IMU Sensing–Based Hopfield Neuromorphic Computing for Human Activity Recognition

Zheqi Yu, A. Zahid, Shuja Ansari, H. Abbas, H. Heidari, M. Imran, Q. Abbasi
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引用次数: 1

Abstract

Aiming at the self-association feature of the Hopfield neural network, we can reduce the need for extensive sensor training samples during human behavior recognition. For a training algorithm to obtain a general activity feature template with only one time data preprocessing, this work proposes a data preprocessing framework that is suitable for neuromorphic computing. Based on the preprocessing method of the construction matrix and feature extraction, we achieved simplification and improvement in the classification of output of the Hopfield neuromorphic algorithm. We assigned different samples to neurons by constructing a feature matrix, which changed the weights of different categories to classify sensor data. Meanwhile, the preprocessing realizes the sensor data fusion process, which helps improve the classification accuracy and avoids falling into the local optimal value caused by single sensor data. Experimental results show that the framework has high classification accuracy with necessary robustness. Using the proposed method, the classification and recognition accuracy of the Hopfield neuromorphic algorithm on the three classes of human activities is 96.3%. Compared with traditional machine learning algorithms, the proposed framework only requires learning samples once to get the feature matrix for human activities, complementing the limited sample databases while improving the classification accuracy.
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基于IMU感知的Hopfield神经形态计算用于人体活动识别
针对Hopfield神经网络的自关联特征,我们可以减少在人类行为识别过程中对大量传感器训练样本的需求。为了使训练算法仅通过一次数据预处理即可获得通用的活动特征模板,本文提出了一种适用于神经形态计算的数据预处理框架。基于构造矩阵的预处理方法和特征提取,我们对Hopfield神经形态算法的输出分类进行了简化和改进。我们通过构造特征矩阵将不同的样本分配给神经元,通过改变不同类别的权重来对传感器数据进行分类。同时,预处理实现了传感器数据的融合过程,有助于提高分类精度,避免因单个传感器数据而陷入局部最优值。实验结果表明,该框架具有较高的分类精度和必要的鲁棒性。采用该方法,Hopfield神经形态算法对三类人类活动的分类识别准确率为96.3%。与传统的机器学习算法相比,本文提出的框架只需要学习一次样本就可以得到人类活动的特征矩阵,在提高分类精度的同时补充了有限的样本数据库。
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