Automatic sound recognition (ASR) has attracted increased and wide ranging interests in recent years. In this paper, we carry out a review of some important contributions in ASR techniques, mainly over the last one and a half decades. Similar to speech recognition systems, the robustness of an ASR system largely depends on the choice of feature(s) and classifier(s). We take a wider perspective in providing an overview of the features and classifiers used in ASR systems starting from early works in content-based audio classification to more recent developments in applications such as sound event recognition, audio surveillance, and environmental sound recognition. We also review techniques that have been utilized in noise robust sound recogn...
Abstract—The paper considers the task of recognizing envi-ronmental sounds for the understanding of ...
This paper addresses the problem of automatic detection and recognition of impulsive sounds, such as...
In this article, we present an account of the state of the art in acoustic scene classification (ASC...
Audio signal classification consists of extracting physical and perceptual features from a sound, an...
This report presents a review of the main research directions in noise robust automatic speech recog...
Audio signal classification (ASC) consists of extracting relevant features from a sound, and of usin...
Discrimination between different classes of environmental sounds is the goal of our work. The use of...
The objective of this research is to develop feature extraction and classification techniques for th...
Environmental sounds (ES) have different characteristics, such as unstructured nature and typically ...
State-of-the-art automatic speech recognition (ASR) systems are significantly inferior to humans esp...
The application of the advanced methods for noise analysis in the urban areas through the developmen...
This work was supported by the EPSRC Leadership Fellowship EP/G007144/1, by the EPSRC Research Grant...
The performance of an automatic speech recognition (ASR) system strongly depends on the representati...
The present work describes the design, implementation and evaluation of a system for automatic audio...
Abstract:- This paper is the continuation of previously published work in which we have been analysi...
Abstract—The paper considers the task of recognizing envi-ronmental sounds for the understanding of ...
This paper addresses the problem of automatic detection and recognition of impulsive sounds, such as...
In this article, we present an account of the state of the art in acoustic scene classification (ASC...
Audio signal classification consists of extracting physical and perceptual features from a sound, an...
This report presents a review of the main research directions in noise robust automatic speech recog...
Audio signal classification (ASC) consists of extracting relevant features from a sound, and of usin...
Discrimination between different classes of environmental sounds is the goal of our work. The use of...
The objective of this research is to develop feature extraction and classification techniques for th...
Environmental sounds (ES) have different characteristics, such as unstructured nature and typically ...
State-of-the-art automatic speech recognition (ASR) systems are significantly inferior to humans esp...
The application of the advanced methods for noise analysis in the urban areas through the developmen...
This work was supported by the EPSRC Leadership Fellowship EP/G007144/1, by the EPSRC Research Grant...
The performance of an automatic speech recognition (ASR) system strongly depends on the representati...
The present work describes the design, implementation and evaluation of a system for automatic audio...
Abstract:- This paper is the continuation of previously published work in which we have been analysi...
Abstract—The paper considers the task of recognizing envi-ronmental sounds for the understanding of ...
This paper addresses the problem of automatic detection and recognition of impulsive sounds, such as...
In this article, we present an account of the state of the art in acoustic scene classification (ASC...