Skip to content

Latest commit

 

History

History
22 lines (18 loc) · 1.27 KB

README.md

File metadata and controls

22 lines (18 loc) · 1.27 KB

codecov Documentation Status

pyransac package

This package is a general random sample consensus (RANSAC) framework. For convenience, some data models (such as a straight line) are already provided. However, you are free to define your own data models to remove outliers from arbitrary data sets using arbitrary data models.

General usage

There are two main components to this package: the RANSAC estimator and a data model. When calling the estimation function find_inliers, you need to specify the model to which you expect your data to fit.

A data model is class containing the model parameters and an error function against which you can test your data. Each data model must implement the interface defined by the Model base class. In other words, you need to implement the make_model and calc_error functions.

Additionally, you need to provide parameters for the RANSAC algorithm. These parameters are contained in the RansacParams class.