28. Coding the Motion Model

Now that we have manually calculated each step for determining the motion model probability, we will implement these steps in a function. The starter code below steps through each position x, calls the motion_model function and prints the results to stdout . To complete this exercise fill in the motion_model function which will involve:

  • For each x_{t} . :

    • Calculate the transition probability for each potential value x_{t-1}
    • Calculate the discrete motion model probability by multiplying the transition model probability by the belief state (prior) for x_{t-1}
  • Return total probability (sum) of each discrete probability

Start Quiz:

#include <iostream>
#include <vector>

#include "helpers.h"

using std::vector;

vector<float> initialize_priors(int map_size, vector<float> landmark_positions,
                                float position_stdev);

float motion_model(float pseudo_position, float movement, vector<float> priors,
                   int map_size, int control_stdev);

int main() {
  // set standard deviation of control:
  float control_stdev = 1.0f;

  // set standard deviation of position:
  float position_stdev = 1.0f;

  // meters vehicle moves per time step
  float movement_per_timestep = 1.0f;

  // number of x positions on map
  int map_size = 25;

  // initialize landmarks
  vector<float> landmark_positions {5, 10, 20};
    
  // initialize priors
  vector<float> priors = initialize_priors(map_size, landmark_positions,
                                           position_stdev);
    
  // step through each pseudo position x (i)    
  for (float i = 0; i < map_size; ++i) {
    float pseudo_position = i;

    // get the motion model probability for each x position
    float motion_prob = motion_model(pseudo_position, movement_per_timestep,
                                     priors, map_size, control_stdev);
        
    // print to stdout
    std::cout << pseudo_position << "\t" << motion_prob << std::endl;
  }    

  return 0;
}

// TODO: implement the motion model: calculates prob of being at 
// an estimated position at time t
float motion_model(float pseudo_position, float movement, vector<float> priors,
                   int map_size, int control_stdev) {
  // initialize probability
  float position_prob = 0.0f;
  
  // YOUR CODE HERE

  
  return position_prob;
}

// initialize priors assuming vehicle at landmark +/- 1.0 meters position stdev
vector<float> initialize_priors(int map_size, vector<float> landmark_positions,
                                     float position_stdev) {

  // set all priors to 0.0
  vector<float> priors(map_size, 0.0);

  // set each landmark positon +/-1 to 1.0/9.0 (9 possible postions)
  float norm_term = landmark_positions.size() * (position_stdev * 2 + 1);
  for (int i=0; i < landmark_positions.size(); ++i) {
    for (float j=1; j <= position_stdev; ++j) {
      priors.at(int(j+landmark_positions[i]+map_size)%map_size) += 1.0/norm_term;
      priors.at(int(-j+landmark_positions[i]+map_size)%map_size) += 1.0/norm_term;
    }
    priors.at(landmark_positions[i]) += 1.0/norm_term;
  }
  
  return priors;
}
#ifndef HELP_FUNCTIONS_H
#define HELP_FUNCTIONS_H

#include <math.h>

class Helpers {
 public:
  // definition of one over square root of 2*pi:
  constexpr static float STATIC_ONE_OVER_SQRT_2PI = 1/sqrt(2*M_PI);

  /**
   * normpdf(X,mu,sigma) computes the probability function at values x using the
   * normal distribution with mean mu and standard deviation std. x, mu and 
   * sigma must be scalar! The parameter std must be positive. 
   * The normal pdf is y=f(x,mu,std)= 1/(std*sqrt(2pi)) e[ -(x−mu)^2 / 2*std^2 ]
   */
  static float normpdf(float x, float mu, float std) {
    return (STATIC_ONE_OVER_SQRT_2PI/std)*exp(-0.5*pow((x-mu)/std,2));
  }
};

#endif  // HELP_FUNCTIONS_H