TY - CONF AV - none KW - Biomedical engineering; Brain computer interface; Computation theory; Computer hardware; Diagnosis; Electroencephalography; Electrophysiology; Fuzzy logic; Fuzzy sets; Fuzzy systems; Hardware; Interfaces (computer); Signal detection; Table lookup; Ubiquitous computing; Computer circuits; Reconfigurable hardware KW - Classification algorithm; Classification technique; Fuzzy classifiers; Fuzzy logic classifiers; Monitoring continuously; Partial seizure; Ubiquitous application; Wearable devices; Processing the signals KW - Biomedical signal processing SP - 411 ID - scholars4566 TI - Embedded fuzzy classifier for detection and classification of preseizure state using real EEG data N2 - A Classification technique using Fuzzy Logic Inference System to identify and predict the partial seizure from the epileptic EEG data along with preliminary brain conditions in different scenarios is presented in this paper. This detection system can produce warning signals for epileptic seizures. Electroencephalography (EEG) plays an important role, especially EEG based health diagnosis of brain disorder. However, the common clinical methods are insufficient when it comes to design an automated module to detect and predict partial seizure for epileptic patients. If the detection system is to be designed for ubiquitous applications, the system becomes even more complex if the patient is not confined to clinical environment when the device is monitoring continuously while the patient is involved in daily activities. Therefore, the work presented here includes embedded hardware system that works with classification algorithm on real EEG signals, in a ubiquitous setting. The performance of the system is shown under various conditions of daily activities. In order to make all this in a ubiquitous form factor, the algorithm for classification and detection of the pre-seizure conditions should be tremendously simple for processing the signal in a low cost ubiquitous microcontroller. This has been achieved in this work through the use of Fuzzy Classifiers based on the lookup table to empower system simplicity. The algorithm also utilizes certain statistical features from the EEG signal that are used as features to the classifier logic. While the clinical testing of the device is still awaited, various scenarios have been implemented using a custom-built hardware simulator based on empirical modeling of the real EEG signals. This shown various performance modes of the system and confirms the detection of pre-seizure state for a number of parameters related to the patients such as age, gender, etc� By using this type of fuzzy logic classifier, we were able to get over 90 accurate classifications for the partial seizure. © Springer International Publishing Switzerland 2014. N1 - cited By 4; Conference of 15th International Conference on Biomedical Engineering, ICBME 2013 ; Conference Date: 4 December 2013 Through 7 December 2013; Conference Code:117089 SN - 16800737 PB - Springer Verlag Y1 - 2014/// VL - 43 EP - 415 UR - https://www.scopus.com/inward/record.uri?eid=2-s2.0-84928238473&doi=10.1007%2f978-3-319-02913-9_105&partnerID=40&md5=0f3961f3fa0641a7d10be712ef4e98bd A1 - Qidwai, U. A1 - Malik, A.S. A1 - Shakir, M. ER -