Non-linear features and feature selection algorithms for speech based prediction of body mass index (BMI)/

The current research explores the topic on prediction of BMI status (normal, overweight and obese) using speech signal (/ah/ sound). In this research work, the speech samples were collected only from volunteers (age varies from Twenty years to Forty years) and wavelet packet based nonlinear entropy...

पूर्ण विवरण

में बचाया:
ग्रंथसूची विवरण
मुख्य लेखक: Berkai, Chawki
निगमित लेखक: Universiti Malaysia Perlis
स्वरूप: थीसिस सॉफ्टवेयर ई-पुस्तक
भाषा:English
प्रकाशित: Perlis, Malaysia School of Mechatronic Engineering 2017
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विवरण
सारांश:The current research explores the topic on prediction of BMI status (normal, overweight and obese) using speech signal (/ah/ sound). In this research work, the speech samples were collected only from volunteers (age varies from Twenty years to Forty years) and wavelet packet based nonlinear entropy features (totally 372 features) were extracted. To test the efficiency of the proposed feature set, the combination of standard features was used, and several experiments were conducted. The results indicated that the proposed features were more efficient in predicting BMI status. Two feature selection algorithms namely, the combination of sequential feature selection algorithms (CSFS) (Backward, Forward, Individual, and Plus-l-takeaway-r) and Hybrid PSOGSA optimization algorithm (HPSOGSA) with the combination of Particle Swarm Optimization (PSO) and Gravitational Search Algorithm (GSA) were proposed in this research work To reduce the feature size dimensionality, the cost of classification/learning algorithm and to identify the most useful feature subset. The limitation of proposed method is that a small database was used and the number of females is less.
भौतिक वर्णन:1 CD-ROM 12 cm
ग्रन्थसूची:Includes bibliographical references.