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Multi-modal Knowledge Distillation-based Human Trajectory Forecasting
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- Title
- Multi-modal Knowledge Distillation-based Human Trajectory Forecasting
- Issued Date
- 2025-06-15
- Citation
- Conference on Computer Vision and Pattern Recognition, pp.24222 - 24233
- Type
- Conference Paper
- ISBN
- 9798331543648
- ISSN
- 2575-7075
- Abstract
-
Pedestrian trajectory forecasting is crucial in various applications such as autonomous driving and mobile robot navigation. In such applications, camera-based perception enables the extraction of additional modalities (human pose, text) to enhance prediction accuracy. Indeed, we find that textual descriptions play a crucial role in integrating additional modalities into a unified understanding. However, online extraction of text requires the use of VLM, which may not be feasible for resource-constrained systems. To address this challenge, we propose a multimodal knowledge distillation framework: a student model with limited modality is distilled from a teacher model trained with full range of modalities. The comprehensive knowledge of a teacher model trained with trajectory, human pose, and text is distilled into a student model using only trajectory or human pose as a sole supplement. In doing so, we separately distill the core locomotion insights from intra-agent multi-modality and inter-agent interaction. Our generalizable framework is validated with two state-of-the-art models across three datasets on both ego-view (JRDB, SIT) and BEV-view (ETH/UCY) setups, utilizing both annotated and VLM-generated text captions. Distilled student models show consistent improvement in all prediction metrics for both full and instantaneous observations, improving up to ∼13%. The code is available at github.com/Jaewoo97/KDTF.
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- Publisher
- IEEE Computer Society, Computer Vision Foundation
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Related Researcher
- Park, Daehee박대희
-
Department of Electrical Engineering and Computer Science
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