SpectrumNet: Spectrum-Based Trajectory Encode Neural Network for Pedestrian Trajectory Prediction

Shaohua Liu, Yinglong Zhu, Pengfei Yao,Tianlu Mao,Zhaoqi Wang

ICASSP 2024 - 2024 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)(2024)

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摘要
Extracting motion pattern implied in the history trajectory is important for the pedestrian trajectory prediction task. The motion pattern determines how a pedestrian moves, including but not limited to reaction of interaction, tendency of speed and direction change. Although the motion pattern is a comprehensive concept and can’t be described concretely, it is clear that it contains both long-term and short-term factors. Inspired by this, we introduce SpectrumNet which enables more effective encoding of historical motion patterns for trajectory prediction. Different from existing methods, which consider the history trajectory as a time sequence of position, SpectrumNet represents it in the frequency space by applying Fourier Transform (FT) to decompose the historical information on different time scales. SpectrumNet consists of two sub-networks, the Multi-Frequency Combination (MFC) encoder, which models the historical information by combining multiple frequency feature in the spectrum; and the Frequency Interaction (FI) encoder, which captures the interaction between pedestrians in the frequency domain. To validate the effect of SpectrumNet, we build a CVAE-based prediction system to predict stochastic future trajectory. Experiments conducted on ETH-UCY dataset show that our prediction system with SpectrumNet out-performs the previous state-of-the-art model and achieves a new record on ADE metric.
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关键词
Pedestrian Trajectory Prediction,Discrete Cosine Transform,Pedestrian Interaction
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