Abstract:
Camera-based online map construction focuses on learning map elements from surround-view images. Distinguished with previous methods that rely on complete observations, w...Show MoreMetadata
Abstract:
Camera-based online map construction focuses on learning map elements from surround-view images. Distinguished with previous methods that rely on complete observations, we explore a new map construction problem under incomplete observations where one or more perspectives of the surround-view are missing due to camera damage or occlusion. Incomplete observations lead to inferior performance and may even result in failure. Map construction based on incomplete observations faces two challenges: supplementing missing perspective features and reducing the complexity of high-dimensional feature learning. To address these issues, we propose a novel Panoramic Observation Prior Network (POP-Net). Firstly, based on the observation switch training mechanism, we propose a Panoramic Learning Module (PL-Module). It establishes a learnable panoramic feature space, facilitating the extraction of panoramic features from incomplete observations, thus supplementing missing perspective features. Secondly, based on the feature decomposition mechanism, we design a Panoramic Decomposition-Aggregation Operation (PDA-Operation), which decomposes high-dimensional panoramic features into low-dimensional local scene features. This allows limited local scene features to represent diverse panoramic features, alleviating computational and memory burdens of high-dimensional feature learning. Experimental results demonstrate that our method surpasses existing approaches under incomplete observation scenarios.
Published in: IEEE Robotics and Automation Letters ( Volume: 9, Issue: 7, July 2024)