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Multi-Agent Long-Term 3D Human Pose Forecasting via Interaction-Aware Trajectory Conditioning | IEEE Conference Publication | IEEE Xplore

Multi-Agent Long-Term 3D Human Pose Forecasting via Interaction-Aware Trajectory Conditioning


Abstract:

Human pose forecasting garners attention for its diverse applications. However, challenges in modeling the multi-modal nature of human motion and intricate interactions a...Show More

Abstract:

Human pose forecasting garners attention for its diverse applications. However, challenges in modeling the multi-modal nature of human motion and intricate interactions among agents persist, particularly with longer timescales and more agents. In this paper, we propose an interaction-aware trajectory-conditioned long-term multiagent human pose forecasting model, utilizing a coarse-to-fine prediction approach: multi-modal global trajectories are initially forecasted, followed by respective local pose forecasts conditioned on each mode. In doing so, our Trajectory2Pose model introduces a graph-based agent-wise interaction module for a reciprocal forecast of local motion-conditioned global trajectory and trajectory-conditioned local pose. Our model effectively handles the multi-modality of human motion and the complexity of long-term multiagent interactions, improving performance in complex environments. Furthermore, we address the lack of long-term (6s+) multiagent (5 +) datasets by constructing a new dataset from real-world images and 2D annotations, enabling a comprehensive evaluation of our proposed model. State-of-the-art prediction performance on both complex and simpler datasets confirms the generalized effectiveness of our method. The code is available at https://github.com/Jaewoo97/T2P.
Date of Conference: 16-22 June 2024
Date Added to IEEE Xplore: 16 September 2024
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Conference Location: Seattle, WA, USA

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