SelaVPR++: Towards Seamless Adaptation of Foundation Models for Efficient Place Recognition
Feng Lu, Tong Jin, Xiangyuan Lan, Lijun Zhang, Yunpeng Liu, Yaowei Wang, Chun Yuan

TL;DR
SelaVPR++ enhances visual place recognition by introducing a lightweight, efficient adaptation method and a novel re-ranking paradigm using binary and global features, achieving higher performance with lower computational costs.
Contribution
The paper presents SelaVPR++, an improved VPR method that uses MultiConv adapters for efficient feature refinement and a binary-global feature re-ranking strategy, reducing training time and resource usage.
Findings
Achieves higher accuracy with less training time.
Reduces GPU memory and storage requirements.
Improves retrieval speed and efficiency.
Abstract
Recent studies show that the visual place recognition (VPR) method using pre-trained visual foundation models can achieve promising performance. In our previous work, we propose a novel method to realize seamless adaptation of foundation models to VPR (SelaVPR). This method can produce both global and local features that focus on discriminative landmarks to recognize places for two-stage VPR by a parameter-efficient adaptation approach. Although SelaVPR has achieved competitive results, we argue that the previous adaptation is inefficient in training time and GPU memory usage, and the re-ranking paradigm is also costly in retrieval latency and storage usage. In pursuit of higher efficiency and better performance, we propose an extension of the SelaVPR, called SelaVPR++. Concretely, we first design a parameter-, time-, and memory-efficient adaptation method that uses lightweight…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Image and Video Retrieval Techniques · Indoor and Outdoor Localization Technologies
MethodsConvolution · Focus · Adapter
