Audio Classification Based on Content Features
Audio classification is the process to classify different audio types according to contents. It is implemented in a large variety of real world problems, all classification applications allowed the target subjects to be viewed as a specific type of audio and hence, there is a variety in the audio ty...
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College of Education for Women,
2018-06-01T00:00:00Z.
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001 | doaj_a0fb30904a8d4e39b69815f01d8e08b0 | ||
042 | |a dc | ||
100 | 1 | 0 | |a اياد عبدالقهار عبدالسلام Ayad A. Abdulsalam |e author |
245 | 0 | 0 | |a Audio Classification Based on Content Features |
260 | |b College of Education for Women, |c 2018-06-01T00:00:00Z. | ||
500 | |a 1680-8738 | ||
500 | |a 2663-547X | ||
520 | |a Audio classification is the process to classify different audio types according to contents. It is implemented in a large variety of real world problems, all classification applications allowed the target subjects to be viewed as a specific type of audio and hence, there is a variety in the audio types and every type has to be treatedcarefully according to its significant properties.Feature extraction is an important process for audio classification. This workintroduces several sets of features according to the type, two types of audio (datasets) were studied. Two different features sets are proposed: (i) firstorder gradient feature vector, and (ii) Local roughness feature vector, the experimentsshowed that the results are competitive to those gotten from other popular methods inthis field, such as Zero Crossing Rate (ZCR), Amplitude Descriptor (AD), Short Time Energy (STE), and Volume (Vo). The test results indicated, that the attained averageaccuracy of classification is improved up to94.9232% for training set and 95.8666%for testing set.The classification performance of these two extracted featuresets is studied individually, and then they used together as one feature set. Theiroverall performance is investigated, the test results showed that the proposed methods give high classification rates for the audio. | ||
546 | |a AR | ||
546 | |a EN | ||
690 | |a Multimedia, Audio classification, Feature extraction, Short time energy, Local Roughness features, First Order Gradient Feature. | ||
690 | |a Education | ||
690 | |a L | ||
655 | 7 | |a article |2 local | |
786 | 0 | |n مجلة كلية التربية للبنات, Vol 28, Iss 5 (2018) | |
787 | 0 | |n http://jcoeduw.uobaghdad.edu.iq/index.php/journal/article/view/1207 | |
787 | 0 | |n https://doaj.org/toc/1680-8738 | |
787 | 0 | |n https://doaj.org/toc/2663-547X | |
856 | 4 | 1 | |u https://doaj.org/article/a0fb30904a8d4e39b69815f01d8e08b0 |z Connect to this object online. |