In this thesis we investigate the use of deep neural networks applied to the field of computational audio scene analysis, in particular to acoustic scene classification. This task concerns the recognition of an acoustic scene, like a park or a home, performed by an artificial system. In our work we examine the use of deep models aiming to give a contribution in one of their use cases which is, in our opinion, one of the most poorly explored. The neural architecture we propose in this work is a convolutional neural network specifically designed to work on a time-frequency audio representation known as log-mel spectrogram. The network output is an array of prediction scores, each of which is associated with one class of a set of 15 predefined clas...
There are multiple sound events simultaneously occuring in a real-life audio recording collected e.g...
Research has shown the efficacy of using convolutional neural networks (CNN) with audio spectrograms...
The objective of this thesis is to develop novel classification and feature learning techniques for t...
In this thesis we investigate the use of deep neural networks applied to the field of computational a...
Audio information retrieval has been a popular research subject over the last decades and being a su...
PhDIn this thesis, we consider the analysis of music and environmental audio recordings with neural...
The main objective of this work is to investigate how a deep convolutional neural network (CNN) perf...
Minut is a startup company that builds a camera-free home monitor called Point. This thesis is about...
This paper presents a novel application of convolutional neural networks (CNNs) for the task of acou...
Predicting acoustic environment by analyzing and classifying sound recording of the scene is an emer...
Recently, labeling of acoustic events has emerged as an active topic covering a wide range of applic...
As an important information carrier, sound carries abundant information about the environment, which...
In recent years deep learning has become one of the most popular machine learning techniques for a ...
This workshop paper presents our contribution for the task of acoustic scene classification proposed...
This work proposes bag-of-features deep learning models for acoustic scene classi?cation (ASC) – ide...
There are multiple sound events simultaneously occuring in a real-life audio recording collected e.g...
Research has shown the efficacy of using convolutional neural networks (CNN) with audio spectrograms...
The objective of this thesis is to develop novel classification and feature learning techniques for t...
In this thesis we investigate the use of deep neural networks applied to the field of computational a...
Audio information retrieval has been a popular research subject over the last decades and being a su...
PhDIn this thesis, we consider the analysis of music and environmental audio recordings with neural...
The main objective of this work is to investigate how a deep convolutional neural network (CNN) perf...
Minut is a startup company that builds a camera-free home monitor called Point. This thesis is about...
This paper presents a novel application of convolutional neural networks (CNNs) for the task of acou...
Predicting acoustic environment by analyzing and classifying sound recording of the scene is an emer...
Recently, labeling of acoustic events has emerged as an active topic covering a wide range of applic...
As an important information carrier, sound carries abundant information about the environment, which...
In recent years deep learning has become one of the most popular machine learning techniques for a ...
This workshop paper presents our contribution for the task of acoustic scene classification proposed...
This work proposes bag-of-features deep learning models for acoustic scene classi?cation (ASC) – ide...
There are multiple sound events simultaneously occuring in a real-life audio recording collected e.g...
Research has shown the efficacy of using convolutional neural networks (CNN) with audio spectrograms...
The objective of this thesis is to develop novel classification and feature learning techniques for t...