The Kalman filter is a mathematical method. Its purpose is to reduce noise and randomness in collected data, making the recorded data closer to the actual.

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Kalman filter 3D implementation

I want to implement the kalman filter for a moving object in r3 (X,Y,Z-coordinate) in OpenCV. I tried to understand the OpenCV documentation but this is really not helpful and very rare. The syntax ...
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3d position tracking is Nonlinear EKF or linear KF

I want to design a Kalman filter with following details. state matrix = x,y,z,Vx,Vy,Vz input control vector = ax,ay,az - variable acceleration for 3d axes measurement matrix - only 3d ...
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Implement Kalman Filter in R - FKF

In a post by @vdesai he/she explained a kalman filter model (See the full post here: Unsmoothing returns). The model described below is taken from there. State-Space model and formulas I've looked ...
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importance of time interval in kalman filter for position tracking

I implemented a 3d linear kalman filter to track the position of object. here are the details of the KF. my state is 3d position only and my input(control vector) is 3d velocity (vx,vy,vz). and ...
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25 views

Kalman Filter not giving right results

I am a beginner in Kalman filter tracking and I am following the tutorial (http://opencvexamples.blogspot.com/2014/01/kalman-filter-implementation-tracking.html) to implement multiple objects ...
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opencv Kalman filter multiple object tracking error

I have been trying to work on multiple object tracking using Kalman Filter. Here is my code, for (int i =0; i<vGlobal.size(); i++) // Vector of objects of interest { cv::Point pTemp = ...
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Kalman filter inside a struct and cannot initialize it

I want to track multiple objects using Kalman Filter. So, what I am doing is, I am using a struct to define the object's properties and also a Kalman Filter to track its points. (As follows) struct ...
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28 views

Sensor with limited range (sensor fusion - EKF)

I'm designing an EKF and I'm not sure how to proceed due this problem. I'm using 12 sensors to get the distance between my robot and the obstacle, however my sensors are different (IR and sonar) and ...
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How to specify time series model in R (KFAS)

I am using KFAS to fit a dynamic logistic model of the form; y^=β_t*x+ϵ Where y is a vector of length n, beta a vector of length p, x a matrix of n*p. β_t=β_(t−1)+η So the regression parameters ...
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33 views

Specify Start Position for Apache Commons Kalman Filter 2D Positioning Estmation

I use the kalmanfilter implementation of the apache commons math library to improve the accuracy of my indoor positioning framework. I think I got the matrices setup correctly for 2D positioning while ...
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kalman filter limit of Q in matlab

I want to design a kalman filter in matlab using kalman() command. My Q matrix (the matrix of variances of w[n]) is 4*4. Matlab says only up to 2*2 matrices are accepted as Q. Why is that so? And is ...
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61 views

Use Apache Commons Kalman Filter for 2D Positioning Estmation

I want to improve the accuracy of my indoor positioning framework and therefore apply the kalmanfilter. I found that the apache commons math library supports Kalmanfilter so I tried to use it and ...
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87 views

Tracking position and velocity using a kalman filter

I am using a kalman filter (constant velocity model) to track postion and velocity of an object. I measure x,y of the object and track x,y,vx,vy . Which works but if a add gausian noise of +- 20 mm to ...
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40 views

Introduction of exogenous variables in a state space model in R with DLM package

I am trying to fit the following state space model. (1) Kt = K(t-1)* + ε1t (2) Yt = Kt + βZt + ε2t where, t is time, Yt is the observable variable (at t), Kt is the unobservable trend, and Zt is a ...
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UV coordinates versus pixel XY for Kalman Filter

Looking at the various descriptions of Kalman Filtering and the implementation in OpenCV, I can find no discussion about which coordinate space to use, specifically if in image recognition the UV ...
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97 views

Smoothing of GPS data and removal of outliers

I have real-time GPS data coming at 5 updates per second. On average 80% of the data is fairly accurate; but around 20% of the data is jerky. Plus occasionally we also get an outlier i.e. an erroneous ...
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43 views

Dimension mismatch: array 'cov' is of shape (1, 1), but 'mean' is a vector of length 2

I'm trying to execute the following code p, c = [], [] for z in mes: print (z) print (c) print (p) p.append(kf.x) c.append(kf.P) kf.predict() kf.update(z) #error on this ...
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How to specify multiple measurements prozoroff UnscentedKalmanFilter

I am trying to convert this example of a single measurement to multiple measurements, but I am unsure where to specify this as (1,6) or (6,1) in the matrix. BOTH ways appear to produce errors. ...
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Java OpenCV Kalman filter

I'm trying to use the Kalman filter function in openCV (in Java) to track a person on a video frame. But the prediction is always (0,0) for me so I guess I have done something wrong in the ...
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StructTS (Kalman Filter) model in R is not fitting correctly [closed]

I would like to use a Kalman Filter to forecast price levels in some financial time-series data. Some googling has lead me to a few functions in R namely StructTS and KalmanForecast. Currently I am ...
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31 views

How do I create extended version of Kalman Filter from EMGU

I am using emgu's Kalman Filter class version 2.4. My data is stocks timeseries. For each day I get an "end of day" price for 6 stocks. I wish to predict the first stock based on the other 5. with ...
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73 views

Difference between Hidden Markov models and Particle Filter (and Kalman Filter)

I would like to ask if someone knows the difference (if there is any difference) between Hidden Markov models (HMM) and Particle Filter (PF), and as a consequence Kalman Filter, or under which ...
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26 views

How do I get AIC/BIC from pyKalman?

I am comparing different models for understanding the drivers of a time series r using the pyKalman smoother. kf = KalmanFilter(...) kf = kf.em(measurements) (smoothed_state_means, ...
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68 views

Integer Based Sensor Fusion/Kalman Filter

Is anyone aware of a sensor fusion implementation that uses only integer operations instead of all the floating point accumulates/divides/multiplies in most open source implementations? On my ...
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21 views

Kalman Filter Matrix Dimensions Mismatch at Estimating New Value

Im referring to the Kalman Filter Explanation. When applying the mentioned operation and when estimating the new value, I cannot do the operations mentioned since the matrix dimensions are not ...
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106 views

Kalman filter (one-dimensional): several approaches?

I try to understand how the Kalman filter works and because the multi-dimensional variants were too confusing for the beginning I started off with a one-dimensional example. I found 3 different ...
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68 views

Confusion between prediction matrix and measurement covariance matrix in Kalman filter

I am trying to implement Kalman filter for vehicle tracking in MATLAB. A Vehicle is moving in X direction with constant velocity. Initial state for vehicle =[x(t) v(t)]. I have to find position of ...
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133 views

Vuforia 5 jitter in horizontal and vertical movement and Motion blur

I'm using Unity 5.6.7 with Vuforia 5 and trying to solve the problem of jitter in AR object that we experience when moving the camera in horizontal or vertical positions while being in AR mode of ...
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79 views

Fast Kalman Filter

I wonder if anyone can give me a pointer to really fast/efficient Kalman filter implementation, possibly in Python (or Cython, but C/C++ could also work if it is much faster). I have a problem with ...
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35 views

Kalman Filter prediction error estimation: why two constants and transposed matrices?

Hy everybody! I have found a very informative and good tutorial for understanding Kalman Filter. In the end, I would like to understand the Extended Kalman Filter in the second half of the tutorial, ...
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24 views

horizontal acceleration measurement in self-balancing 2-wheel vehicles?

it's now the standard practices to fuse the measurements from accelerometers and gyro through Kalman filter, for applications like self-balancing 2-wheel carts: for example: ...
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188 views

How to use the extended kalman filter for IMU and Optical Flow sensor fusion?

I am building a quadcopter and i am using the pixhawk autopilot system with the px4flow sensor attached for optical flow data. The px4flow is a high speed smart camera (arm processor) with integrated ...
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103 views

Kalman filter used in IMU , what signals does the fusion process combine?

from what I read, Kalman filter basically tries to "reconcile" the predictions for one variable based on history of this variable, with actual observation of this variable. in the case of finding the ...
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52 views

Matlab Kalman Filter for 3D Position

I am trying to find 3D position using Kalman filter .Kindly it would be so nice if some one please help me how I can modify my 1D code to 3D .I am confused about the this filter. i = 100; % time ...
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80 views

Matlab: Kalman Filter — How to mitigate the Warning: Matrix is singular or badly scaled

When performing the innovation update for Kalman filter, I am getting Warnings Warning: Matrix is close to singular or badly scaled. Results may be inaccurate. RCOND = 2.169130e-017. Maybe ...
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163 views

Position estimation for iOS using accelerometer

In iOS, it is easy to access Linear Acceleration which is equal to subtracting Gravity from Raw acceleration. I am trying to estimate position by double integrating Linear Acceleration. For that I ...
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1answer
164 views

Attenuating positions and orientations in Kinect

I am using Kinect to get the positions and orientations of each joint, and then I am sending them to Unity. I noticed that there are a lot of "jumps" or fluctuations in the values, for example, ...
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1answer
73 views

Reducing external magnetic field effects using gyroscope

Over the past year I have used many different methods of combining Accelerometers, gryos and Magnetometers to get accurate readings of Head angles. I have also started looking into using a Kalman ...
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1answer
579 views

Implementation of Data Fusion through (Extended) Kalman-Filter in OpenCV/C++

I'm working on a project to track the position of a camera which is mounted on a moving device through data-fusion. The data I get is 1) the velocity in x-, y- and z-direction of the camera from ...
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1answer
218 views

Implementing Kalman filter with Fusion Provider in Andoid for GPS positions

I have to implement Kalman filter for a better accuracy with GPS positions... I use Stochastically solution (Smooth GPS data). In ValidPosition I have some checks like: public boolean ...
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46 views

How to use kalman filter in my application?

I was asked to use kalman filter for my application to find the location. State space is x = A[x y] which is location and the measurement is suggested to use is in RSSI sensor readings Zprediced = ...
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44 views

Projections into Cartesian Space from Latitude and Longitude for Kalman Filtering

I am trying to properly project Latitude and Longitude into cartesian coordinates so that I can use an unscented Kalman filter to smooth out some GPS data. I am using constant jerk newtonian motion as ...
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49 views

Matlab -Kalman function-difference between the filter gain and the innovation gain

In the matlab documentation for the kalman function, it is said that the function will return the L and M value, L being the filter gain and M the innovation gain. While I can understand what the ...
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1answer
24 views

HMM's with independent training sets, Matlab

I am trying to use a hidden Markov model (HMM) for a problem where I have M states and several independent training sets in Matlab. Each observation in each training set can be allocated to a state, ...
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2answers
91 views

prototype.Function is not being exported in node.js

I found this javascript Kalman filter library online and I wanted to use it with my node.js application. As I wanted to include this js file into my node.js application, I tried to export the required ...
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How can I find process noise and measurement noise in a Kalman filter if I have a set of RSSI readings?

im have RSSI readings but no idea how to find measurement and process noise. What is the way to find those values?
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54 views

Graph-SLAM when it uses only odometry information, will it still run? and what is the outcome?

This is a kind of difficult question. I know about EKF-SLAM, which uses a state from previous time to estimate next state as an online filter, I also know about Graph-SLAM, which uses all states in ...
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How to implement matrices in the Kalman Filter?

I have tried an implementation of a Kalman filter, which is supposed to be applicable for m-dimensional observations and n-dimensional space states. #Prediction step def kf_predict(X, P, A, Q, B, ...
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149 views

SensorEvent.timestamp and Location.getElapsedRealtimeNanos() Timestamp Delay Offset

I am currently getting timestamps from accelerometers, magnetometers, and gyroscopes and performing sensor fusion with GPS Location on an android device. I am getting the sensor timestamp using ...
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88 views

How to implement a sequential Kalman filter for a non-linear system?

I am currently working on a project in which I need to implement a Kalman filter for data fusion in Simulink. As this system is non-linear, I have thought about implementing an extended Kalman filter. ...