แนวคิดหลัก
The author proposes a novel approach to event-based motion segmentation in complex outdoor scenes, emphasizing the importance of ego-motion compensation and temporal attention modules to enhance performance significantly.
บทคัดย่อ
The content discusses a novel method for event-based motion segmentation in large-scale outdoor environments. It introduces a divide-and-conquer pipeline that incorporates ego-motion compensated events and optical flow into a segmentation module with temporal attention. The proposed method achieves state-of-the-art results on benchmark datasets, showcasing significant improvements over existing approaches.
Key points include:
- Introduction of a divide-and-conquer pipeline for event-based motion segmentation.
- Utilization of ego-motion compensation and optical flow to enhance segmentation accuracy.
- Incorporation of a temporal attention module for consistent motion masks.
- Establishment of new benchmarks like DSEC-MOTS dataset for evaluation.
- Comparative analysis with existing methods on EV-IMO benchmark showing substantial performance gains.
- Ablation study highlighting the contributions of each step in the proposed pipeline.
Overall, the content presents an innovative solution to address challenges in event-based motion segmentation, demonstrating superior performance across different datasets and benchmarks.
สถิติ
"We achieve improvements of 2.19 moving object IoU (2.22 mIoU) and 4.52 point IoU respectively."
"Improvement of 12.91 moving object IoU."