Litcius/Paper detail

EdgeActNet: Edge Intelligence-Enabled Human Activity Recognition Using Radar Point Cloud

Fei Luo, Salabat Khan, Anna Li, Yandao Huang, Kaishun Wu

2023IEEE Transactions on Mobile Computing13 citationsDOI

Abstract

Human activity recognition (HAR) has become a research hotspot because of its wide range of application prospects. It has higher requirements for real-time and powerefficient processing. However, a large amount of data transfer between sensors and servers, and computation-intensive recognition models hinder the implementation of real-time HAR systems. Recently, edge computing has been proposed to address this challenge by moving computational and data storage resources to the sensors, rather than depending on a centralized server/cloud. In this paper, we investigated binary neural networks for edge intelligence-enabled HAR using radar point cloud. Point cloud can provide 3-dimensional spatial information, which is helpful to improve recognition accuracy. Time-series point cloud also brings challenges, such as larger data volume, 4-dimensional data processing, and more intensive computation. To tackle these challenges, we adopt the 2-dimensional histograms for point cloud multi-view processing and propose the EdgeActNet, a binary neural network for point cloud-based human activity classification on edge devices. In the evaluation, the EdgeActNet achieved the best results with average accuracies of 97.63% on the MMActivity dataset and 95.03% on the point cloud samples of the DGUHA dataset respectively; and saved 16.9× memory consumption and 11.5× inference time compared to its full-precision version. Our work also is the first to apply 2D histogram-based multi-view representation and BNNs for timeseries point cloud classification.

Topics & Concepts

Computer scienceCloud computingEdge computingArtificial intelligencePoint cloudServerEdge deviceActivity recognitionHistogramData miningMachine learningEnhanced Data Rates for GSM EvolutionComputer networkOperating systemImage (mathematics)Context-Aware Activity Recognition SystemsHuman Pose and Action RecognitionGait Recognition and Analysis