CVFeb 23, 2025

SelaVPR++: Towards Seamless Adaptation of Foundation Models for Efficient Place Recognition

arXiv:2502.16601v210 citationsh-index: 34IEEE Trans Pattern Anal Mach Intell
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This work addresses efficiency bottlenecks in VPR for robotics and autonomous systems, offering incremental improvements over prior methods.

The paper tackles the inefficiency in adapting foundation models for visual place recognition (VPR) by proposing SelaVPR++, which improves training speed, reduces GPU memory usage, and enhances retrieval efficiency with a new re-ranking paradigm using binary features, achieving state-of-the-art results on benchmark datasets.

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 multi-scale convolution (MultiConv) adapters to refine intermediate features from the frozen foundation backbone. This adaptation method does not back-propagate gradients through the backbone during training, and the MultiConv adapter facilitates feature interactions along the spatial axes and introduces proper local priors, thus achieving higher efficiency and better performance. Moreover, we propose an innovative re-ranking paradigm for more efficient VPR. Instead of relying on local features for re-ranking, which incurs huge overhead in latency and storage, we employ compact binary features for initial retrieval and robust floating-point (global) features for re-ranking. To obtain such binary features, we propose a similarity-constrained deep hashing method, which can be easily integrated into the VPR pipeline. Finally, we improve our training strategy and unify the training protocol of several common training datasets to merge them for better training of VPR models. Extensive experiments show that ......

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