开源软件名称(OpenSource Name):mihaidusmanu/cross-descriptor-vis-loc-map开源软件地址(OpenSource Url):https://github.com/mihaidusmanu/cross-descriptor-vis-loc-map开源编程语言(OpenSource Language):Python 97.1%开源软件介绍(OpenSource Introduction):Cross-Descriptor Visual Localization and MappingThis repository contains the implementation of the following paper:
RequirementsCOLMAPWe use COLMAP for DoG keypoint extraction as well as localization and mapping.
Please follow the installation instructions available on the official webpage.
Before proceeding, we recommend setting an environmental variable to the COLMAP executable folder by running PythonThe environment can be set up directly using conda:
Training dataWe provide a script for downloading the raw training data:
Evaluation dataWe provide a script for downloading the LFE dataset along with the GT used for evaluation as well as the Aachen Day-Night dataset:
TrainingData preprocessingFirst step is extracting keypoints and descriptors on the training data downloaded above.
Alternatively, you can directly download the processed training data by running:
TrainingTo run training with the default architecture and hyper-parameters, execute the following:
Pretrained modelsWe provide two pretrained models trained on descriptors extracted from COLMAP SIFT and OpenCV SIFT keypoints, respectively. These models can be downloaded by running:
EvaluationDemo NotebookClick for details...Local Feature Evaluation BenchmarkClick for details...First step is extracting descriptors on all datasets:
We provide examples below for running reconstruction on Madrid Metrpolis in each different evaluation scenario. Reconstruction using a single descriptor (standard)
Reconstruction using the progressive approach (ours)
Reconstruction using the joint embedding approach (ours)
Reconstruction using a single descriptor on the associated split (real-world)
Evaluation of a reconstruction w.r.t. metric pseudo-ground-truth
Aachen Day-NightClick for details...BibTeXIf you use this code in your project, please cite the following paper:
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2023-10-27
2022-08-15
2022-08-17
2022-09-23
2022-08-13
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