The soundscape of urban parks and cities are composed of a variety of natural and man-made noises. The benefits brought by urban parks and the health ailments from sound pollution makes soundscape analysis a valuable study topic in urban cities, like Singapore. However, the need to collect sound data for research and analysis is hampered by the difficulty of recruiting volunteers and manually annotating samples accurately. The use of machine learning in predicting and annotating environment sounds can help in data collection. In my previous work, the use of sound spectrum was to overcome the risk of audio recording storage, where the audio data may expose personal information of the data collection volunteer. Existing works successfully pro...
Environmental sound identification and recognition aim to detect sound events within an audio clip. ...
Research in sound classification and recognition is rapidly advancing in the field of pattern recogn...
In this thesis the main goal was to compare artificial neural network classification capabilities in...
In modern times nowadays, the need for automation is becoming more prevalent as companies in the Inf...
The sound at the same decibel (dB) level may be perceived either as annoying noise or as pleasant mu...
Environmental Sound Recognition has become a relevant application for smart cities. Such an applicat...
Artificial neural networks are computational systems made up of simple processing units that have a ...
Artificial neural networks have in the last decade been a vital tool in image recognition, signal pr...
Ovaj rad bavi se problemom klasifikacije zvučnih signala iz okoliša primjenom strojnog učenja. Za sk...
The classification of environmental sounds is important for emerging applications such as automatic ...
Deep learning (DL) methods have provided several breakthroughs in conventional data analysis techniq...
In this report, features of the audio data training samples of various class will be extracted to tr...
Machine learning has experienced a strong growth in recent years, due to increased dataset sizes and...
Noise pollution has been increasingly focused upon due to their severe impact on health. However, li...
Sound assumes a significant part in human existence. It is one of the fundamental tangible data whic...
Environmental sound identification and recognition aim to detect sound events within an audio clip. ...
Research in sound classification and recognition is rapidly advancing in the field of pattern recogn...
In this thesis the main goal was to compare artificial neural network classification capabilities in...
In modern times nowadays, the need for automation is becoming more prevalent as companies in the Inf...
The sound at the same decibel (dB) level may be perceived either as annoying noise or as pleasant mu...
Environmental Sound Recognition has become a relevant application for smart cities. Such an applicat...
Artificial neural networks are computational systems made up of simple processing units that have a ...
Artificial neural networks have in the last decade been a vital tool in image recognition, signal pr...
Ovaj rad bavi se problemom klasifikacije zvučnih signala iz okoliša primjenom strojnog učenja. Za sk...
The classification of environmental sounds is important for emerging applications such as automatic ...
Deep learning (DL) methods have provided several breakthroughs in conventional data analysis techniq...
In this report, features of the audio data training samples of various class will be extracted to tr...
Machine learning has experienced a strong growth in recent years, due to increased dataset sizes and...
Noise pollution has been increasingly focused upon due to their severe impact on health. However, li...
Sound assumes a significant part in human existence. It is one of the fundamental tangible data whic...
Environmental sound identification and recognition aim to detect sound events within an audio clip. ...
Research in sound classification and recognition is rapidly advancing in the field of pattern recogn...
In this thesis the main goal was to compare artificial neural network classification capabilities in...