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E-Jacket: Posture Detection with Loose-Fitting Garment using a Novel Strain Sensor

Qi Lin, Shuhua Peng, Yuezhong Wu, Jun Liu, Wen Hu, Mahbub Hassan, Aruna Seneviratne, Chunhui Wang

202027 citationsDOIOpen Access PDF

Abstract

We address the problem of human posture detection with casual loose-fitting smart garments by fabricating a new type of highly sensitive, stretchable, optical transparent and low-cost strain sensor enabled by uniquely designed microcracks within a hybrid conductive thin film. In terms of sensitivity and stretchability, the developed sensor outperformed most of the works reported in recent literature, and has a gauge factor of 103 at the high strain of 58%. By attaching these sensors to an off-the-self casual jacket, we implement E-Jacket, a smart loose-fitting sensing garment prototype. To detect postures from sensor data, we implement a conventional deep learning model, CNN-LSTM, capable of overcoming the noise induced by the loose-fitting of the sensors to the human skin. To evaluate E-Jacket, we conducted three case studies in experimental environments: recognition of daily activities, recognition of stationary postures with random hand movements, and slouch detection. Our evaluation results demonstrate the feasibility of the proposed E-Jacket smart garment system for different posture recognition applications.

Topics & Concepts

Gauge factorStrain gaugeComputer scienceArtificial intelligenceNoise (video)Electrical conductorSensitivity (control systems)ClothingWeavingComputer visionEngineeringStructural engineeringElectronic engineeringMechanical engineeringElectrical engineeringFabricationArchaeologyImage (mathematics)HistoryAlternative medicinePathologyMedicineAdvanced Sensor and Energy Harvesting MaterialsTactile and Sensory InteractionsHand Gesture Recognition Systems
E-Jacket: Posture Detection with Loose-Fitting Garment using a Novel Strain Sensor | Litcius