State-of-the-art classifiers like hidden Markov models (HMMs) in combination with mel-frequency cepstral coefficients (MFCCs) are flexible in time but rigid in the spectral dimension. In contrast, part-based models (PBMs) originally proposed in computer vision consist of parts in a fully deformable configuration. The present contribution proposes to employ PBMs in the spectro-temporal domain for detection of emergency siren sounds in traffic noise, resulting in a classifier that is robust to shifts in frequency induced, e.g., by Doppler-shift effects. Two improvements over standard machine learning techniques for PBM estimation are proposed: (i) Spectro-temporal part ("appearance") extraction is initialized by interest point detection inste...
Discrimination between different classes of environmental sounds is the goal of our work. The use of...
Algorithms for the automatic detection and recognition of acoustic events are increasingly gaining r...
Automatic recognition of sound events can be valuable for efficient situation analysis of audio scen...
Emergency Siren Detection is a topic of great importance for road safety. Nowadays, the design of ca...
It is a well-established practice to build a robust system for sound event detection by training sup...
Real-world acoustic events span a wide range of time and frequency resolutions, from short clicks to...
Emergency Siren Recognition (ESR) is an important issue for automotive safety. We are interested in ...
A system based on a modified pitch detection method is proposed that can be used for the detection o...
In this contribution, an acoustic event detection system based on spectro-temporal features and a tw...
Urban environments are characterised by the presence of distinctive audio signals which alert the dr...
Traffic density is growing day by day due to the increasing population and affordable prices of cars...
Automatic recognition of sound events can be valuable for efficient situation analysis of audio scen...
The research presented in this paper is aiming to address the safety issue that hearing-impaired peo...
This paper addresses the problem of automatic detection and recognition of impulsive sounds, such as...
Traffic congestion in modern cities is an increasing problem having significant consequences in our ...
Discrimination between different classes of environmental sounds is the goal of our work. The use of...
Algorithms for the automatic detection and recognition of acoustic events are increasingly gaining r...
Automatic recognition of sound events can be valuable for efficient situation analysis of audio scen...
Emergency Siren Detection is a topic of great importance for road safety. Nowadays, the design of ca...
It is a well-established practice to build a robust system for sound event detection by training sup...
Real-world acoustic events span a wide range of time and frequency resolutions, from short clicks to...
Emergency Siren Recognition (ESR) is an important issue for automotive safety. We are interested in ...
A system based on a modified pitch detection method is proposed that can be used for the detection o...
In this contribution, an acoustic event detection system based on spectro-temporal features and a tw...
Urban environments are characterised by the presence of distinctive audio signals which alert the dr...
Traffic density is growing day by day due to the increasing population and affordable prices of cars...
Automatic recognition of sound events can be valuable for efficient situation analysis of audio scen...
The research presented in this paper is aiming to address the safety issue that hearing-impaired peo...
This paper addresses the problem of automatic detection and recognition of impulsive sounds, such as...
Traffic congestion in modern cities is an increasing problem having significant consequences in our ...
Discrimination between different classes of environmental sounds is the goal of our work. The use of...
Algorithms for the automatic detection and recognition of acoustic events are increasingly gaining r...
Automatic recognition of sound events can be valuable for efficient situation analysis of audio scen...