Efficient and robust 2d-to-bev representation learning via geometry-guided kernel transformer
Learning Bird's Eye View (BEV) representation from surrounding-view cameras is of great
importance for autonomous driving. In this work, we propose a Geometry-guided Kernel
Transformer (GKT), a novel 2D-to-BEV representation learning mechanism. GKT leverages
the geometric priors to guide the transformer to focus on discriminative regions and unfolds
kernel features to generate BEV representation. For fast inference, we further introduce a
look-up table (LUT) indexing method to get rid of the camera's calibrated parameters at …
importance for autonomous driving. In this work, we propose a Geometry-guided Kernel
Transformer (GKT), a novel 2D-to-BEV representation learning mechanism. GKT leverages
the geometric priors to guide the transformer to focus on discriminative regions and unfolds
kernel features to generate BEV representation. For fast inference, we further introduce a
look-up table (LUT) indexing method to get rid of the camera's calibrated parameters at …
Learning Bird's Eye View (BEV) representation from surrounding-view cameras is of great importance for autonomous driving. In this work, we propose a Geometry-guided Kernel Transformer (GKT), a novel 2D-to-BEV representation learning mechanism. GKT leverages the geometric priors to guide the transformer to focus on discriminative regions and unfolds kernel features to generate BEV representation. For fast inference, we further introduce a look-up table (LUT) indexing method to get rid of the camera's calibrated parameters at runtime. GKT can run at FPS on 3090 GPU / FPS on 2080ti GPU and is robust to the camera deviation and the predefined BEV height. And GKT achieves the state-of-the-art real-time segmentation results, i.e., 38.0 mIoU (100m100m perception range at a 0.5m resolution) on the nuScenes val set. Given the efficiency, effectiveness, and robustness, GKT has great practical values in autopilot scenarios, especially for real-time running systems. Code and models will be available at \url{https://github.com/hustvl/GKT}.
arxiv.org
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