Wireless-based activity sensing has gained significant attention due to its wide range of applications. We investigate radio-based multi-class classification of human activities using massive multiple-input multiple-output (MIMO) channel measurements in line-of-sight and non line-of-sight scenarios. We propose a tensor decomposition-based algorithm to extract features by exploiting the complex correlation characteristics across time, frequency, and space from channel tensors formed from the measurements, followed by a neural network that learns the relationship between the input features and output target labels. Through evaluations of real measurement data, it is demonstrated that the classification accuracy using a massive MIMO array achieves significantly better results compared to the state-of-the-art even for a smaller experimental data set.
翻译:基于无线的活动感测因其应用范围广泛而得到极大关注。我们使用大量多投入多产出(MIMO)的光线和非光线情景中的多输出(MIMO)频道测量方法,对基于无线电的人类活动进行多级分类调查。我们建议采用基于压力的分解算法,通过利用从测量中形成的不同时间、频率和空间的复杂关联特征来提取特征,然后利用一个神经网络来了解输入特征与输出目标标签之间的关系。通过对实际测量数据的评价,我们证明使用大型MIMO阵列的分类准确性比在小型实验数据集方面最先进的还要好得多。