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import numpy as np
from .utils import haversine
def mean_absolute_error_per_point(pred, true):
"""
Calculates the Mean Absolute Error Per Point (MAEPP) for a batch.
:param pred: Predicted time, shape (batch_size, traj_length)
:param true: Ground truth time, shape (batch_size, traj_length)
:return: Mean Absolute Error Per Point (MAEPP) for the batch.
"""
maepp = np.abs(pred - true).mean()
return maepp
def mean_absolute_error_per_sample(pred, true):
"""
Calculates the Mean Absolute Error Per Sample (MAEPS) for a batch.
:param pred: Predicted time, shape (batch_size, traj_length)
:param true: Ground truth time, shape (batch_size, traj_length)
:return: Mean Absolute Error Per Sample (MAEPS) for the batch.
"""
mae_per_sample = np.abs(pred - true).mean(axis=1)
maeps = mae_per_sample.mean()
return maeps
def mean_trajectory_deviation(pred, true):
"""
Calculates the Mean Trajectory Deviation (MTD) for a batch.
:param pred: Predicted trajectories, shape (batch_size, 2, traj_length) or (batch_size, traj_length, 2/3)
:param true: Ground truth trajectories, shape (batch_size, 2, traj_length) or (batch_size, traj_length, 2/3)
:return: Mean Trajectory Deviation (MTD) for the batch.
"""
batch_size, traj_length, _ = pred.shape # Assuming pred shape is (batch_size, traj_length, num_features)
deviations = []
for i in range(batch_size):
# Assuming lat is at index 1 and lon is at index 2 if num_features is 3,
# or lat is index 0 and lon is index 1 if num_features is 2 (after potential permute)
# The original code used pred[i, :, 1] and pred[i, :, 2] which might imply features are [time, lat, lon]
# and slicing was done after permuting to (batch_size, num_coords, traj_length).
# For (batch_size, traj_length, num_features), access directly.
pred_lat, pred_lon = pred[i, :, 1], pred[i, :, 2] # Adapt if lat/lon indices are different
true_lat, true_lon = true[i, :, 1], true[i, :, 2] # Adapt if lat/lon indices are different
deviation = np.array([haversine(pred_lat[j], pred_lon[j], true_lat[j], true_lon[j]) for j in range(traj_length)])
deviations.append(np.mean(deviation))
mtd = np.mean(deviations)
return mtd
def mean_point_to_point_error(pred, true):
"""
Calculates the Mean Point-to-Point Error (MPPE) for a batch.
:param pred: Predicted trajectories, shape (batch_size, traj_length, 2) or (batch_size, traj_length, 3)
:param true: Ground truth trajectories, shape (batch_size, traj_length, 2) or (batch_size, traj_length, 3)
:return: Mean Point-to-Point Error (MPPE) for the batch.
"""
batch_size, traj_length, _ = pred.shape
total_error = 0
for i in range(batch_size):
for j in range(traj_length):
pred_lat, pred_lon = pred[i, j, 1], pred[i, j, 2] # Adapt if lat/lon indices are different
true_lat, true_lon = true[i, j, 1], true[i, j, 2] # Adapt if lat/lon indices are different
point_error = haversine(pred_lat, pred_lon, true_lat, true_lon)
total_error += point_error
mppe = total_error / (batch_size * traj_length)
return mppe
def trajectory_coverage(pred, true, thresholds):
"""
Calculates Trajectory Coverage (TC) for each sample at multiple thresholds.
:param pred: Predicted trajectories, shape (batch_size, 2, traj_length) or (batch_size, traj_length, 2/3)
:param true: Ground truth trajectories, shape (batch_size, 2, traj_length) or (batch_size, traj_length, 2/3)
:param thresholds: List of deviation thresholds.
:return: A dictionary of trajectory coverage for each sample at various thresholds,
and the average trajectory coverage (APTC).
"""
batch_size, traj_length, _ = pred.shape
tc_dict = {f'TC@{threshold}': [] for threshold in thresholds}
for i in range(batch_size):
pred_lat, pred_lon = pred[i, :, 1], pred[i, :, 2] # Adapt if lat/lon indices are different
true_lat, true_lon = true[i, :, 1], true[i, :, 2] # Adapt if lat/lon indices are different
deviations = np.array([haversine(pred_lat[j], pred_lon[j], true_lat[j], true_lon[j]) for j in range(traj_length)])
for threshold in thresholds:
tc = (deviations <= threshold).mean() # Original comment: tc = deviations.mean() <= threshold, this seems more standard.
tc_dict[f'TC@{threshold}'].append(tc)
aptc = {k: np.mean(v) for k, v in tc_dict.items()}
avg_aptc = np.mean(list(aptc.values()))
return aptc, avg_aptc
def max_trajectory_deviation(pred, true):
"""
Calculates the Maximum Trajectory Deviation (MaxTD) for each sample in a batch.
:param pred: Predicted trajectories, shape (batch_size, 2, traj_length) or (batch_size, traj_length, 2/3)
:param true: Ground truth trajectories, shape (batch_size, 2, traj_length) or (batch_size, traj_length, 2/3)
:return: Maximum Trajectory Deviation (MaxTD) for the batch.
"""
batch_size, traj_length, _ = pred.shape
max_deviations = []
for i in range(batch_size):
pred_lat, pred_lon = pred[i, :, 1], pred[i, :, 2] # Adapt if lat/lon indices are different
true_lat, true_lon = true[i, :, 1], true[i, :, 2] # Adapt if lat/lon indices are different
deviation = np.array([haversine(pred_lat[j], pred_lon[j], true_lat[j], true_lon[j]) for j in range(traj_length)])
max_deviations.append(np.max(deviation))
max_td = np.max(max_deviations)
return max_td