CVMar 14, 2025

EMoTive: Event-guided Trajectory Modeling for 3D Motion Estimation

arXiv:2503.11371v23 citationsh-index: 24
Originality Incremental advance
AI Analysis

This work addresses 3D motion estimation for computer vision applications, offering a novel event-based approach that is incremental in improving motion modeling.

The paper tackles the challenge of 3D motion estimation by addressing depth-induced spatio-temporal inconsistencies, proposing EMoTive, an event-based framework that models trajectories with event-guided non-uniform curves, achieving effective results validated on synthetic and real-world benchmarks.

Visual 3D motion estimation aims to infer the motion of 2D pixels in 3D space based on visual cues. The key challenge arises from depth variation induced spatio-temporal motion inconsistencies, disrupting the assumptions of local spatial or temporal motion smoothness in previous motion estimation frameworks. In contrast, event cameras offer new possibilities for 3D motion estimation through continuous adaptive pixel-level responses to scene changes. This paper presents EMoTive, a novel event-based framework that models spatio-temporal trajectories via event-guided non-uniform parametric curves, effectively characterizing locally heterogeneous spatio-temporal motion. Specifically, we first introduce Event Kymograph - an event projection method that leverages a continuous temporal projection kernel and decouples spatial observations to encode fine-grained temporal evolution explicitly. For motion representation, we introduce a density-aware adaptation mechanism to fuse spatial and temporal features under event guidance, coupled with a non-uniform rational curve parameterization framework to adaptively model heterogeneous trajectories. The final 3D motion estimation is achieved through multi-temporal sampling of parametric trajectories, yielding optical flow and depth motion fields. To facilitate evaluation, we introduce CarlaEvent3D, a multi-dynamic synthetic dataset for comprehensive validation. Extensive experiments on both this dataset and a real-world benchmark demonstrate the effectiveness of the proposed method.

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