Coverage for src/gncpy/data_fusion.py: 91%

35 statements  

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1import types 

2 

3import numpy as np 

4import numpy.linalg as la 

5import scipy.optimize as sopt 

6 

7 

8def GeneralizedCovarianceIntersection(est_list, cov_list, weight_list, meas_model_list, optimizer=None): 

9 

10 def obj_func(w_list, cov_list=None, meas_model_list=None): 

11 if cov_list is None or meas_model_list is None: 

12 raise ValueError("cov_list cannot be nonetype") 

13 if len(cov_list) != len(w_list) or len(cov_list) != len(meas_model_list) or len(w_list) != len(meas_model_list): 

14 raise ValueError("must be same amount of weights and covariances") 

15 new_cov = np.zeros((meas_model_list[0].T @ cov_list[0] @ meas_model_list[0]).shape) 

16 for ii, cov in enumerate(cov_list): 

17 new_cov = new_cov + w_list[ii] * meas_model_list[ii].T @ la.inv(cov_list[ii]) @ meas_model_list[ii] 

18 return np.trace(la.inv(new_cov)) 

19 

20 obs_mat_list = [] 

21 for ii, model in enumerate(meas_model_list): 

22 if isinstance(model, types.FunctionType): 

23 obs_mat_list.append(model(0, est_list[ii])) 

24 else: 

25 obs_mat_list.append(model) 

26 

27 if optimizer is not None: 

28 opt_out = sopt.minimize(obj_func, weight_list, method=optimizer, args=(cov_list, obs_mat_list,)) 

29 else: 

30 opt_out = sopt.minimize(obj_func, weight_list, args=(cov_list, obs_mat_list,), constraints=(sopt.LinearConstraint(np.ones(len(est_list)).reshape([1, len(est_list)]), lb=1, ub=1), sopt.LinearConstraint(np.eye(len(est_list)), lb=0, ub=1))) 

31 new_cov = np.zeros(np.shape(obs_mat_list[0].T @ cov_list[0] @ obs_mat_list[0])) 

32 

33 new_weight_list = [] 

34 for w in opt_out.x: 

35 new_weight_list.append(w / np.sum(opt_out.x)) 

36 

37 for ii, cov in enumerate(cov_list): 

38 new_cov = new_cov + new_weight_list[ii] * obs_mat_list[ii].T @ la.inv(cov_list[ii]) @ obs_mat_list[ii] 

39 

40 new_cov = la.inv(new_cov) 

41 gain_list = [] 

42 new_est = np.zeros(np.shape(new_cov @ obs_mat_list[0].T @ la.inv(cov_list[0]) @ est_list[0])) 

43 for ii, cov in enumerate(cov_list): 

44 gain_list.append(new_weight_list[ii] * new_cov @ obs_mat_list[ii].T @ la.inv(cov)) 

45 new_est = new_est + gain_list[ii] @ est_list[ii] 

46 

47 return new_est, new_cov, new_weight_list