Keypoint Learning Save

Code for "Learning a Descriptor-Specific 3D Keypoint Detector" and "Learning to detect good 3d keypoints" -ICCV 2015, IJCV 2018

Project README

Keypoint-Learning

Description

This framework demonstrates the use of a random forest, trained with the method proposed in [1], as a keypoints detector. The framework is composed by three different projects:

  • GenerateTrainingSet: implement the training set generation.
  • TrainDetector: starting from samples generated with GenerateTrainingSet, train a random forest for keypoints detection (monoscale only).
  • TestDetector: demonstrates keypoints extraction (monoscale only).

If you use this code please refer to:

[1] Learning a Descriptor-Specific 3D Keypoint Detector, Samuele Salti, Federico Tombari, Riccardo Spezialetti, Luigi Di Stefano; The IEEE International Conference on Computer Vision (ICCV), 2015, pp. 2318-2326.

[2] Learning to Detect Good 3D Keypoints, Alessio Tonioni, Samuele Salti, Federico Tombari, Riccardo Spezialetti, Luigi Di Stefano; International Journal of Computer Vision (IJCV), 2017.

Usage

GenerateTrainingSet: implementation of training set generation for random forest train describer in[1].

The algorithm requires a set of calibrated 2.5D views of 3d objects (divided into folders: object_name/2.5D_views/), along with two files, groundTruth.txt containing groundtruth matrix (affine transformation from 2.5D views to full 3d model) and overlappingAreas.txt a list of overalapping areas between 2.5D pairs. For details, refer to the examples in: data/example_groundTruth.txt and data/example_overlappingAreas.txt.

For what concern the descriptor to use, the algorithm is customizable by modifying the function computeDescriptorsPerView() in view_manager.hpp.

To increase efficiency, is possible to enable multithreading defining global variables: MULTITHREAD and MULTIVIEW. The required console arguments are the following:

  • distance: euclidean distance to accept points with similar descriptor.
  • ext: dataset file extension.
  • pathDataset: path to folder with 3d object 2.5D views.
  • pathTrainingset: path for generated traning set.
  • radiusNegative: radius for negative generation.
  • radiusNms: radius for non maxima suppression on positive.
  • overlap: overlapping threshold between views.

TrainDetector: this sample train and save random forest using features described in [1]. The required console arguments are the following:

  • annuli: annuli for features computation.
  • bins: bins for features computation.
  • pathDataset: path to dataset (same folder used in GenerateTrainingSet)
  • pathTrainingData: path for training data-> Positives in: pathTrainingData\Model_Name\positives and Negatives in: pathTrainingData\Model_Name\negatives.
  • pathRF: path for Random Forest.
  • radiusFeatures: radius for features computation.
  • msc: min samples count of Random Forest.
  • nameRF: name of YAML file.
  • ntrees: number of trees of Random Forest.

TestDetector: example of keypoints detection on point cloud. The required console arguments are the following:

  • pathCloud: path to point cloud.
  • pathRF: path to trained random forest.
  • radiusFeatures: features support.
  • radiusNMS: non maxima suppression radius.
  • threshold: minimum forest output score to accept a point as keypoint. Value between 0 and 1.

Data

The folder random_forest contains trained random forest for Laser Scanner dataset:

  • FPFH-LaserScanner.yaml.gz: random forest trained with FPFH as descriptor.
  • SHOT-LaserScanner.yaml.gz: random forest trained with SHOT as descriptor.
  • SPINIMAGES-LaserScanner.yaml.gz: random forest trained with SPINIMAGES as descriptor.

The folder point_cloud contains examples of 2.5D views obtained from Laser Scanner dataset.

Dependencies

  • Point Cloud Library 1.8.0
  • OpenCV 3.2.0
  • and all the other libraries necessary the compile the previous ones

The code has been tested on Windows 10 and Microsoft Visual Studio 2015.

Open Source Agenda is not affiliated with "Keypoint Learning" Project. README Source: CVLAB-Unibo/Keypoint-Learning

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