Fuzzy neural network based activity estimation for recording human daily activity

M. Nii, Kazunobu Takahama, T. Iwamoto, Takafumi Matsuda, Yuki Matsumoto, K. Maenaka
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Abstract

We proposed a standard three-layer feedforward neural network based human activity estimation method. The purpose of the proposed method is to record the subject activity automatically. Here, the recorded activity includes not only actual accelerometer data but also rough description of his/her activity. In order to train the neural networks, we needed to prepare numerical datasets of accelerometer which are measured for every subject person. In this paper, we propose a fuzzy neural network based method for recording the subject activity. The proposed fuzzy neural network can handle both real and fuzzy numbers as inputs and outputs. Since the proposed method can handle fuzzy numbers, the training dataset can contain some general rules, for example, “If x and y axis accelerometer outputs are almost zero and z axis accelerometer output is equal to acceleration of gravity then the subject person is standing.”
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基于模糊神经网络的人类日常活动估计
提出了一种标准的基于三层前馈神经网络的人类活动估计方法。提出的方法的目的是自动记录受试者的活动。在这里,记录的活动不仅包括实际的加速度计数据,还包括他/她的活动的粗略描述。为了训练神经网络,我们需要准备加速度计的数值数据集,这些数据集是针对每个被试人测量的。本文提出了一种基于模糊神经网络的受试者活动记录方法。所提出的模糊神经网络可以同时处理实数和模糊数作为输入和输出。由于所提出的方法可以处理模糊数字,训练数据集可以包含一些一般规则,例如,“如果x轴和y轴加速度计的输出几乎为零,z轴加速度计的输出等于重力加速度,那么受试者是站立的。”
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