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An 8 Channel Patient Specific Neuromorphic Processor for the Early Screening of Autistic Children through Emotion Detection

机译:通过情感检测早期筛查自闭症儿童的8通道患者特定神经形态处理器

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Autism Spectrum Disorder (ASD) is a neurodevelopment disorder that affects children's development and can lead to handicap life if remain untreated. Scalp Electroencephalography (EEG) data can be used as a biomarker to characterize the human emotions on the valence-arousal scale. This work presents a machine learning patient-specific emotion detection (PSED) classification processor based on an eight-channel EEG signal. The proposed PSED classification processor integrates a hardware-efficient feature extraction engine and patient-specific support vector machine (SVM) classifier to discriminate the emotions in real-time. To utilize minimal hardware resources a hardware realizable feature set comprising of power spectral density (PSD), an absolute difference of inter-hemispheric power asymmetry (IHPD), and the scaled inter-hemispheric power asymmetry ratio (SIHPR) of eight electrode pairs are evaluated. To avoid high overhead of area and power consumption for an integer divider for SIHPR; simple LUT based divider is proposed that calculates the approximated value of SIHPR with a minimal overhead of 64 Bytes. The classification is performed using a Linear SVM and resulted in an accuracy of 63% and 60% for valence and arousal, respectively, based on the database for emotion analysis using physiological signals (DEAP). The PSED processor is synthesized using a 65nm CMOS technology with an overall energy efficiency of 10uJ/classification.
机译:自闭症谱系障碍(ASD)是一种神经发育障碍,会影响儿童的发育,如果不及时治疗,会导致残障生活。头皮脑电图(EEG)数据可以用作生物标记物,以价位量表来表征人类的情绪。这项工作提出了一种基于八通道EEG信号的机器学习患者特定情绪检测(PSED)分类处理器。提出的PSED分类处理器集成了硬件效率高的特征提取引擎和特定于患者的支持向量机(SVM)分类器,以实时区分情绪。为了利用最少的硬件资源,对包括八个功率对的功率谱密度(PSD),半球间功率不对称性的绝对差(IHPD)和缩放后的半球间功率不对称率(SIHPR)组成的硬件可实现特征集进行了评估。 。为避免SIHPR的整数除法器占用面积和功耗的高开销;提出了一种基于LUT的简单除法器,该除法器以64字节的最小开销来计算SIHPR的近似值。基于使用生理信号进行情感分析的数据库(DEAP),使用线性SVM进行分类,其价数和唤醒的准确度分别为63%和60%。 PSED处理器采用65nm CMOS技术合成,总能效为10uJ /分类。

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