ROLGOct 21, 2023

Equivariant Map and Agent Geometry for Autonomous Driving Motion Prediction

arXiv:2310.13922v27 citationsh-index: 3
Originality Highly original
AI Analysis

This addresses the need for robust and accurate motion prediction in autonomous driving systems, representing a novel approach rather than an incremental improvement.

The paper tackles the problem of ensuring motion prediction models in autonomous driving are equivariant under Euclidean transformations and invariant in agent interactions, achieving high prediction accuracy with a lightweight design.

In autonomous driving, deep learning enabled motion prediction is a popular topic. A critical gap in traditional motion prediction methodologies lies in ensuring equivariance under Euclidean geometric transformations and maintaining invariant interaction relationships. This research introduces a groundbreaking solution by employing EqMotion, a theoretically geometric equivariant and interaction invariant motion prediction model for particles and humans, plus integrating agent-equivariant high-definition (HD) map features for context aware motion prediction in autonomous driving. The use of EqMotion as backbone marks a significant departure from existing methods by rigorously ensuring motion equivariance and interaction invariance. Equivariance here implies that an output motion must be equally transformed under the same Euclidean transformation as an input motion, while interaction invariance preserves the manner in which agents interact despite transformations. These properties make the network robust to arbitrary Euclidean transformations and contribute to more accurate prediction. In addition, we introduce an equivariant method to process the HD map to enrich the spatial understanding of the network while preserving the overall network equivariance property. By applying these technologies, our model is able to achieve high prediction accuracy while maintain a lightweight design and efficient data utilization.

Foundations

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