zhangcaocao / M-Region-VLAD-VPR

AUC-PR results of place recognition datasets on CNN based M-Region-VLAD Visual Place Recognition framework

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

CAMAL: Context-Aware Multi-scale Attention framework for Lightweight Visual Place Recognition

  • Three benchmark datasets tested on the proposed methodology:
  1. SPEDTest
  2. St Lucia
  3. Synthesized Nordland

If you use the datasets/results, please cite the following publication:

@article{khaliq2019camal,
  title={CAMAL: Context-Aware Multi-scale Attention framework for Lightweight Visual Place Recognition},
  author={Khaliq, Ahmad and Ehsan, Shoaib and Milford, Michael and McDonald-Maier, Klaus},
  journal={arXiv preprint arXiv:1909.08153},
  year={2019}
}
  • Each dataset contains two traverses of the same route under different conditions and viewpoint

    • A "VPR_Results" folder in each dataset contains CSV files of all the evaluated VPR technqiues
      • All the CSV files have same pattern; each row contains four paramters i.e. (Test Image number, Retrieved Image number, Score, Matched(1/0)?)
      • The user needs to use the Score and Matched values for drawing the PR-curves
  • Another "Vocabulary" folder contains N=300 and V=128 clustered regional dictionary trained using 3K images for VLAD retrieval.

  • A python script "produceResults.py" can generate the AUC-PR.

Configuration : N = 300, V=128 (AUC-PR Results)

  1. SPEDTest: 0.837
  2. St Lucia: 0.747
  3. Synthesized Nordland: 0.737

About

AUC-PR results of place recognition datasets on CNN based M-Region-VLAD Visual Place Recognition framework


Languages

Language:Python 100.0%