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A Hybrid Approach for Human Activity Recognition with Support Vector Machine and 1D Convolutional Neural Network

机译:支持向量机和1D卷积神经网络的人类活动识别混合方法

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The Human Activity Recognition (HAR) is a pattern recognition task that learns to identify human physical activities recorded by different sensor modalities. The application areas include human behavior analysis, ambient assistive living, surveillance-based security, gesture recognition, and context-aware computing. The HAR remains challenging as the sensor data is noisy in nature and the activity signal varies from person to person. To recognize different types of activity with a single classifier is often error-prone. To mitigate this problem, we introduced an adaptive human activity recognition model. We present a two-stage learning process to recognize human activity recorded using a waist-mounted accelerometer and gyroscope sensor. In the first step, we classify activity into static and moving, using a Random Forest (RF) binary classifier. In the second step, we adopt a Support Vector Machine (SVM) to identify individual static activity and 1D Convolutional Neural Network (CNN)-based deep learning model for individual moving activity recognition. This makes our approach more robust and adaptive. The static activity has less frequency variation in features compared to dynamic activity waveforms for CNN to learn. On the other hand, SVM demonstrated superior performance to recognize static activities but performs poorly on moving, complex, and uncertain activity recognition. Our method is similarly robust to different motion intensity and can also capture the variation of the same activity effectively. In our hybrid model, the CNN captures local dependencies of activity signals as well as preserves the scale invariance. We achieved 97.71% overall accuracy on six activity classes of widely accepted benchmark UCI-HAR dataset.
机译:人类活动识别(HAR)是一种模式识别任务,用于学习识别不同传感器方式记录的人类体育活动。应用领域包括人类行为分析,环境辅助生活,基于监视的安全性,手势识别和背景知识计算。随着传感器数据在自然界中嘈杂的情况下,Har保持具有挑战性,活动信号因人的人而异。要识别不同类型的活动,单个分类器通常会出现错误。为了减轻这个问题,我们介绍了一个自适应人类活动识别模型。我们提出了两阶段学习过程,以识别使用腰部安装的加速度计和陀螺仪传感器记录的人类活动。在第一步中,我们使用随机林(RF)二进制分类器将活动分类为静态和移动。在第二步中,我们采用支持向量机(SVM)来识别单独的静态活动和1D卷积神经网络(CNN),用于为个人移动活动识别进行基础的深度学习模型。这使我们的方法更加强大和自适应。与CNN用于学习的动态活动波形相比,静态活动具有较少的频率变化。另一方面,SVM展示了卓越的性能,以识别静态活动,但在移动,复杂和不确定的活动识别方面表现不佳。我们的方法对不同的运动强度同样鲁棒,并且还可以有效地捕获相同活动的变化。在我们的混合模型中,CNN捕获了活动信号的本地依赖关系,并保留了尺度不变性。我们在广泛接受的基准UCI-HAR数据集中实现了97.71%的总体准确性。

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