This commit is contained in:
hofee 2024-10-06 11:49:03 +08:00
parent e315fd99ee
commit a84417ef62
2 changed files with 30 additions and 20 deletions

View File

@ -162,8 +162,8 @@ class NBVReconstructionDataset(BaseDataset):
)
combined_scanned_views_pts = np.concatenate(scanned_views_pts, axis=0)
voxel_downsampled_combined_scanned_pts_np = (
PtsUtil.voxel_downsample_point_cloud(combined_scanned_views_pts, 0.002)
voxel_downsampled_combined_scanned_pts_np, _ = (
PtsUtil.voxelize_points(combined_scanned_views_pts, 0.002)
)
random_downsampled_combined_scanned_pts_np = (
PtsUtil.random_downsample_point_cloud(

View File

@ -12,12 +12,6 @@ class PtsUtil:
downsampled_pc = o3d_pc.voxel_down_sample(voxel_size)
return np.asarray(downsampled_pc.points)
@staticmethod
def transform_point_cloud(points, pose_mat):
points_h = np.concatenate([points, np.ones((points.shape[0], 1))], axis=1)
points_h = np.dot(pose_mat, points_h.T).T
return points_h[:, :3]
@staticmethod
def random_downsample_point_cloud(point_cloud, num_points, require_idx=False):
if point_cloud.shape[0] == 0:
@ -29,6 +23,28 @@ class PtsUtil:
return point_cloud[idx], idx
return point_cloud[idx]
@staticmethod
def fps_downsample_point_cloud(point_cloud, num_points, require_mask=False):
N = point_cloud.shape[0]
mask = np.zeros(N, dtype=bool)
sampled_indices = np.zeros(num_points, dtype=int)
sampled_indices[0] = np.random.randint(0, N)
mask[sampled_indices[0]] = True
distances = np.linalg.norm(point_cloud - point_cloud[sampled_indices[0]], axis=1)
for i in range(1, num_points):
farthest_index = np.argmax(distances)
sampled_indices[i] = farthest_index
mask[farthest_index] = True
new_distances = np.linalg.norm(point_cloud - point_cloud[farthest_index], axis=1)
distances = np.minimum(distances, new_distances)
sampled_points = point_cloud[sampled_indices]
if require_mask:
return sampled_points, mask
return sampled_points
@staticmethod
def random_downsample_point_cloud_tensor(point_cloud, num_points):
idx = torch.randint(0, len(point_cloud), (num_points,))
@ -40,6 +56,12 @@ class PtsUtil:
unique_voxels = np.unique(voxel_indices, axis=0, return_inverse=True)
return unique_voxels
@staticmethod
def transform_point_cloud(points, pose_mat):
points_h = np.concatenate([points, np.ones((points.shape[0], 1))], axis=1)
points_h = np.dot(pose_mat, points_h.T).T
return points_h[:, :3]
@staticmethod
def get_overlapping_points(point_cloud_L, point_cloud_R, voxel_size=0.005, require_idx=False):
voxels_L, indices_L = PtsUtil.voxelize_points(point_cloud_L, voxel_size)
@ -56,18 +78,6 @@ class PtsUtil:
return overlapping_points, mask_L
return overlapping_points
@staticmethod
def new_filter_points(points, normals, cam_pose, theta=75, require_idx=False):
camera_axis = -cam_pose[:3, 2]
normals_normalized = normals / np.linalg.norm(normals, axis=1, keepdims=True)
cos_theta = np.dot(normals_normalized, camera_axis)
theta_rad = np.deg2rad(theta)
idx = cos_theta > np.cos(theta_rad)
filtered_points= points[idx]
if require_idx:
return filtered_points, idx
return filtered_points
@staticmethod
def filter_points(points, points_normals, cam_pose, voxel_size=0.002, theta=45, z_range=(0.2, 0.45)):