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ASME Press Select Proceedings
Intelligent Engineering Systems through Artificial Neural Networks Volume 18
Editor
ISBN-10:
0791802823
ISBN:
9780791802823
No. of Pages:
700
Publisher:
ASME Press
Publication date:
2008
eBook Chapter
38 Neural Network Approach to Classify Automatically the Placental Tissues Development: MLP and RBF
By
Mohammad Ayache
,
Mohammad Ayache
Islamic University of Lebanon
, Biomedical Department, Khaldeh Highway, 30014 Khaldeh
, Lebanon
; [email protected].
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Mohamad Khalil
,
Mohamad Khalil
IUL University
, Biomedical Department, Authoroute Khaldeh, 30014 Khaldeh
, Lebanon
; [email protected].
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Francois Tranquart
Francois Tranquart
University of Francois Rabelais Tours
, INSERM U619, Ultrasound Department, CHRU Tours, 37044 Tours
, France
; [email protected].
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Page Count:
7
-
Published:2008
Citation
Ayache, M, Khalil, M, & Tranquart, F. "Neural Network Approach to Classify Automatically the Placental Tissues Development: MLP and RBF." Intelligent Engineering Systems through Artificial Neural Networks Volume 18. Ed. Dagli, CH. ASME Press, 2008.
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This paper proposes an efficient method for the classification of placental development with normal tissues. The proposed method consists of selection of tissues, feature extraction using discrete wavelet transform and classification of the tissue by the multi layer perceptron MLP and radial basis function RBF. The method is tested for placental images acquired by ultrasound techniques; resulting in 95% success rate. The proposed method showed a good classification rate. The method will be useful for detection of the anomalies those concerning premature birth and intra-uterine growth retardation.
Abstract
I. Introduction
II. Problem Statement
III. Discrete wavelet transform
IV. Artificial neural networks
V. Results and discussions
VI. Conclusion
VII. References
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