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The Prognosis of Epilepsy with Naive Bayes Classifier On FPGA Using HDL Coder

机译:使用HDL编码器对幼稚贝叶斯分类器的癫痫与癫痫患者的预后

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Epilepsy is one of the serious neurological disorder that affects about 50 million individuals globally at all ages and that can be detected from electroencephalogram (EEG) signals. This paper discusses the implementation of the Naive Bayes' classifier for the classification of epileptic events into seizure or non-seizure class. The design is carried out in Simulink environment where as it's implementation is performed on qkintex-7 FPGA hardware using HDL coder. The fixed point tool of the MATLAB is used for the conversion of floating point data into fixed point to make the hardware implementation possible. This classification is performed in real time with approximately 95 % to 100% classification accuracy.
机译:癫痫是严重的神经疾病之一,这些神经紊乱是在全年全球范围内的大约5000万个体,并且可以从脑电图(EEG)信号中检测到。 本文讨论了Naive Bayes'分类器的实施,用于癫痫事件分类为癫痫发作或非癫痫发作类。 设计在Simulink环境中执行,使用HDL编码器对Qkintex-7 FPGA硬件执行的实现。 MATLAB的固定点工具用于将浮点数据转换为固定点,以使硬件实现成为可能。 此分类实时执行,大约95%至100%的分类准确性。

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