TileTracker: Tracking Based Vector HD Mapping using Top-Down Road Images
- URL: http://arxiv.org/abs/2411.02588v1
- Date: Mon, 04 Nov 2024 20:29:30 GMT
- Title: TileTracker: Tracking Based Vector HD Mapping using Top-Down Road Images
- Authors: Mohammad Mahdavian, Mo Chen, Yu Zhang,
- Abstract summary: We propose a tracking-based HD mapping algorithm for top-down road images, referred to as tile images.
Our approach shows that tile images can also be effectively utilized, offering valuable contributions to this research area as it can be start of a new path in HD mapping algorithms.
- Score: 11.6514738792192
- License:
- Abstract: In this paper, we propose a tracking-based HD mapping algorithm for top-down road images, referred to as tile images. While HD maps traditionally rely on perspective camera images, our approach shows that tile images can also be effectively utilized, offering valuable contributions to this research area as it can be start of a new path in HD mapping algorithms. We modified the BEVFormer layers to generate BEV masks from tile images, which are then used by the model to generate divider and boundary lines. Our model was tested with both color and intensity images, and we present quantitative and qualitative results to demonstrate its performance.
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