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mesh.py
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mesh.py
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import os
import cv2
import numpy as np
import trimesh
import torch
import torch.nn.functional as F
def dot(x, y):
return torch.sum(x * y, -1, keepdim=True)
def length(x, eps=1e-20):
return torch.sqrt(torch.clamp(dot(x, x), min=eps))
def safe_normalize(x, eps=1e-20):
return x / length(x, eps)
class Mesh:
def __init__(
self,
v=None,
f=None,
vn=None,
fn=None,
vt=None,
ft=None,
albedo=None,
device=None,
):
self.device = device
self.v = v
self.vn = vn
self.vt = vt
self.f = f
self.fn = fn
self.ft = ft
# only support a single albedo
self.albedo = albedo
self.ori_center = 0
self.ori_scale = 1
@classmethod
def load(cls, path=None, resize=True, **kwargs):
# assume init with kwargs
if path is None:
mesh = cls(**kwargs)
# obj supports face uv
elif path.endswith(".obj"):
mesh = cls.load_obj(path, **kwargs)
# trimesh only supports vertex uv, but can load more formats
else:
mesh = cls.load_trimesh(path, **kwargs)
print(f"[Mesh loading] v: {mesh.v.shape}, f: {mesh.f.shape}")
# auto-normalize
if resize:
mesh.auto_size()
# auto-fix normal
if mesh.vn is None:
mesh.auto_normal()
print(f"[Mesh loading] vn: {mesh.vn.shape}, fn: {mesh.fn.shape}")
# auto-fix texture
if mesh.vt is None:
mesh.auto_uv(cache_path=path)
print(f"[Mesh loading] vt: {mesh.vt.shape}, ft: {mesh.ft.shape}")
return mesh
# load from obj file
@classmethod
def load_obj(cls, path, albedo_path=None, device=None, init_empty_tex=False):
assert os.path.splitext(path)[-1] == ".obj"
mesh = cls()
# device
if device is None:
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
mesh.device = device
# try to find texture from mtl file
if albedo_path is None:
mtl_path = path.replace(".obj", ".mtl")
if os.path.exists(mtl_path):
with open(mtl_path, "r") as f:
lines = f.readlines()
for line in lines:
split_line = line.split()
# empty line
if len(split_line) == 0:
continue
prefix = split_line[0]
# NOTE: simply use the first map_Kd as albedo!
if "map_Kd" in prefix:
albedo_path = os.path.join(os.path.dirname(path), split_line[1])
print(f"[load_obj] use texture from: {albedo_path}")
break
if init_empty_tex or albedo_path is None or not os.path.exists(albedo_path):
# init an empty texture
print(f"[load_obj] init empty albedo!")
# albedo = np.random.rand(1024, 1024, 3).astype(np.float32)
albedo = np.ones((1024, 1024, 3), dtype=np.float32) * np.array(
[0.5, 0.5, 0.5]
) # default color
else:
albedo = cv2.imread(albedo_path, cv2.IMREAD_UNCHANGED)
albedo = cv2.cvtColor(albedo, cv2.COLOR_BGR2RGB)
albedo = albedo.astype(np.float32) / 255
print(f"[load_obj] load texture: {albedo.shape}")
# import matplotlib.pyplot as plt
# plt.imshow(albedo)
# plt.show()
mesh.albedo = torch.tensor(albedo, dtype=torch.float32, device=device)
# load obj
with open(path, "r") as f:
lines = f.readlines()
def parse_f_v(fv):
# pass in a vertex term of a face, return {v, vt, vn} (-1 if not provided)
# supported forms:
# f v1 v2 v3
# f v1/vt1 v2/vt2 v3/vt3
# f v1/vt1/vn1 v2/vt2/vn2 v3/vt3/vn3
# f v1//vn1 v2//vn2 v3//vn3
xs = [int(x) - 1 if x != "" else -1 for x in fv.split("/")]
xs.extend([-1] * (3 - len(xs)))
return xs[0], xs[1], xs[2]
# NOTE: we ignore usemtl, and assume the mesh ONLY uses one material (first in mtl)
vertices, texcoords, normals = [], [], []
faces, tfaces, nfaces = [], [], []
for line in lines:
split_line = line.split()
# empty line
if len(split_line) == 0:
continue
# v/vn/vt
prefix = split_line[0].lower()
if prefix == "v":
vertices.append([float(v) for v in split_line[1:]])
elif prefix == "vn":
normals.append([float(v) for v in split_line[1:]])
elif prefix == "vt":
val = [float(v) for v in split_line[1:]]
texcoords.append([val[0], 1.0 - val[1]])
elif prefix == "f":
vs = split_line[1:]
nv = len(vs)
v0, t0, n0 = parse_f_v(vs[0])
for i in range(nv - 2): # triangulate (assume vertices are ordered)
v1, t1, n1 = parse_f_v(vs[i + 1])
v2, t2, n2 = parse_f_v(vs[i + 2])
faces.append([v0, v1, v2])
tfaces.append([t0, t1, t2])
nfaces.append([n0, n1, n2])
mesh.v = torch.tensor(vertices, dtype=torch.float32, device=device)
mesh.vt = (
torch.tensor(texcoords, dtype=torch.float32, device=device)
if len(texcoords) > 0
else None
)
mesh.vn = (
torch.tensor(normals, dtype=torch.float32, device=device)
if len(normals) > 0
else None
)
mesh.f = torch.tensor(faces, dtype=torch.int32, device=device)
mesh.ft = (
torch.tensor(tfaces, dtype=torch.int32, device=device)
if texcoords is not None
else None
)
mesh.fn = (
torch.tensor(nfaces, dtype=torch.int32, device=device)
if normals is not None
else None
)
return mesh
@classmethod
def load_trimesh(cls, path, device=None):
mesh = cls()
# device
if device is None:
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
mesh.device = device
# use trimesh to load glb, assume only has one single RootMesh...
_data = trimesh.load(path)
if isinstance(_data, trimesh.Scene):
mesh_keys = list(_data.geometry.keys())
assert (
len(mesh_keys) == 1
), f"{path} contains more than one meshes, not supported!"
_mesh = _data.geometry[mesh_keys[0]]
elif isinstance(_data, trimesh.Trimesh):
_mesh = _data
else:
raise NotImplementedError(f"type {type(_data)} not supported!")
# TODO: exception handling if no material
_material = _mesh.visual.material
if isinstance(_material, trimesh.visual.material.PBRMaterial):
texture = np.array(_material.baseColorTexture).astype(np.float32) / 255
elif isinstance(_material, trimesh.visual.material.SimpleMaterial):
texture = (
np.array(_material.to_pbr().baseColorTexture).astype(np.float32) / 255
)
else:
raise NotImplementedError(f"material type {type(_material)} not supported!")
print(f"[load_obj] load texture: {texture.shape}")
mesh.albedo = torch.tensor(texture, dtype=torch.float32, device=device)
vertices = _mesh.vertices
texcoords = _mesh.visual.uv
texcoords[:, 1] = 1 - texcoords[:, 1]
normals = _mesh.vertex_normals
# trimesh only support vertex uv...
faces = tfaces = nfaces = _mesh.faces
mesh.v = torch.tensor(vertices, dtype=torch.float32, device=device)
mesh.vt = (
torch.tensor(texcoords, dtype=torch.float32, device=device)
if len(texcoords) > 0
else None
)
mesh.vn = (
torch.tensor(normals, dtype=torch.float32, device=device)
if len(normals) > 0
else None
)
mesh.f = torch.tensor(faces, dtype=torch.int32, device=device)
mesh.ft = (
torch.tensor(tfaces, dtype=torch.int32, device=device)
if texcoords is not None
else None
)
mesh.fn = (
torch.tensor(nfaces, dtype=torch.int32, device=device)
if normals is not None
else None
)
return mesh
# aabb
def aabb(self):
return torch.min(self.v, dim=0).values, torch.max(self.v, dim=0).values
# unit size
@torch.no_grad()
def auto_size(self):
vmin, vmax = self.aabb()
self.ori_center = (vmax + vmin) / 2
self.ori_scale = 1.2 / torch.max(vmax - vmin).item() # to ~ [-0.6, 0.6]
self.v = (self.v - self.ori_center) * self.ori_scale
def auto_normal(self):
i0, i1, i2 = self.f[:, 0].long(), self.f[:, 1].long(), self.f[:, 2].long()
v0, v1, v2 = self.v[i0, :], self.v[i1, :], self.v[i2, :]
face_normals = torch.cross(v1 - v0, v2 - v0)
# Splat face normals to vertices
vn = torch.zeros_like(self.v)
vn.scatter_add_(0, i0[:, None].repeat(1, 3), face_normals)
vn.scatter_add_(0, i1[:, None].repeat(1, 3), face_normals)
vn.scatter_add_(0, i2[:, None].repeat(1, 3), face_normals)
# Normalize, replace zero (degenerated) normals with some default value
vn = torch.where(
dot(vn, vn) > 1e-20,
vn,
torch.tensor([0.0, 0.0, 1.0], dtype=torch.float32, device=vn.device),
)
vn = safe_normalize(vn)
self.vn = vn
self.fn = self.f
def auto_uv(self, cache_path=None):
# try to load cache
if cache_path is not None:
cache_path = cache_path.replace(".obj", "_uv.npz")
if cache_path is not None and os.path.exists(cache_path):
data = np.load(cache_path)
vt_np, ft_np = data["vt"], data["ft"]
else:
import xatlas
v_np = self.v.detach().cpu().numpy()
f_np = self.f.detach().int().cpu().numpy()
atlas = xatlas.Atlas()
atlas.add_mesh(v_np, f_np)
chart_options = xatlas.ChartOptions()
# chart_options.max_iterations = 4
atlas.generate(chart_options=chart_options)
vmapping, ft_np, vt_np = atlas[0] # [N], [M, 3], [N, 2]
# save to cache
if cache_path is not None:
np.savez(cache_path, vt=vt_np, ft=ft_np)
vt = torch.from_numpy(vt_np.astype(np.float32)).to(self.device)
ft = torch.from_numpy(ft_np.astype(np.int32)).to(self.device)
self.vt = vt
self.ft = ft
def to(self, device):
self.device = device
for name in ["v", "f", "vn", "fn", "vt", "ft", "albedo"]:
tensor = getattr(self, name)
if tensor is not None:
setattr(self, name, tensor.to(device))
return self
# write to ply file (only geom)
def write_ply(self, path):
assert path.endswith(".ply")
v_np = self.v.detach().cpu().numpy()
f_np = self.f.detach().cpu().numpy()
_mesh = trimesh.Trimesh(vertices=v_np, faces=f_np)
_mesh.export(path)
# write to obj file
def write(self, path):
mtl_path = path.replace(".obj", ".mtl")
albedo_path = path.replace(".obj", "_albedo.png")
v_np = self.v.detach().cpu().numpy()
vt_np = self.vt.detach().cpu().numpy() if self.vt is not None else None
vn_np = self.vn.detach().cpu().numpy() if self.vn is not None else None
f_np = self.f.detach().cpu().numpy()
ft_np = self.ft.detach().cpu().numpy() if self.ft is not None else None
fn_np = self.fn.detach().cpu().numpy() if self.fn is not None else None
with open(path, "w") as fp:
fp.write(f"mtllib {os.path.basename(mtl_path)} \n")
for v in v_np:
fp.write(f"v {v[0]} {v[1]} {v[2]} \n")
if vt_np is not None:
for v in vt_np:
fp.write(f"vt {v[0]} {1 - v[1]} \n")
if vn_np is not None:
for v in vn_np:
fp.write(f"vn {v[0]} {v[1]} {v[2]} \n")
fp.write(f"usemtl defaultMat \n")
for i in range(len(f_np)):
fp.write(
f'f {f_np[i, 0] + 1}/{ft_np[i, 0] + 1 if ft_np is not None else ""}/{fn_np[i, 0] + 1 if fn_np is not None else ""} \
{f_np[i, 1] + 1}/{ft_np[i, 1] + 1 if ft_np is not None else ""}/{fn_np[i, 1] + 1 if fn_np is not None else ""} \
{f_np[i, 2] + 1}/{ft_np[i, 2] + 1 if ft_np is not None else ""}/{fn_np[i, 2] + 1 if fn_np is not None else ""} \n'
)
with open(mtl_path, "w") as fp:
fp.write(f"newmtl defaultMat \n")
fp.write(f"Ka 1 1 1 \n")
fp.write(f"Kd 1 1 1 \n")
fp.write(f"Ks 0 0 0 \n")
fp.write(f"Tr 1 \n")
fp.write(f"illum 1 \n")
fp.write(f"Ns 0 \n")
fp.write(f"map_Kd {os.path.basename(albedo_path)} \n")
albedo = self.albedo.detach().cpu().numpy()
albedo = (albedo * 255).astype(np.uint8)
cv2.imwrite(albedo_path, cv2.cvtColor(albedo, cv2.COLOR_RGB2BGR))