TReR: A Lightweight Transformer Re-Ranking Approach for 3D LiDAR Place Recognition

CoRR(2023)

引用 0|浏览1
暂无评分
摘要
Autonomous driving systems often require reliable loop closure detection to guarantee reduced localization drift. Recently, 3D LiDAR-based localization methods have used retrieval-based place recognition to find revisited places efficiently. However, when deployed in challenging real-world scenarios, the place recognition models become more complex, which comes at the cost of high computational demand. This work tackles this problem from an information-retrieval perspective, adopting a first-retrieve-then-re-ranking paradigm, where an initial loop candidate ranking, generated from a 3D place recognition model, is re-ordered by a proposed lightweight transformer-based re-ranking approach (TReR). The proposed approach relies on global descriptors only, being agnostic to the place recognition model. The experimental evaluation, conducted on the KITTI Odometry dataset, where we compared TReR with s.o.t.a. re-ranking approaches such as alphaQE and SGV, indicate the robustness and efficiency when compared to alphaQE while offering a good trade-off between robustness and efficiency when compared to SGV.
更多
查看译文
关键词
Recognition Approach,Place Recognition,3D LiDAR,Re-ranking Approach,Experimental Evaluation,Information Retrieval,Computational Demands,Global Descriptors,False Positive,Training Set,True Positive,Local Features,Attention Mechanism,Point Cloud,Autonomous Vehicles,Baseline Methods,Image Retrieval,Relevance Score,Linear Projection,Physical Place,Iterative Closest Point,Transformer Encoder,Input Point Cloud,Descriptor Vector,Relevant Candidate
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要