In the emerging field of acoustic novelty detection, most research efforts are devoted to probabilistic approaches such as mixture models or state-space models. Only recent studies introduced (pseudo-)generative models for acoustic novelty detection with recurrent neural networks in the form of an autoencoder. In these approaches, auditory spectral features of the next short-term frame are predicted from the previous frames by means of Long-Short Term Memory recurrent denoising autoencoders. The reconstruction error between the input and the output of the autoencoder is used as activation signal to detect novel events. There is no evidence of studies focused on comparing previous efforts to automatically recognise novel events from audio si...
The need for effective and reliable surveillance techniques is getting nowadays more and more of pri...
We applied various architectures of deep neural networks for sound event detection and compared thei...
This paper presents and compares two algorithms based on artificial neural networks (ANNs) for sound...
In the emerging field of acoustic novelty detection, most research efforts are devoted to probabilis...
Acoustic novelty detection aims at identifying abnormal/novel acoustic signals which differ from the...
Acoustic novelty detection aims at identifying abnormal/novel acoustic signals which differ from the...
Novelty detection is the task of recognising events the differ from a model of normality. This paper...
Machine Learning applied to Automatic Audio Surveillance has been attracting increasing attention in...
Acoustic scene analysis (ASA) relies on the dynamic sensing and understanding of stationary and non-...
Rare Audio Event Detection (AED) plays a crucial role in domestic and public security applications. ...
Novelty detection in the machine learning context refers to identifying unknown/novel data, i.e., da...
Sound events often occur in unstructured environments where they exhibit wide variations in their fr...
The need for effective and reliable surveillance techniques is getting nowadays more and more of pri...
We applied various architectures of deep neural networks for sound event detection and compared thei...
This paper presents and compares two algorithms based on artificial neural networks (ANNs) for sound...
In the emerging field of acoustic novelty detection, most research efforts are devoted to probabilis...
Acoustic novelty detection aims at identifying abnormal/novel acoustic signals which differ from the...
Acoustic novelty detection aims at identifying abnormal/novel acoustic signals which differ from the...
Novelty detection is the task of recognising events the differ from a model of normality. This paper...
Machine Learning applied to Automatic Audio Surveillance has been attracting increasing attention in...
Acoustic scene analysis (ASA) relies on the dynamic sensing and understanding of stationary and non-...
Rare Audio Event Detection (AED) plays a crucial role in domestic and public security applications. ...
Novelty detection in the machine learning context refers to identifying unknown/novel data, i.e., da...
Sound events often occur in unstructured environments where they exhibit wide variations in their fr...
The need for effective and reliable surveillance techniques is getting nowadays more and more of pri...
We applied various architectures of deep neural networks for sound event detection and compared thei...
This paper presents and compares two algorithms based on artificial neural networks (ANNs) for sound...