Rare Audio Event Detection (AED) plays a crucial role in domestic and public security applications. The goal of this research is to recognize key acoustic events using Long Short-Term-Memory Recurrent Neural Network (LSTM-RNN) based classifiers. We compared different existing methods on rare sound recognition, such as Gaussian Mixture Model (GMM), Hidden Markov Model (HMM), zero-phase signal method and neural networks. Specifically, we investigated different neural network architectures, such as feedforward DNN, RNN, LSTM-RNN, bi-directional RNN etc. After experimenting with different neural network structures and different acoustic features, we propose a mixed neural network which consists of multiple subnets, each dedicated to reco...
Recently, deep recurrent neural networks have achieved great success in various machine learning tas...
We present in this paper two loss functions tailored for rare audio event detection in audio streams...
Nowadays, people pay more attention to their personal safety due to the improvements in their qualit...
Rare Audio Event Detection (AED) plays a crucial role in domestic and public security applications. ...
In this paper, we propose a system for rare sound event detection using a hierarchical and multi-sca...
We applied various architectures of deep neural networks for sound event detection and compared thei...
In the emerging field of acoustic novelty detection, most research efforts are devoted to probabilis...
The objective of this thesis is to investigate how a deep learning model called recurrent neural net...
There are multiple sound events simultaneously occuring in a real-life audio recording collected e.g...
This paper evaluates neural network (NN) based systems and compares them to Gaussian mixture model (...
Sound events often occur in unstructured environments where they exhibit wide variations in their fr...
The objective of this thesis is to develop novel classification and feature learning techniques for t...
Acoustic novelty detection aims at identifying abnormal/novel acoustic signals which differ from the...
Audio information retrieval has been a popular research subject over the last decades and being a su...
This paper presents and compares two algorithms based on artificial neural networks (ANNs) for sound...
Recently, deep recurrent neural networks have achieved great success in various machine learning tas...
We present in this paper two loss functions tailored for rare audio event detection in audio streams...
Nowadays, people pay more attention to their personal safety due to the improvements in their qualit...
Rare Audio Event Detection (AED) plays a crucial role in domestic and public security applications. ...
In this paper, we propose a system for rare sound event detection using a hierarchical and multi-sca...
We applied various architectures of deep neural networks for sound event detection and compared thei...
In the emerging field of acoustic novelty detection, most research efforts are devoted to probabilis...
The objective of this thesis is to investigate how a deep learning model called recurrent neural net...
There are multiple sound events simultaneously occuring in a real-life audio recording collected e.g...
This paper evaluates neural network (NN) based systems and compares them to Gaussian mixture model (...
Sound events often occur in unstructured environments where they exhibit wide variations in their fr...
The objective of this thesis is to develop novel classification and feature learning techniques for t...
Acoustic novelty detection aims at identifying abnormal/novel acoustic signals which differ from the...
Audio information retrieval has been a popular research subject over the last decades and being a su...
This paper presents and compares two algorithms based on artificial neural networks (ANNs) for sound...
Recently, deep recurrent neural networks have achieved great success in various machine learning tas...
We present in this paper two loss functions tailored for rare audio event detection in audio streams...
Nowadays, people pay more attention to their personal safety due to the improvements in their qualit...