E-3DPSM introduces an event-driven continuous pose state machine that aligns human motion with event dynamics, fuses latent state updates with direct predictions, and achieves up to 19% better MPJPE accuracy plus 2.7x temporal stability on benchmarks.
Human3.6m: Large scale datasets and pre- dictive methods for 3d human sensing in natural environ- ments.Pattern Analysis and Machine Intelligence (PAMI), 36(7):1325–39
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E-3DPSM: A State Machine for Event-Based Egocentric 3D Human Pose Estimation
E-3DPSM introduces an event-driven continuous pose state machine that aligns human motion with event dynamics, fuses latent state updates with direct predictions, and achieves up to 19% better MPJPE accuracy plus 2.7x temporal stability on benchmarks.