Classification of environmental sounds plays a key role in security, investigation, robotics since the study of the sounds present in a specific environment can allow to get significant insights. Lack of standardized methods for an automatic and effective environmental sound classification (ESC) creates a need to be urgently satisfied. As a response to this limitation, in this paper, a hybrid model for automatic and accurate classification of environmental sounds is proposed. Optimum allocation sampling (OAS) is used to elicit the informative samples from each class. The representative samples obtained by OAS are turned into the spectrogram containing their time-frequency-amplitude representation by using a short-time Fourier transform (STF...
Environmental Sound Recognition has become a relevant application for smart cities. Such an applicat...
Environmental sounds (ES) have different characteristics, such as unstructured nature and typically ...
A convolutional neural network (CNN) training framework is described and implemented. The framework ...
At present, the environment sound recognition system mainly identifies environment sounds with deep ...
The classification of environmental sounds is important for emerging applications such as automatic ...
In the important and challenging field of environmental sound classification (ESC), a crucial and ev...
Machine learning has experienced a strong growth in recent years, due to increased dataset sizes and...
Environmental sounds emanate from a variety of sources, such as human and non-human activities, tra...
Artificial neural networks are computational systems made up of simple processing units that have a ...
This paper presents environmental sound classification system and performance comparison on ESC 10 d...
Environmental sound is rich source of information that can be used to infer contexts. With the rise ...
The soundscape of urban parks and cities are composed of a variety of natural and man-made noises. T...
Artificial neural networks have in the last decade been a vital tool in image recognition, signal pr...
With deep great breakthroughs of deep learning in the field of computer vision, the field of audio r...
The topic of this thesis work is soft computing based feature selection for environmental sound clas...
Environmental Sound Recognition has become a relevant application for smart cities. Such an applicat...
Environmental sounds (ES) have different characteristics, such as unstructured nature and typically ...
A convolutional neural network (CNN) training framework is described and implemented. The framework ...
At present, the environment sound recognition system mainly identifies environment sounds with deep ...
The classification of environmental sounds is important for emerging applications such as automatic ...
In the important and challenging field of environmental sound classification (ESC), a crucial and ev...
Machine learning has experienced a strong growth in recent years, due to increased dataset sizes and...
Environmental sounds emanate from a variety of sources, such as human and non-human activities, tra...
Artificial neural networks are computational systems made up of simple processing units that have a ...
This paper presents environmental sound classification system and performance comparison on ESC 10 d...
Environmental sound is rich source of information that can be used to infer contexts. With the rise ...
The soundscape of urban parks and cities are composed of a variety of natural and man-made noises. T...
Artificial neural networks have in the last decade been a vital tool in image recognition, signal pr...
With deep great breakthroughs of deep learning in the field of computer vision, the field of audio r...
The topic of this thesis work is soft computing based feature selection for environmental sound clas...
Environmental Sound Recognition has become a relevant application for smart cities. Such an applicat...
Environmental sounds (ES) have different characteristics, such as unstructured nature and typically ...
A convolutional neural network (CNN) training framework is described and implemented. The framework ...