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skybox_utils.py
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skybox_utils.py
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import cv2
from networks import *
from sklearn.neighbors import KernelDensity
def build_transformation_matrix(transform):
"""Convert transform list to transformation matrix
:param transform: transform list as [dx, dy, da]
:return: transform matrix as 2d (2, 3) numpy array
"""
transform_matrix = np.zeros((2, 3))
transform_matrix[0, 0] = np.cos(transform[2])
transform_matrix[0, 1] = -np.sin(transform[2])
transform_matrix[1, 0] = np.sin(transform[2])
transform_matrix[1, 1] = np.cos(transform[2])
transform_matrix[0, 2] = transform[0]
transform_matrix[1, 2] = transform[1]
return transform_matrix
def update_transformation_matrix(M, m):
# extend M and m to 3x3 by adding an [0,0,1] to their 3rd row
M_ = np.concatenate([M, np.zeros([1,3])], axis=0)
M_[-1, -1] = 1
m_ = np.concatenate([m, np.zeros([1,3])], axis=0)
m_[-1, -1] = 1
M_new = np.matmul(m_, M_)
return M_new[0:2, :]
def estimate_partial_transform(matched_keypoints):
"""Wrapper of cv2.estimateRigidTransform for convenience in vidstab process
:param matched_keypoints: output of match_keypoints util function; tuple of (cur_matched_kp, prev_matched_kp)
:return: transform as list of [dx, dy, da]
"""
prev_matched_kp, cur_matched_kp = matched_keypoints
# transform = cv2.estimateRigidTransform(np.array(prev_matched_kp),
# np.array(cur_matched_kp),
# False)
transform = cv2.estimateAffinePartial2D(np.array(prev_matched_kp),
np.array(cur_matched_kp))[0]
if transform is not None:
# translation x
dx = transform[0, 2]
# translation y
dy = transform[1, 2]
# rotation
da = np.arctan2(transform[1, 0], transform[0, 0])
else:
dx = dy = da = 0
return [dx, dy, da]
def check_dy_dx_da(dy, dx, da, d_max=20.0, d_min=-20.0):
if dy > d_max: dy = d_max
if dy < d_min: dy = d_min
if dx > d_max: dx = d_max
if dx < d_min: dx = d_min
if da > d_max: da = d_max
if da < d_min: da = d_min
return dy, dx, da
def removeOutliers(prev_pts, curr_pts):
d = np.sum((prev_pts - curr_pts)**2, axis=-1)**0.5
d_ = np.array(d).reshape(-1, 1)
kde = KernelDensity(kernel='gaussian', bandwidth=0.5).fit(d_)
density = np.exp(kde.score_samples(d_))
prev_pts = prev_pts[np.where((density >= 0.1))]
curr_pts = curr_pts[np.where((density >= 0.1))]
return prev_pts, curr_pts