of...
This work proposes bag-of-features deep learning models for acoustic scene classi?cation (ASC) – ide...
A convolutional neural network (CNN) training framework is described and implemented. The framework ...
In this thesis we investigate the use of deep neural networks applied to the field of computational a...
In this paper, we present the details of our proposed framework and solution for the DCASE 2019 Task...
In this thesis we classify samples of music according to the genre that the music belongs to using n...
In this paper, a novel collective network of binary classifiers (CNBC) framework is presented for co...
Audio information retrieval has been a popular research subject over the last decades and being a su...