Library Automation and Digital Archive
LONTAR
Fakultas Ilmu Komputer
Universitas Indonesia

Pencarian Sederhana

Find Similar Add to Favorite

Call Number SEM-372
Collection Type Indeks Artikel prosiding/Sem
Title A Classification Method using Deep Belief Network for Phonocardiogram Signal Classification. Hal 283-289
Author Moh. Fathurrahman, Ito Wasito, Fakhirah Dianah Ghaisani, Ratna Mufidah;
Publisher ICACSIS 2017 International Conference on Advanced Computer Science and Information System
Subject Phonocardiogram Signal; Deep Belief Network; Hearth Sound; Deep Learning; Feature Extraction; Segmentation.
Location
Lokasi : Perpustakaan Fakultas Ilmu Komputer
Nomor Panggil ID Koleksi Status
SEM-372 TERSEDIA
Tidak ada review pada koleksi ini: 47296
Abstract- Phonocardiogram (PGC) signal is a graphical representation of the hearth sounds that can be used to diagnose a hearth disease. Diagnosing heart disease based on PGC signal is component including S1 and S2. Nevertheless, the interpretation of PGC signal is depend on the cardiologist's expertise. Therefore automated PGC signal classification is required in order to help the cardiologist diagnosing and monitoring heart disease. The classification of PGC signal is influenced by the segmentation and the feature extraction process. The segmentation process aims to detect the location of hearth sound components including S1 and S2 in PGC signal. However is difficult to find those component in a noisy PGC signal. The feature extraction process aims to extract relevant features that lie an segmented PGC signal. This process is required because the segmented PGC signal has high dimensionality and redundant information. This study proposes Shannon Energy Envelope for segmenting PCG signal and Deep Belief Network (DBN) for feature extraction method. The results show that the proposed method outperforms shallow models in existing datasets.