CCF: Cross Correcting Framework for Pedestrian Trajectory Prediction
Pranav Singh Chib, Pravendra Singh

TL;DR
The paper introduces CCF, a novel framework using dual transformer-based models with mutual correction to improve pedestrian trajectory prediction accuracy in multi-agent scenarios.
Contribution
It proposes a cross-correction learning framework with two shared-architecture models that mutually refine their trajectory representations, enhancing prediction performance.
Findings
Outperforms existing methods on ETH-UCY and SDD datasets
Demonstrates the effectiveness of mutual correction in trajectory modeling
Shows improved accuracy through ablation studies
Abstract
Accurately predicting future pedestrian trajectories is crucial across various domains. Due to the uncertainty in future pedestrian trajectories, it is important to learn complex spatio-temporal representations in multi-agent scenarios. To address this, we propose a novel Cross-Correction Framework (CCF) to learn spatio-temporal representations of pedestrian trajectories better. Our framework consists of two trajectory prediction models, known as subnets, which share the same architecture and are trained with both cross-correction loss and trajectory prediction loss. Cross-correction leverages the learning from both subnets and enables them to refine their underlying representations of trajectories through a mutual correction mechanism. Specifically, we use the cross-correction loss to learn how to correct each other through an inter-subnet interaction. To induce diverse learning among…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Traffic Prediction and Management Techniques · Traffic and Road Safety
