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2026-07-13 13:35:51 +08:00

313 lines
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Python

"""
Adapted from https://github.com/yanx27/Pointnet_Pointnet2_pytorch/blob/master/provider.py
"""
import numpy as np
def normalize_data(batch_data):
"""Normalize the batch data, use coordinates of the block centered at origin,
Input:
BxNxC array
Output:
BxNxC array
"""
B, N, C = batch_data.shape
normal_data = np.zeros((B, N, C))
for b in range(B):
pc = batch_data[b]
centroid = np.mean(pc, axis=0)
pc = pc - centroid
m = np.max(np.sqrt(np.sum(pc**2, axis=1)))
pc = pc / m
normal_data[b] = pc
return normal_data
def shuffle_data(data, labels):
"""Shuffle data and labels.
Input:
data: B,N,... numpy array
label: B,... numpy array
Return:
shuffled data, label and shuffle indices
"""
idx = np.arange(len(labels))
np.random.shuffle(idx)
return data[idx, ...], labels[idx], idx
def shuffle_points(batch_data):
"""Shuffle orders of points in each point cloud -- changes FPS behavior.
Use the same shuffling idx for the entire batch.
Input:
BxNxC array
Output:
BxNxC array
"""
idx = np.arange(batch_data.shape[1])
np.random.shuffle(idx)
return batch_data[:, idx, :]
def rotate_point_cloud(batch_data):
"""Randomly rotate the point clouds to augument the dataset
rotation is per shape based along up direction
Input:
BxNx3 array, original batch of point clouds
Return:
BxNx3 array, rotated batch of point clouds
"""
rotated_data = np.zeros(batch_data.shape, dtype=np.float32)
for k in range(batch_data.shape[0]):
rotation_angle = np.random.uniform() * 2 * np.pi
cosval = np.cos(rotation_angle)
sinval = np.sin(rotation_angle)
rotation_matrix = np.array(
[[cosval, 0, sinval], [0, 1, 0], [-sinval, 0, cosval]]
)
shape_pc = batch_data[k, ...]
rotated_data[k, ...] = np.dot(
shape_pc.reshape((-1, 3)), rotation_matrix
)
return rotated_data
def rotate_point_cloud_z(batch_data):
"""Randomly rotate the point clouds to augument the dataset
rotation is per shape based along up direction
Input:
BxNx3 array, original batch of point clouds
Return:
BxNx3 array, rotated batch of point clouds
"""
rotated_data = np.zeros(batch_data.shape, dtype=np.float32)
for k in range(batch_data.shape[0]):
rotation_angle = np.random.uniform() * 2 * np.pi
cosval = np.cos(rotation_angle)
sinval = np.sin(rotation_angle)
rotation_matrix = np.array(
[[cosval, sinval, 0], [-sinval, cosval, 0], [0, 0, 1]]
)
shape_pc = batch_data[k, ...]
rotated_data[k, ...] = np.dot(
shape_pc.reshape((-1, 3)), rotation_matrix
)
return rotated_data
def rotate_point_cloud_with_normal(batch_xyz_normal):
"""Randomly rotate XYZ, normal point cloud.
Input:
batch_xyz_normal: B,N,6, first three channels are XYZ, last 3 all normal
Output:
B,N,6, rotated XYZ, normal point cloud
"""
for k in range(batch_xyz_normal.shape[0]):
rotation_angle = np.random.uniform() * 2 * np.pi
cosval = np.cos(rotation_angle)
sinval = np.sin(rotation_angle)
rotation_matrix = np.array(
[[cosval, 0, sinval], [0, 1, 0], [-sinval, 0, cosval]]
)
shape_pc = batch_xyz_normal[k, :, 0:3]
shape_normal = batch_xyz_normal[k, :, 3:6]
batch_xyz_normal[k, :, 0:3] = np.dot(
shape_pc.reshape((-1, 3)), rotation_matrix
)
batch_xyz_normal[k, :, 3:6] = np.dot(
shape_normal.reshape((-1, 3)), rotation_matrix
)
return batch_xyz_normal
def rotate_perturbation_point_cloud_with_normal(
batch_data, angle_sigma=0.06, angle_clip=0.18
):
"""Randomly perturb the point clouds by small rotations
Input:
BxNx6 array, original batch of point clouds and point normals
Return:
BxNx3 array, rotated batch of point clouds
"""
rotated_data = np.zeros(batch_data.shape, dtype=np.float32)
for k in range(batch_data.shape[0]):
angles = np.clip(
angle_sigma * np.random.randn(3), -angle_clip, angle_clip
)
Rx = np.array(
[
[1, 0, 0],
[0, np.cos(angles[0]), -np.sin(angles[0])],
[0, np.sin(angles[0]), np.cos(angles[0])],
]
)
Ry = np.array(
[
[np.cos(angles[1]), 0, np.sin(angles[1])],
[0, 1, 0],
[-np.sin(angles[1]), 0, np.cos(angles[1])],
]
)
Rz = np.array(
[
[np.cos(angles[2]), -np.sin(angles[2]), 0],
[np.sin(angles[2]), np.cos(angles[2]), 0],
[0, 0, 1],
]
)
R = np.dot(Rz, np.dot(Ry, Rx))
shape_pc = batch_data[k, :, 0:3]
shape_normal = batch_data[k, :, 3:6]
rotated_data[k, :, 0:3] = np.dot(shape_pc.reshape((-1, 3)), R)
rotated_data[k, :, 3:6] = np.dot(shape_normal.reshape((-1, 3)), R)
return rotated_data
def rotate_point_cloud_by_angle(batch_data, rotation_angle):
"""Rotate the point cloud along up direction with certain angle.
Input:
BxNx3 array, original batch of point clouds
Return:
BxNx3 array, rotated batch of point clouds
"""
rotated_data = np.zeros(batch_data.shape, dtype=np.float32)
for k in range(batch_data.shape[0]):
# rotation_angle = np.random.uniform() * 2 * np.pi
cosval = np.cos(rotation_angle)
sinval = np.sin(rotation_angle)
rotation_matrix = np.array(
[[cosval, 0, sinval], [0, 1, 0], [-sinval, 0, cosval]]
)
shape_pc = batch_data[k, :, 0:3]
rotated_data[k, :, 0:3] = np.dot(
shape_pc.reshape((-1, 3)), rotation_matrix
)
return rotated_data
def rotate_point_cloud_by_angle_with_normal(batch_data, rotation_angle):
"""Rotate the point cloud along up direction with certain angle.
Input:
BxNx6 array, original batch of point clouds with normal
scalar, angle of rotation
Return:
BxNx6 array, rotated batch of point clouds iwth normal
"""
rotated_data = np.zeros(batch_data.shape, dtype=np.float32)
for k in range(batch_data.shape[0]):
# rotation_angle = np.random.uniform() * 2 * np.pi
cosval = np.cos(rotation_angle)
sinval = np.sin(rotation_angle)
rotation_matrix = np.array(
[[cosval, 0, sinval], [0, 1, 0], [-sinval, 0, cosval]]
)
shape_pc = batch_data[k, :, 0:3]
shape_normal = batch_data[k, :, 3:6]
rotated_data[k, :, 0:3] = np.dot(
shape_pc.reshape((-1, 3)), rotation_matrix
)
rotated_data[k, :, 3:6] = np.dot(
shape_normal.reshape((-1, 3)), rotation_matrix
)
return rotated_data
def rotate_perturbation_point_cloud(
batch_data, angle_sigma=0.06, angle_clip=0.18
):
"""Randomly perturb the point clouds by small rotations
Input:
BxNx3 array, original batch of point clouds
Return:
BxNx3 array, rotated batch of point clouds
"""
rotated_data = np.zeros(batch_data.shape, dtype=np.float32)
for k in range(batch_data.shape[0]):
angles = np.clip(
angle_sigma * np.random.randn(3), -angle_clip, angle_clip
)
Rx = np.array(
[
[1, 0, 0],
[0, np.cos(angles[0]), -np.sin(angles[0])],
[0, np.sin(angles[0]), np.cos(angles[0])],
]
)
Ry = np.array(
[
[np.cos(angles[1]), 0, np.sin(angles[1])],
[0, 1, 0],
[-np.sin(angles[1]), 0, np.cos(angles[1])],
]
)
Rz = np.array(
[
[np.cos(angles[2]), -np.sin(angles[2]), 0],
[np.sin(angles[2]), np.cos(angles[2]), 0],
[0, 0, 1],
]
)
R = np.dot(Rz, np.dot(Ry, Rx))
shape_pc = batch_data[k, ...]
rotated_data[k, ...] = np.dot(shape_pc.reshape((-1, 3)), R)
return rotated_data
def jitter_point_cloud(batch_data, sigma=0.01, clip=0.05):
"""Randomly jitter points. jittering is per point.
Input:
BxNx3 array, original batch of point clouds
Return:
BxNx3 array, jittered batch of point clouds
"""
B, N, C = batch_data.shape
assert clip > 0
jittered_data = np.clip(sigma * np.random.randn(B, N, C), -1 * clip, clip)
jittered_data += batch_data
return jittered_data
def shift_point_cloud(batch_data, shift_range=0.1):
"""Randomly shift point cloud. Shift is per point cloud.
Input:
BxNx3 array, original batch of point clouds
Return:
BxNx3 array, shifted batch of point clouds
"""
B, N, C = batch_data.shape
shifts = np.random.uniform(-shift_range, shift_range, (B, 3))
for batch_index in range(B):
batch_data[batch_index, :, :] += shifts[batch_index, :]
return batch_data
def random_scale_point_cloud(batch_data, scale_low=0.8, scale_high=1.25):
"""Randomly scale the point cloud. Scale is per point cloud.
Input:
BxNx3 array, original batch of point clouds
Return:
BxNx3 array, scaled batch of point clouds
"""
B, N, C = batch_data.shape
scales = np.random.uniform(scale_low, scale_high, B)
for batch_index in range(B):
batch_data[batch_index, :, :] *= scales[batch_index]
return batch_data
def random_point_dropout(batch_pc, max_dropout_ratio=0.875):
"""batch_pc: BxNx3"""
for b in range(batch_pc.shape[0]):
dropout_ratio = np.random.random() * max_dropout_ratio # 0~0.875
drop_idx = np.where(
np.random.random((batch_pc.shape[1])) <= dropout_ratio
)[0]
if len(drop_idx) > 0:
dropout_ratio = (
np.random.random() * max_dropout_ratio
) # 0~0.875 # not need
batch_pc[b, drop_idx, :] = batch_pc[
b, 0, :
] # set to the first point
return batch_pc