论文标题
使用GUI应用程序实施的双向封盖复发性神经网络,通过Wi-Fi渠道数据获得人类对人类互动识别的前瞻性方法
A Prospective Approach for Human-to-Human Interaction Recognition from Wi-Fi Channel Data using Attention Bidirectional Gated Recurrent Neural Network with GUI Application Implementation
论文作者
论文摘要
由于最新的技术进步,人工智能算法,对智能城市的需求以及社会经济的转型,人类活动认可(HAR)的研究已获得了巨大的动力。但是,现有的基于计算机和传感器的HAR解决方案具有诸如隐私问题,记忆力和功耗等局限性,以及在佩戴传感器时,研究人员正在观察HAR Research的范式转变。作为响应,由于更粗糙的通道状态信息的可用性,基于WiFi的HAR正在越来越受欢迎。但是,现有的基于WiFi的HAR方法仅限于在相等持续时间内进行的独立和非连续活动分类。最近的研究通常使用两个WiFi信号的单个输入多重输出通信链路,使用两个WiFi路由器或两个Intel 5300 NICS作为发射器接收器。另一方面,我们的研究利用了WiFi路由器和Intel 5300 NIC之间的多个输入多重输出无线电链路,其时间序列Wi-Fi通道状态信息基于2.4 GHz通道频率,用于共同的人类与人类并发互动识别。提出的自我发项指导的双向门控复发性神经网络(注意 - bigru)深度学习模型可以将13个相互作用分类为单个主题对的最大基准精度为94%。这已经扩展了十对受试者,该对象对确保了88%的基准精度,并在相互作用交易区域周围有改进的分类。在本研究中,还使用PYQT5 Python模块开发了可执行的图形用户界面(GUI)软件,以在给定的时间持续时间内对执行的整体相互同时相互作用进行分类,保存和显示。 ...
Human Activity Recognition (HAR) research has gained significant momentum due to recent technological advancements, artificial intelligence algorithms, the need for smart cities, and socioeconomic transformation. However, existing computer vision and sensor-based HAR solutions have limitations such as privacy issues, memory and power consumption, and discomfort in wearing sensors for which researchers are observing a paradigm shift in HAR research. In response, WiFi-based HAR is gaining popularity due to the availability of more coarse-grained Channel State Information. However, existing WiFi-based HAR approaches are limited to classifying independent and non-concurrent human activities performed within equal time duration. Recent research commonly utilizes a Single Input Multiple Output communication link with a WiFi signal of 5 GHz channel frequency, using two WiFi routers or two Intel 5300 NICs as transmitter-receiver. Our study, on the other hand, utilizes a Multiple Input Multiple Output radio link between a WiFi router and an Intel 5300 NIC, with the time-series Wi-Fi channel state information based on 2.4 GHz channel frequency for mutual human-to-human concurrent interaction recognition. The proposed Self-Attention guided Bidirectional Gated Recurrent Neural Network (Attention-BiGRU) deep learning model can classify 13 mutual interactions with a maximum benchmark accuracy of 94% for a single subject-pair. This has been expanded for ten subject pairs, which secured a benchmark accuracy of 88% with improved classification around the interaction-transition region. An executable graphical user interface (GUI) software has also been developed in this study using the PyQt5 python module to classify, save, and display the overall mutual concurrent human interactions performed within a given time duration. ...