| import numpy as np |
| import torch |
| import torch.nn.functional as F |
| import os |
| import cv2 |
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| |
| def face_vertices(vertices, faces): |
| """ |
| :param vertices: [batch size, number of vertices, 3] |
| :param faces: [batch size, number of faces, 3] |
| :return: [batch size, number of faces, 3, 3] |
| """ |
| assert (vertices.ndimension() == 3) |
| assert (faces.ndimension() == 3) |
| assert (vertices.shape[0] == faces.shape[0]) |
| assert (vertices.shape[2] == 3) |
| assert (faces.shape[2] == 3) |
|
|
| bs, nv = vertices.shape[:2] |
| bs, nf = faces.shape[:2] |
| device = vertices.device |
| faces = faces + (torch.arange(bs, dtype=torch.int32).to(device) * nv)[:, None, None] |
| vertices = vertices.reshape((bs * nv, 3)) |
| |
| return vertices[faces.long()] |
| |
| def vertex_normals(vertices, faces): |
| """ |
| :param vertices: [batch size, number of vertices, 3] |
| :param faces: [batch size, number of faces, 3] |
| :return: [batch size, number of vertices, 3] |
| """ |
| assert (vertices.ndimension() == 3) |
| assert (faces.ndimension() == 3) |
| assert (vertices.shape[0] == faces.shape[0]) |
| assert (vertices.shape[2] == 3) |
| assert (faces.shape[2] == 3) |
| bs, nv = vertices.shape[:2] |
| bs, nf = faces.shape[:2] |
| device = vertices.device |
| normals = torch.zeros(bs * nv, 3).to(device) |
|
|
| faces = faces + (torch.arange(bs, dtype=torch.int32).to(device) * nv)[:, None, None] |
| vertices_faces = vertices.reshape((bs * nv, 3))[faces.long()] |
|
|
| faces = faces.reshape(-1, 3) |
| vertices_faces = vertices_faces.reshape(-1, 3, 3) |
|
|
| normals.index_add_(0, faces[:, 1].long(), |
| torch.cross(vertices_faces[:, 2] - vertices_faces[:, 1], vertices_faces[:, 0] - vertices_faces[:, 1])) |
| normals.index_add_(0, faces[:, 2].long(), |
| torch.cross(vertices_faces[:, 0] - vertices_faces[:, 2], vertices_faces[:, 1] - vertices_faces[:, 2])) |
| normals.index_add_(0, faces[:, 0].long(), |
| torch.cross(vertices_faces[:, 1] - vertices_faces[:, 0], vertices_faces[:, 2] - vertices_faces[:, 0])) |
|
|
| normals = F.normalize(normals, eps=1e-6, dim=1) |
| normals = normals.reshape((bs, nv, 3)) |
| |
| return normals |
|
|
| def batch_orth_proj(X, camera): |
| ''' orthgraphic projection |
| X: 3d vertices, [bz, n_point, 3] |
| camera: scale and translation, [bz, 3], [scale, tx, ty] |
| ''' |
| camera = camera.clone().view(-1, 1, 3) |
| X_trans = X[:, :, :2] + camera[:, :, 1:] |
| X_trans = torch.cat([X_trans, X[:,:,2:]], 2) |
| Xn = (camera[:, :, 0:1] * X_trans) |
| return Xn |
|
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|
| from pytorch3d.renderer import look_at_view_transform |
|
|
| def weak_cam2persp_cam(wcam, focal_length=12, z_dist=10): |
| """_summary_ |
| |
| Args: |
| wcam (torch.Tensor): In shape Bx3, for each [s, x, y] |
| focal_length (int, optional): perspective camera focal length. Defaults to 12. |
| z_dist (int, optional): perspective camera at (0, 0, z). Defaults to 10. |
| |
| Returns: |
| R, T: Rotation matrix and translation vector |
| """ |
| bz = wcam.shape[0] |
| R, T = look_at_view_transform(dist=z_dist, device=wcam.device) |
| R = R.repeat(bz, 1, 1) |
| T = T.repeat(bz, 1) |
| T[:, 2] = focal_length / wcam[:, 0] |
| T[:, 1] = wcam[:, 2] |
| T[:, 0] = -wcam[:, 1] |
| return R, T |
|
|
| def cam2persp_cam_fov(wcam, tanfov=1/12): |
| """ |
| scale by changing zdist,unchange fov |
| Returns: w2c |
| R, T: Rotation matrix and translation vector |
| """ |
| |
| flx=-1.0 |
| fly= 1.0 |
| flz=-1.0 |
| bz = wcam.shape[0] |
| z_dist=1/tanfov |
| R=torch.tensor([[flx,0,0], |
| [0,fly,0], |
| [0,0,flz]], device=wcam.device, dtype=torch.float32) |
| T=torch.tensor([0,0,z_dist], device=wcam.device, dtype=torch.float32) |
| R = R.repeat(bz, 1, 1) |
| T = T.repeat(bz, 1) |
| T[:, 2] = T[:, 2] / wcam[:, 0] |
| T[:, 1] = wcam[:, 2] *fly |
| T[:, 0] = wcam[:, 1] *flx |
| return R, T |
| def cam2persp_cam_fov_body(wcam, tanfov=1/12): |
| """ |
| scale by changing zdist,unchange fov |
| Returns: w2c |
| R, T: Rotation matrix and translation vector |
| """ |
| |
| flx=-1.0 |
| fly=-1.0 |
| flz=1.0 |
| bz = wcam.shape[0] |
| z_dist=1/tanfov |
| R=torch.tensor([[flx,0,0], |
| [0,fly,0], |
| [0,0,flz]],device=wcam.device,dtype=torch.float32) |
| T=torch.tensor([0,0,z_dist],device=wcam.device,dtype=torch.float32) |
| R = R.repeat(bz, 1, 1) |
| T = T.repeat(bz, 1) |
| T[:, 2] = T[:, 2] / wcam[:, 0] |
| T[:, 1] = wcam[:, 2]*fly |
| T[:, 0] = wcam[:, 1]*flx |
| return R, T |
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