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Journal Article 자율주행을 위한 정적 장면 컨텍스트 변조 기반 차량 궤적 예측 네트워크
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Authors
최두섭, 민경욱
Issue Date
2023-08
Citation
한국자동차공학회 논문집, v.31, no.8, pp.597-606
ISSN
1225-6382
Publisher
한국자동차공학회
Language
Korean
Type
Journal Article
DOI
https://dx.doi.org/10.7467/KSAE.2023.31.8.597
Abstract
In this paper, we are proposing a vehicle trajectory forecasting network based on static scene context modulation. First, in modeling the distribution over future trajectories efficiently via variational auto-encoder frameworks, we suggest using a transformer-based trajectory encoder that models the interaction between neighboring vehicles. The proposed encoder is trained to remove interaction between irrelevant vehicles, and model key interaction more efficiently. Moreover, to increase the diversity of generated trajectories, we propose using latent variables during the trajectory generation process in modulating static scene context. Then, we can use large-scale, real-world datasets like nuScenes in evaluating performance. Experimental results showed that the proposed model generates plausible and diverse future trajectories with the techniques proposed in this paper. Furthermore, it outperformed the baseline models in terms of prediction accuracy.
KSP Keywords
Auto-Encoder(AE), Prediction accuracy, Proposed model, Real-world, Trajectory forecasting, Vehicle trajectory, generation process, large-scale, latent variables, scene context, trajectory generation
This work is distributed under the term of Creative Commons License (CCL)
(CC BY NC)
CC BY NC