5 research outputs found
Musical instrument identification using principal componant analysis and multi-layered perceptions
This study aims to create an automatic musical
instrument classifier by extracting audio features from
real sample sounds. These features are reduced using
Principal Component Analysis and the resultant data
is used to train a Multi-Layered Perceptron. We found
that the RMS temporal envelope and the evolution of
the centroid gave the most interesting results of the
features studied. These results were found to be
competitive whether the scope of the data was across
one octave or across the range of each instrumen
Comparison of features in musical instrument identification using artificial neural networks
This paper examines the use of a number of auditory features in
identifying musical instruments. The Temporal Envelope, Centroid, Melfrequency
Cepstral Coefficients (MFCCs), Inharmonicity, Spectral Irregularity
and Number of Spectral Peaks are all examined. By using these features to train
a Multi-Layered Perceptron (MLP), it is determined that the MFCCs are the
most efficient of these features in musical instrument identification. The
Inharmonicity, Spectral Irregularity and Number of Spectral Peaks offered no
benefit to the classifier. Of the instruments studied, the piano was most
accurately classified and the violin was the least accurately classified
instrument
The use of mel-frequency cepstral coefficients in musical instrument identification
This paper examines the use of Mel-frequency
Cepstral Coefficients in the classification of musical
instruments. 2004 piano, violin and flute samples are
analysed to get their coefficients. These coefficients
are reduced using principal component analysis and
used to train a multi-layered perceptron. The network
is trained on the first 3, 4 and 5 principal components
calculated from the envelope of the changes in the
coefficients. This trained network is then used to
classify novel input samples. By training and testing
the network on a different number of coefficients, the
optimum number of coefficients to include for
identifying a musical instrument is determined. We
conclude that using 4 principal components from the
first 15 coefficients gives the most accurate
classification results
Blood detection in the spinal column of whole cooked chicken using an optical fibre based sensor system
An optical fibre based sensor has been developed to aid the quality assurance of food cooked in industrial ovens by monitoring the product in situ as it cooks. The sensor measures the product colour as it cooks by examining the reflected visible light from the surface as well as the core of the product. This paper examines the use of the sensor for the detection of blood in the spinal area of cooked whole chickens. The results presented here show that the sensor can be successfully used for this purpose
Detection of premature browning in ground beef with an integrated optical-fibre based sensor using reflection spectroscopy and fibre Bragg grating technology
This paper reports on an optical fibre based sensor system to detect the occurrence of premature browning in ground beef. Premature browning (PMB) occurs when, at a temperature below the pasteurisation temperature of 71°C, there are no traces of pink meat left in the patty. PMB is more frequent if poorer quality beef or beef that has been stored under imperfect conditions. The experimental work pertaining to this paper involved cooking fresh meat and meat that has been stored in a freezer for, 1 week, 1 month and 3 months and recording the reflected spectra and temperature at the core of the product, during the cooking process, in order to develop a classifier based on the spectral response and using a Self-Organising Map (SOM) to classify the patties into one of four categories, based on their colour. Further tests were also carried out on developing an all-optical fibre sensor for measuring both the temperature and colour in a single integrated probe. The integrated probe contains two different sensor concepts, one to monitor temperature, based on Fibre Bragg Grating (FBG) technology and a second for meat quality, based on reflection spectroscopy in the visible wavelength range