MT-Net Submission to the Waymo 3D Detection Leaderboard
About
In this technical report, we introduce our submission to the Waymo 3D Detection leaderboard. Our network is based on the Centerpoint architecture, but with significant improvements. We design a 2D backbone to utilize multi-scale features for better detecting objects with various sizes, together with an optimal transport-based target assignment strategy, which dynamically assigns richer supervision signals to the detection candidates. We also apply test-time augmentation and model-ensemble for further improvements. Our submission currently ranks 4th place with 78.45 mAPH on the Waymo 3D Detection leaderboard.
Shaoxiang Chen, Zequn Jie, Xiaolin Wei, Lin Ma• 2022
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D Object Detection | Waymo Open Dataset (test) | Vehicle L2 mAPH80.79 | 105 |
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