Robust recognition of general audio events constitutes a topic of intensive research in the signal processing community. This work presents an efficient methodology for acoustic surveillance of atypical situations which can find use under different acoustic backgrounds. The primary goal is the continuous acoustic monitoring of a scene for potentially hazardous events in order to help an authorized officer to take the appropriate actions towards preventing human loss and/or property damage. A probabilistic hierarchical scheme is designed based on Gaussian mixture models and state-of-the-art sound parameters selected through extensive experimentation. A feature of the proposed system is its model adaptation loop that provides adaptability to...
Novelty detection in the machine learning context refers to identifying unknown/novel data, i.e., da...
In this work we address the problem of detecting human activities in natural environments based sole...
Acoustic surveillance and human behavior analysis represent some of the ongoing research topics in s...
Robust recognition of general audio events constitutes a topic of intensive research in the signal p...
Robust recognition of general audio events constitutes a topic of intensive research in the signal p...
This work presents a practical, automatic and robust methodology for acoustic surveillance of hazard...
Automatic recognition of sound events can be valuable for efficient situation analysis of audio scen...
The present study describes a practical methodology for automatic space monitoring based solely on t...
Automatic recognition of sound events can be valuable for efficient situation analysis of audio scen...
In this paper, we investigate the problem of automatic audio surveillance. This aspect of the survei...
In this work we address the problem of detecting human activities in natural environments based sole...
This paper describes an approach for an audio event detection system in noisy environments. The syst...
The present study presents a practical methodology for automatic space monitoring based solely on th...
In this paper we propose a novel method for the detection of audio events for surveillance applicati...
Novelty detection in the machine learning context refers to identifying unknown/novel data, i.e., da...
In this work we address the problem of detecting human activities in natural environments based sole...
Acoustic surveillance and human behavior analysis represent some of the ongoing research topics in s...
Robust recognition of general audio events constitutes a topic of intensive research in the signal p...
Robust recognition of general audio events constitutes a topic of intensive research in the signal p...
This work presents a practical, automatic and robust methodology for acoustic surveillance of hazard...
Automatic recognition of sound events can be valuable for efficient situation analysis of audio scen...
The present study describes a practical methodology for automatic space monitoring based solely on t...
Automatic recognition of sound events can be valuable for efficient situation analysis of audio scen...
In this paper, we investigate the problem of automatic audio surveillance. This aspect of the survei...
In this work we address the problem of detecting human activities in natural environments based sole...
This paper describes an approach for an audio event detection system in noisy environments. The syst...
The present study presents a practical methodology for automatic space monitoring based solely on th...
In this paper we propose a novel method for the detection of audio events for surveillance applicati...
Novelty detection in the machine learning context refers to identifying unknown/novel data, i.e., da...
In this work we address the problem of detecting human activities in natural environments based sole...
Acoustic surveillance and human behavior analysis represent some of the ongoing research topics in s...