Publication | Open Access
DeepGait: A Learning Deep Convolutional Representation for View-Invariant Gait Recognition Using Joint Bayesian
95
Citations
25
References
2017
Year
Gait AnalysisConvolutional Neural NetworkEngineeringMachine LearningHuman Pose Estimation3D Pose EstimationBiometricsGait Flow ImageKinesiologyData SciencePattern RecognitionHuman GaitHuman MotionVideo TransformerHealth SciencesMachine VisionComputer ScienceDeep LearningComputer VisionHuman MovementGait Energy Image
Human gait, as a soft biometric, helps to recognize people through their walking. To further improve the recognition performance, we propose a novel video sensor-based gait representation, DeepGait, using deep convolutional features and introduce Joint Bayesian to model view variance. DeepGait is generated by using a pre-trained “very deep” network “D-Net” (VGG-D) without any fine-tuning. For non-view setting, DeepGait outperforms hand-crafted representations (e.g., Gait Energy Image, Frequency-Domain Feature and Gait Flow Image, etc.). Furthermore, for cross-view setting, 256-dimensional DeepGait after PCA significantly outperforms the state-of-the-art methods on the OU-ISR large population (OULP) dataset. The OULP dataset, which includes 4007 subjects, makes our result reliable in a statistically reliable way.
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