2011 |
Syams, Khazaal W; Rahman, Abdul A W Characterizing autistic disorder based on principle component analysis Persidangan 2011, ISBN: 9781457714184, (dipetik oleh 6). Abstrak | Pautan | BibTeX | Tag: Autisme, Brain Function, Isyarat Otak, Classification Process, Data Dimensions, Penyakit, Electroencephalogram Signals, Elektroensefalografi, Frequency Domain Analysis, Elektronik Perindustrian, Pergerakan Motor, Motor Tasks, PCA, Analisis Komponen Utama, Signal Detection, Time Frequency Domain @ persidangan{KhazaalShams2011653, tajuk = {Characterizing autistic disorder based on principle component analysis}, pengarang = {W Khazaal Shams and A W Abdul Rahman}, url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-84855644760&doi=10.1109%2fISIEA.2011.6108797&rakan kongsi = 40&md5=c486566e2d7ff404d830704c0b404067}, doi = {10.1109/ISIEA.2011.6108797}, isbn = {9781457714184}, tahun = {2011}, tarikh = {2011-01-01}, jurnal = {2011 IEEE Symposium on Industrial Electronics and Applications, ISIEA 2011}, halaman = {653-657}, abstrak = {Autism is often diagnosed during preschool or toddled age. This diagnosis often depends on behavioral test. It is known that individuals with autism have abnormal brain signals different from typical persons yet this difference in signals is slight that it is often difficult to distinguish from the normal. Walau bagaimanapun, Elektroencephalogram (LIHAT) signals have a lot of information which reflect the behavior of brain functions which therefore captures the marker for autism, help to early diagnose and speed the treatment. This work investigates and compares classification process for autism in open-eyed tasks and motor movement by using Principle Component Analysis (PCA) for feature extracted in Time-frequency domain to reduce data dimension. The results show that the proposed method gives accuracy in the range 90-100% for autism and normal children in motor task and around 90% to detect normal in open-eyed tasks though difficult to detect autism in this task. © 2011 IEEE.}, nota = {dipetik oleh 6}, kata kunci = {Autisme, Brain Function, Isyarat Otak, Classification Process, Data Dimensions, Penyakit, Electroencephalogram Signals, Elektroensefalografi, Frequency Domain Analysis, Elektronik Perindustrian, Pergerakan Motor, Motor Tasks, PCA, Analisis Komponen Utama, Signal Detection, Time Frequency Domain}, pubstate = {diterbitkan}, tppubtype = {persidangan} } Autism is often diagnosed during preschool or toddled age. This diagnosis often depends on behavioral test. It is known that individuals with autism have abnormal brain signals different from typical persons yet this difference in signals is slight that it is often difficult to distinguish from the normal. Walau bagaimanapun, Elektroencephalogram (LIHAT) signals have a lot of information which reflect the behavior of brain functions which therefore captures the marker for autism, help to early diagnose and speed the treatment. This work investigates and compares classification process for autism in open-eyed tasks and motor movement by using Principle Component Analysis (PCA) for feature extracted in Time-frequency domain to reduce data dimension. The results show that the proposed method gives accuracy in the range 90-100% for autism and normal children in motor task and around 90% to detect normal in open-eyed tasks though difficult to detect autism in this task. © 2011 IEEE. |
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2011 |
Characterizing autistic disorder based on principle component analysis Persidangan 2011, ISBN: 9781457714184, (dipetik oleh 6). |