Human Body Model based ID using Shape and Pose Parameters

2023 IEEE INTERNATIONAL JOINT CONFERENCE ON BIOMETRICS, IJCB(2023)

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摘要
We present a Human Body model based IDentification system (HMID) system that is jointly trained for shape, pose and biometric identification. HMID is based on the Human Mesh Recovery (HMR) network and we propose additional losses to improve and stabilize shape estimation and biometric identification while maintaining the pose and shape output. We show that when our HMID network is trained using additional shape and pose losses, it shows a significant improvement in biometric identification performance when compared to an identical model that does not use such losses. The HMID model uses raw images instead of silhouettes and is able to perform robust recognition on images collected at range and altitude as many anthropometric properties are reasonably invariant to clothing, view and range. We show results on the USF dataset as well as the BRIAR dataset which includes probes with both clothing and view changes. Our approach (using body model losses) shows a significant improvement in Rank20 accuracy and True Accuracy Rate on the BRIAR evaluation dataset.
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关键词
Human Model,Shape Parameter,Human Body Model,Pose Parameters,Additional Loss,Biometric Identification,Training Set,Validation Set,Body Shape,Input Sequence,Training Loss,Model-based Approach,3D Shape,Pose Estimation,Pitch Angle,Yaw Angle,Pitch Variation,3D Pose,3D Body,2D Keypoints,Biometric Characteristics,False Acceptance Rate,Chamfer Distance,Body Pose,Biometric Systems,Pixel Error,Viewing Angle,Temporal Integration,Image Quality
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