Environmental sound recognition has been a hot topic in the domain of audio recognition. How to select the optimal feature subsets and enhance the performance of classification precisely is an urgent problem to be solved. Ensemble learning, a new kind of method presented recently, has been an effective way to improve the accuracy of classification in feature selection. In this paper, experiments were performed on environmental sound dataset. An improved method based on constraint score and multimodels ensemble feature selection methods (MmEnFs) were exploited in the experiments. The experimental results show that when enough attributes are selected, the improved method can get a better performance compared to other feature selection methods...
This reports presents a novel semi-supervised feature learning process for classifying audio recordi...
With deep great breakthroughs of deep learning in the field of computer vision, the field of audio r...
In the important and challenging field of environmental sound classification (ESC), a crucial and ev...
Abstract- Environmental audio classification has been the focus in the field of speech recognition. ...
Environmental sound classification is an important branch of acoustic signal processing. In this wor...
This paper proposes a classification method for environmental sounds based on neural networks. Howev...
AbstractIn this work, an environmental audio classification scheme is proposed using a Chi squared f...
In this work, an environmental audio classification scheme is proposed using a Chi squared filter as...
The topic of this thesis work is soft computing based feature selection for environmental sound clas...
International audienceIn this paper we describe algorithms to classify environmental sounds with the...
Environmental sounds (ES) have different characteristics, such as unstructured nature and typically ...
Research in sound classification and recognition is rapidly advancing in the field of pattern recogn...
Research in sound classification and recognition is rapidly advancing in the field of pattern recogn...
Abstract—Environmental sound recognition (ESR) is a chal-lenging problem that has gained a lot of at...
Recognition of environmental sound is usually based on two main architectures, depending on whether ...
This reports presents a novel semi-supervised feature learning process for classifying audio recordi...
With deep great breakthroughs of deep learning in the field of computer vision, the field of audio r...
In the important and challenging field of environmental sound classification (ESC), a crucial and ev...
Abstract- Environmental audio classification has been the focus in the field of speech recognition. ...
Environmental sound classification is an important branch of acoustic signal processing. In this wor...
This paper proposes a classification method for environmental sounds based on neural networks. Howev...
AbstractIn this work, an environmental audio classification scheme is proposed using a Chi squared f...
In this work, an environmental audio classification scheme is proposed using a Chi squared filter as...
The topic of this thesis work is soft computing based feature selection for environmental sound clas...
International audienceIn this paper we describe algorithms to classify environmental sounds with the...
Environmental sounds (ES) have different characteristics, such as unstructured nature and typically ...
Research in sound classification and recognition is rapidly advancing in the field of pattern recogn...
Research in sound classification and recognition is rapidly advancing in the field of pattern recogn...
Abstract—Environmental sound recognition (ESR) is a chal-lenging problem that has gained a lot of at...
Recognition of environmental sound is usually based on two main architectures, depending on whether ...
This reports presents a novel semi-supervised feature learning process for classifying audio recordi...
With deep great breakthroughs of deep learning in the field of computer vision, the field of audio r...
In the important and challenging field of environmental sound classification (ESC), a crucial and ev...