Abstract:
Vision-based localization in a prior map is of crucial importance for autonomous vehicles. Given a query image, the goal is to estimate the camera pose corresponding to t...Show MoreMetadata
Abstract:
Vision-based localization in a prior map is of crucial importance for autonomous vehicles. Given a query image, the goal is to estimate the camera pose corresponding to the prior map, and the key is the registration problem of camera images within the map. While autonomous vehicles drive on the road under occlusion (e.g., car, bus, truck) and changing environment appearance (e.g., illumination changes, seasonal variation), existing approaches rely heavily on dense point descriptors at the feature level to solve the registration problem, entangling features with appearance and occlusion. As a result, they often fail to estimate the correct poses. To address these issues, we propose a sparse semantic map-based monocular localization method, which solves 2D-3D registration via a well-designed deep neural network. Given a sparse semantic map that consists of simplified elements (e.g., pole lines, traffic sign midpoints) with multiple semantic labels, the camera pose is then estimated by learning the corresponding features between the 2D semantic elements from the image and the 3D elements from the sparse semantic map. The proposed sparse semantic map-based localization approach is robust against occlusion and long-term appearance changes in the environments. Extensive experimental results show that the proposed method outperforms the state-of-the-art approaches.
Published in: IEEE Robotics and Automation Letters ( Volume: 7, Issue: 4, October 2022)
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- IEEE Keywords
- Index Terms
- Neural Network ,
- Long-term Changes ,
- Light Signal ,
- Autonomous Vehicles ,
- Corresponding Points ,
- Changes In Appearance ,
- Illumination Changes ,
- Semantic Map ,
- Camera Pose ,
- Query Image ,
- 3D Element ,
- Sparse Map ,
- Priority Map ,
- Registration Problem ,
- Training Set ,
- Local Features ,
- Semantic Information ,
- Bounding Box ,
- Discriminative Features ,
- Pose Estimation ,
- Standard Element ,
- 2D Feature ,
- Feature Matching ,
- Simultaneous Localization And Mapping ,
- KITTI Dataset ,
- Reprojection Error ,
- Structure From Motion ,
- Detection Of Elements ,
- 3D Point
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Long-term Changes ,
- Light Signal ,
- Autonomous Vehicles ,
- Corresponding Points ,
- Changes In Appearance ,
- Illumination Changes ,
- Semantic Map ,
- Camera Pose ,
- Query Image ,
- 3D Element ,
- Sparse Map ,
- Priority Map ,
- Registration Problem ,
- Training Set ,
- Local Features ,
- Semantic Information ,
- Bounding Box ,
- Discriminative Features ,
- Pose Estimation ,
- Standard Element ,
- 2D Feature ,
- Feature Matching ,
- Simultaneous Localization And Mapping ,
- KITTI Dataset ,
- Reprojection Error ,
- Structure From Motion ,
- Detection Of Elements ,
- 3D Point
- Author Keywords