Litcius/Paper detail

Human Parsing with Joint Learning for Dynamic mmWave Radar Point Cloud

Shuai Wang, Dongjiang Cao, Ruofeng Liu, Wenchao Jiang, Tianshun Yao, Chris Xiaoxuan Lu

2023Proceedings of the ACM on Interactive Mobile Wearable and Ubiquitous Technologies30 citationsDOIOpen Access PDF

Abstract

Human sensing and understanding is a key requirement for many intelligent systems, such as smart monitoring, human-computer interaction, and activity analysis, etc. In this paper, we present mmParse, the first human parsing design for dynamic point cloud from commercial millimeter-wave radar devices. mmParse proposes an end-to-end neural network design that addresses the inherent challenges in parsing mmWave point cloud (e.g., sparsity and specular reflection). First, we design a novel multi-task learning approach, in which an auxiliary task can guide the network to understand human structural features. Secondly, we introduce a multi-task feature fusion method that incorporates both intra-task and inter-task attention to aggregate spatio-temporal features of the subject from a global view. Through extensive experiments in both indoor and outdoor environments, we demonstrate that our proposed system is able to achieve ~ 92% accuracy and ~ 84% IoU accuracy. We also show that the predicted semantic labels can increase the performance of two downstream tasks (pose estimation and action recognition) by ~ 18% and ~ 6% respectively.

Topics & Concepts

Computer scienceParsingPoint cloudTask (project management)Key (lock)Convolutional neural networkRadarArtificial intelligenceCloud computingFeature (linguistics)Real-time computingMachine learningHuman–computer interactionSystems engineeringTelecommunicationsEngineeringPhilosophyOperating systemComputer securityLinguisticsHand Gesture Recognition SystemsIndoor and Outdoor Localization TechnologiesGait Recognition and Analysis