Kalman filter library

Overview

Kalman filter library

Introduction

The kalman filter framework described here is an incredibly powerful tool for any optimization problem, but particularly for visual odometry, sensor fusion localization or SLAM. It is designed to provide very accurate results, work online or offline, be fairly computationally efficient, be easy to design filters with in python.

Feature walkthrough

Extended Kalman Filter with symbolic Jacobian computation

Most dynamic systems can be described as a Hidden Markov Process. To estimate the state of such a system with noisy measurements one can use a Recursive Bayesian estimator. For a linear Markov Process a regular linear Kalman filter is optimal. Unfortunately, a lot of systems are non-linear. Extended Kalman Filters can model systems by linearizing the non-linear system at every step, this provides a close to optimal estimator when the linearization is good enough. If the linearization introduces too much noise, one can use an Iterated Extended Kalman Filter, Unscented Kalman Filter or a Particle Filter. For most applications those estimators are overkill. They add a lot of complexity and require a lot of additional compute.

Conventionally Extended Kalman Filters are implemented by writing the system's dynamic equations and then manually symbolically calculating the Jacobians for the linearization. For complex systems this is time consuming and very prone to calculation errors. This library symbolically computes the Jacobians using sympy to simplify the system's definition and remove the possibility of introducing calculation errors.

Error State Kalman Filter

3D localization algorithms usually also require estimating orientation of an object in 3D. Orientation is generally represented with euler angles or quaternions.

Euler angles have several problems, there are multiple ways to represent the same orientation, gimbal lock can cause the loss of a degree of freedom and lastly their behaviour is very non-linear when errors are large. Quaternions with one strictly positive dimension don't suffer from these issues, but have another set of problems. Quaternions need to be normalized otherwise they will grow unbounded, but this cannot be cleanly enforced in a kalman filter. Most importantly though a quaternion has 4 dimensions, but only represents 3 degrees of freedom, so there is one redundant dimension.

Kalman filters are designed to minimize the error of the system's state. It is possible to have a kalman filter where state and the error of the state are represented in a different space. As long as there is an error function that can compute the error based on the true state and estimated state. It is problematic to have redundant dimensions in the error of the kalman filter, but not in the state. A good compromise then, is to use the quaternion to represent the system's attitude state and use euler angles to describe the error in attitude. This library supports and defining an arbitrary error that is in a different space than the state. Joan Solà has written a comprehensive description of using ESKFs for robust 3D orientation estimation.

Multi-State Constraint Kalman Filter

How do you integrate feature-based visual odometry with a Kalman filter? The problem is that one cannot write an observation equation for 2D feature observations in image space for a localization kalman filter. One needs to give the feature observation a depth so it has a 3D position, then one can write an obvervation equation in the kalman filter. This is possible by tracking the feature across frames and then estimating the depth. However, the solution is not that simple, the depth estimated by tracking the feature across frames depends on the location of the camera at those frames, and thus the state of the kalman filter. This creates a positive feedback loop where the kalman filter wrongly gains confidence in it's position because the feature position updates reinforce it.

The solution is to use an MSCKF, which this library fully supports.

Rauch–Tung–Striebel smoothing

When doing offline estimation with a kalman filter there can be an initialization period where states are badly estimated. Global estimators don't suffer from this, to make our kalman filter competitive with global optimizers we can run the filter backwards using an RTS smoother. Those combined with potentially multiple forward and backwards passes of the data should make performance very close to global optimization.

Mahalanobis distance outlier rejector

A lot of measurements do not come from a Gaussian distribution and as such have outliers that do not fit the statistical model of the Kalman filter. This can cause a lot of performance issues if not dealt with. This library allows the use of a mahalanobis distance statistical test on the incoming measurements to deal with this. Note that good initialization is critical to prevent good measurements from being rejected.

Owner
comma.ai
Make driving chill
comma.ai
Deep Survival Machines - Fully Parametric Survival Regression

Package: dsm Python package dsm provides an API to train the Deep Survival Machines and associated models for problems in survival analysis. The under

Carnegie Mellon University Auton Lab 10 Dec 30, 2022
Merlion: A Machine Learning Framework for Time Series Intelligence

Merlion is a Python library for time series intelligence. It provides an end-to-end machine learning framework that includes loading and transforming data, building and training models, post-processi

Salesforce 2.8k Jan 05, 2023
Self Organising Map (SOM) for clustering of atomistic samples through unsupervised learning.

Self Organising Map for Clustering of Atomistic Samples - V2 Description Self Organising Map (also known as Kohonen Network) implemented in Python for

Franco Aquistapace 0 Nov 16, 2021
A Python implementation of the Robotics Toolbox for MATLAB

Robotics Toolbox for Python A Python implementation of the Robotics Toolbox for MATLAB® GitHub repository Documentation Wiki (examples and details) Sy

Peter Corke 1.2k Jan 07, 2023
Fundamentals of Machine Learning

Fundamentals-of-Machine-Learning This repository introduces the basics of machine learning algorithms for preprocessing, regression and classification

Happy N. Monday 3 Feb 15, 2022
Cool Python features for machine learning that I used to be too afraid to use. Will be updated as I have more time / learn more.

python-is-cool A gentle guide to the Python features that I didn't know existed or was too afraid to use. This will be updated as I learn more and bec

Chip Huyen 3.3k Jan 05, 2023
pandas, scikit-learn, xgboost and seaborn integration

pandas, scikit-learn and xgboost integration.

299 Dec 30, 2022
CrayLabs and user contibuted examples of using SmartSim for various simulation and machine learning applications.

SmartSim Example Zoo This repository contains CrayLabs and user contibuted examples of using SmartSim for various simulation and machine learning appl

Cray Labs 14 Mar 30, 2022
Simple linear model implementations from scratch.

Hand Crafted Models Simple linear model implementations from scratch. Table of contents Overview Project Structure Getting started Citing this project

Jonathan Sadighian 2 Sep 13, 2021
Markov bot - A Writing bot based on Markov Chain for Data Structure Lab

基于马尔可夫链的写作机器人 前端 用html/css完成 Demo展示(已给出文本的相应展示) 用户提供相关的语料库后训练的成果 后端 要完成的几个接口 解析文

DysprosiumDy 9 May 05, 2022
scikit-learn models hyperparameters tuning and feature selection, using evolutionary algorithms.

Sklearn-genetic-opt scikit-learn models hyperparameters tuning and feature selection, using evolutionary algorithms. This is meant to be an alternativ

Rodrigo Arenas 180 Dec 20, 2022
Open source time series library for Python

PyFlux PyFlux is an open source time series library for Python. The library has a good array of modern time series models, as well as a flexible array

Ross Taylor 2k Jan 02, 2023
A Python Module That Uses ANN To Predict A Stocks Price And Also Provides Accurate Technical Analysis With Many High Potential Implementations!

Stox A Module to predict the "close price" for the next day and give "technical analysis". It uses a Neural Network and the LSTM algorithm to predict

Stox 31 Dec 16, 2022
A Tools that help Data Scientists and ML engineers train and deploy ML models.

Domino Research This repo contains projects under active development by the Domino R&D team. We build tools that help Data Scientists and ML engineers

Domino Data Lab 73 Oct 17, 2022
Examples and code for the Practical Machine Learning workshop series

Practical Machine Learning Workshop Series Practical Machine Learning for Quantitative Finance Post conference workshop at the WBS Spring Conference D

CompatibL 21 Jun 25, 2022
💀mummify: a version control tool for machine learning

mummify is a version control tool for machine learning. It's simple, fast, and designed for model prototyping.

Max Humber 43 Jul 09, 2022
A linear regression model for house price prediction

Linear_Regression_Model A linear regression model for house price prediction. This code is using these packages, so please make sure your have install

ShawnWang 1 Nov 29, 2021
Kaggler is a Python package for lightweight online machine learning algorithms and utility functions for ETL and data analysis.

Kaggler is a Python package for lightweight online machine learning algorithms and utility functions for ETL and data analysis. It is distributed under the MIT License.

Jeong-Yoon Lee 720 Dec 25, 2022
Python implementation of Weng-Lin Bayesian ranking, a better, license-free alternative to TrueSkill

Python implementation of Weng-Lin Bayesian ranking, a better, license-free alternative to TrueSkill This is a port of the amazing openskill.js package

Open Debates Project 156 Dec 14, 2022
Bonsai: Gradient Boosted Trees + Bayesian Optimization

Bonsai is a wrapper for the XGBoost and Catboost model training pipelines that leverages Bayesian optimization for computationally efficient hyperparameter tuning.

24 Oct 27, 2022