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evaluate_dtu_mesh.py
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evaluate_dtu_mesh.py
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import numpy as np
import torch
import torch.nn.functional as F
from scene import Scene
import cv2
import os
import random
from os import makedirs, path
from argparse import ArgumentParser
from arguments import ModelParams, PipelineParams, get_combined_args
from gaussian_renderer import GaussianModel
import trimesh
from skimage.morphology import binary_dilation, disk
def best_fit_transform(A, B):
'''
Calculates the least-squares best-fit transform that maps corresponding points A to B in m spatial dimensions
Input:
A: Nxm numpy array of corresponding points
B: Nxm numpy array of corresponding points
Returns:
T: (m+1)x(m+1) homogeneous transformation matrix that maps A on to B
R: mxm rotation matrix
t: mx1 translation vector
'''
assert A.shape == B.shape
# get number of dimensions
m = A.shape[1]
# translate points to their centroids
centroid_A = np.mean(A, axis=0)
centroid_B = np.mean(B, axis=0)
AA = A - centroid_A
BB = B - centroid_B
# rotation matrix
H = np.dot(AA.T, BB)
U, S, Vt = np.linalg.svd(H)
R = np.dot(Vt.T, U.T)
# special reflection case
if np.linalg.det(R) < 0:
Vt[m-1,:] *= -1
R = np.dot(Vt.T, U.T)
# translation
t = centroid_B.T - np.dot(R,centroid_A.T)
# homogeneous transformation
T = np.identity(m+1)
T[:m, :m] = R
T[:m, m] = t
return T, R, t
def load_dtu_camera(DTU):
# Load projection matrix from file.
camtoworlds = []
for i in range(1, 64+1):
fname = path.join(DTU, f'Calibration/cal18/pos_{i:03d}.txt')
projection = np.loadtxt(fname, dtype=np.float32)
# Decompose projection matrix into pose and camera matrix.
camera_mat, rot_mat, t = cv2.decomposeProjectionMatrix(projection)[:3]
camera_mat = camera_mat / camera_mat[2, 2]
pose = np.eye(4, dtype=np.float32)
pose[:3, :3] = rot_mat.transpose()
pose[:3, 3] = (t[:3] / t[3])[:, 0]
pose = pose[:3]
camtoworlds.append(pose)
return camtoworlds
def cull_mesh(cameras, mesh):
vertices = mesh.vertices
# project and filter
vertices = torch.from_numpy(vertices).cuda()
vertices = torch.cat((vertices, torch.ones_like(vertices[:, :1])), dim=-1)
vertices = vertices.permute(1, 0)
vertices = vertices.float()
sampled_masks = []
for camera in cameras:
c2w = (camera.world_view_transform.T).inverse()
w2c = torch.inverse(c2w).cuda()
mask = camera.gt_alpha_mask
intrinsic = torch.eye(4)
intrinsic[0, 0] = camera.focal_x
intrinsic[1, 1] = camera.focal_y
intrinsic[0, 2] = camera.image_width / 2.
intrinsic[1, 2] = camera.image_height / 2.
intrinsic = intrinsic.cuda()
W, H = camera.image_width, camera.image_height
with torch.no_grad():
# transform and project
cam_points = intrinsic @ w2c @ vertices
pix_coords = cam_points[:2, :] / (cam_points[2, :].unsqueeze(0) + 1e-6)
pix_coords = pix_coords.permute(1, 0)
pix_coords[..., 0] /= W - 1
pix_coords[..., 1] /= H - 1
pix_coords = (pix_coords - 0.5) * 2
valid = ((pix_coords > -1. ) & (pix_coords < 1.)).all(dim=-1).float()
# dialate mask similar to unisurf
maski = mask[0, :, :].cpu().numpy().astype(np.float32) / 256.
maski = torch.from_numpy(binary_dilation(maski, disk(6))).float()[None, None].cuda()
sampled_mask = F.grid_sample(maski, pix_coords[None, None], mode='nearest', padding_mode='zeros', align_corners=True)[0, -1, 0]
sampled_mask = sampled_mask + (1. - valid)
sampled_masks.append(sampled_mask)
sampled_masks = torch.stack(sampled_masks, -1)
# filter
mask = (sampled_masks > 0.).all(dim=-1).cpu().numpy()
face_mask = mask[mesh.faces].all(axis=1)
mesh.update_vertices(mask)
mesh.update_faces(face_mask)
# Taking the biggest connected component
# print("Taking the biggest connected component")
# components = mesh.split(only_watertight=False)
# areas = np.array([c.area for c in components], dtype=np.float32)
# mesh_clean = components[areas.argmax()]
# return mesh_clean
return mesh
def evaluate_mesh(dataset : ModelParams, iteration : int, DTU_PATH : str):
gaussians = GaussianModel(dataset.sh_degree)
scene = Scene(dataset, gaussians, load_iteration=iteration, shuffle=False)
train_cameras = scene.getTrainCameras()
test_cameras = scene.getTestCameras()
dtu_cameras = load_dtu_camera(args.DTU)
gt_points = np.array([cam[:, 3] for cam in dtu_cameras])
points = []
for cam in train_cameras:
c2w = (cam.world_view_transform.T).inverse()
points.append(c2w[:3, 3].cpu().numpy())
points = np.array(points)
gt_points = gt_points[:points.shape[0]]
# align the scale of two point clouds
scale_points = np.linalg.norm(points - points.mean(axis=0), axis=1).mean()
scale_gt_points = np.linalg.norm(gt_points - gt_points.mean(axis=0), axis=1).mean()
points = points * scale_gt_points / scale_points
_, r, t = best_fit_transform(points, gt_points)
mesh_dir = "tsdf"
filename = "tsdf.ply"
# load mesh
mesh_file = os.path.join(dataset.model_path, "test/ours_{}".format(iteration), mesh_dir, filename)
mesh = trimesh.load(mesh_file)
mesh = cull_mesh(train_cameras, mesh)
culled_mesh_file = os.path.join(dataset.model_path, "test/ours_{}".format(iteration), mesh_dir, filename.replace(".ply", "_culled.ply"))
mesh.export(culled_mesh_file)
# align the mesh
mesh.vertices = mesh.vertices * scale_gt_points / scale_points
mesh.vertices = mesh.vertices @ r.T + t
aligned_mesh_file = os.path.join(dataset.model_path, "test/ours_{}".format(iteration), mesh_dir, filename.replace(".ply", "_aligned.ply"))
mesh.export(aligned_mesh_file)
# evaluate
out_dir = os.path.join(dataset.model_path, "test/ours_{}".format(iteration), mesh_dir)
scan = dataset.model_path.split("/")[-1][4:]
cmd = f"python dtu_eval/eval.py --data {aligned_mesh_file} --scan {scan} --mode mesh --dataset_dir {DTU_PATH} --vis_out_dir {out_dir}"
print(cmd)
os.system(cmd)
if __name__ == "__main__":
# Set up command line argument parser
parser = ArgumentParser(description="Testing script parameters")
model = ModelParams(parser, sentinel=True)
pipeline = PipelineParams(parser)
parser.add_argument("--iteration", default=30_000, type=int)
parser.add_argument("--skip_train", action="store_true")
parser.add_argument("--skip_test", action="store_true")
parser.add_argument("--quiet", action="store_true")
parser.add_argument('--scan_id', type=str, help='scan id of the input mesh')
parser.add_argument('--DTU', type=str, default='dtu_eval/Offical_DTU_Dataset', help='path to the GT DTU point clouds')
args = get_combined_args(parser)
print("evaluating " + args.model_path)
random.seed(0)
np.random.seed(0)
torch.manual_seed(0)
torch.cuda.set_device(torch.device("cuda:0"))
evaluate_mesh(model.extract(args), args.iteration, args.DTU)