glb-autorigger / src /data /vertex_group.py
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from abc import ABC, abstractmethod
from collections import defaultdict
from copy import deepcopy
from dataclasses import dataclass
from numpy import ndarray
from scipy.spatial import cKDTree # type: ignore
from scipy.sparse import csr_matrix
from scipy.sparse.csgraph import shortest_path, connected_components
from typing import Dict, List, Optional, Literal
import numpy as np
from ..rig_package.info.asset import Asset
@dataclass(frozen=True)
class VertexGroup(ABC):
@classmethod
@abstractmethod
def parse(cls, **kwargs) -> 'VertexGroup':
pass
@abstractmethod
def get_vertex_group(self, asset: Asset) -> Dict[str, ndarray]:
pass
@dataclass(frozen=True)
class VertexGroupSkin(VertexGroup):
"""capture skin"""
normalize: bool=True
@classmethod
def parse(cls, **kwargs) -> 'VertexGroupSkin':
return VertexGroupSkin(normalize=kwargs.get('normalize', True))
def get_vertex_group(self, asset: Asset) -> Dict[str, ndarray]:
if asset.skin is None:
raise ValueError("do not have skin")
if self.normalize:
asset.normalize_skin()
return {'skin': asset.skin.copy()}
@dataclass(frozen=True)
class VertexGroupVoxelSkin(VertexGroup):
"""capture voxel skin"""
grid: int
alpha: float
link_dis: float
grid_query: int
vertex_query: int
grid_weight: float
mode: Literal['square', 'exp']
@classmethod
def parse(cls, **kwargs) -> 'VertexGroupVoxelSkin':
return VertexGroupVoxelSkin(
grid=kwargs.get('grid', 64),
alpha=kwargs.get('alpha', 0.5),
link_dis=kwargs.get('link_dis', 0.00001),
grid_query=kwargs.get('grid_query', 27),
vertex_query=kwargs.get('vertex_query', 27),
grid_weight=kwargs.get('grid_weight', 3.0),
mode=kwargs.get('mode', 'square'),
)
def get_vertex_group(self, asset: Asset) -> Dict[str, ndarray]:
if asset.vertices is None:
raise ValueError("do not have vertices")
if asset.faces is None:
raise ValueError("do not have faces")
if asset.joints is None:
raise ValueError("do not have joints")
# normalize into [-1, 1] first
min_vals = np.min(asset.vertices, axis=0)
max_vals = np.max(asset.vertices, axis=0)
center = (min_vals + max_vals) / 2
scale = np.max(max_vals - min_vals) / 2
normalized_vertices = (asset.vertices - center) / scale
normalized_joints = (asset.joints - center) / scale
grid_coords = asset.voxel().coords
skin = voxel_skin(
grid=self.grid,
grid_coords=grid_coords,
joints=normalized_joints,
vertices=normalized_vertices,
faces=asset.faces,
alpha=self.alpha,
link_dis=self.link_dis,
grid_query=self.grid_query,
vertex_query=self.vertex_query,
grid_weight=self.grid_weight,
mode=self.mode,
)
skin = np.nan_to_num(skin, nan=0., posinf=0., neginf=0.)
return {'voxel_skin': skin,}
def voxel_skin(
grid: int,
grid_coords: ndarray, # (M, 3)
joints: ndarray, # (J, 3)
vertices: ndarray, # (N, 3)
faces: ndarray, # (F, 3)
alpha: float=0.5,
link_dis: float=0.00001,
grid_query: int=27,
vertex_query: int=27,
grid_weight: float=3.0,
voxel_size: Optional[float]=None,
mode: str='square',
parents: Optional[ndarray]=None,
):
# modified from https://dl.acm.org/doi/pdf/10.1145/2485895.2485919
assert mode in ['square', 'exp']
J = joints.shape[0]
M = grid_coords.shape[0]
N = vertices.shape[0]
if voxel_size is None:
_range = 2/grid*1.74
else:
_range = voxel_size*1.74
grid_tree = cKDTree(grid_coords)
vertex_tree = cKDTree(vertices)
if parents is not None:
son = defaultdict(list)
for i, p in enumerate(parents):
if i == -1:
continue
son[p].append(i)
divide_joints = []
joints_map = []
for u in range(len(parents)):
if len(son[u]) != 1:
divide_joints.append(joints[u])
joints_map.append(u)
else:
pu = joints[u]
pv = joints[son[u][0]]
seg = 10
for i in range(seg+1):
p = (pu*i + pv*(seg-i)) / seg
divide_joints.append(p)
joints_map.append(u)
divide_joints = np.stack(divide_joints)
joints_map = np.array(joints_map)
else:
divide_joints = joints
joints_map = np.arange(joints.shape[0])
joint_tree = cKDTree(divide_joints)
# make combined vertices
# 0 ~ N-1: mesh vertices
# N ~ N+M-1: grid vertices
combined_vertices = np.concatenate([vertices, grid_coords], axis=0)
# link adjacent grids
dist, idx = grid_tree.query(grid_coords, grid_query) # 3*3*3
dist = dist[:, 1:]
idx = idx[:, 1:]
mask = (0 < dist) & (dist < _range)
source_grid2grid = np.repeat(np.arange(M), grid_query-1)[mask.ravel()] + N
to_grid2grid = idx[mask] + N
weight_grid2grid = dist[mask] * grid_weight
# link very close vertices
dist, idx = vertex_tree.query(vertices, 4)
dist = dist[:, 1:]
idx = idx[:, 1:]
mask = (0 < dist) & (dist < link_dis)
source_close = np.repeat(np.arange(N), 3)[mask.ravel()]
to_close = idx[mask]
weight_close = dist[mask]
# link grids to mesh vertices
dist, idx = vertex_tree.query(grid_coords, vertex_query)
mask = (0 < dist) & (dist < _range) # sqrt(3)
source_grid2vertex = np.repeat(np.arange(M), vertex_query)[mask.ravel()] + N
to_grid2vertex = idx[mask]
weight_grid2vertex = dist[mask]
# build combined vertices tree
combined_tree = cKDTree(combined_vertices)
# link bones to the neartest vertices
_, joint_indices = combined_tree.query(divide_joints)
# build graph
source_vertex2vertex = np.concatenate([faces[:, 0], faces[:, 1], faces[:, 2]], axis=0)
to_vertex2vertex = np.concatenate([faces[:, 1], faces[:, 2], faces[:, 0]], axis=0)
weight_vertex2vertex = np.sqrt(((vertices[source_vertex2vertex] - vertices[to_vertex2vertex])**2).sum(axis=-1))
graph = csr_matrix(
(np.concatenate([weight_close, weight_vertex2vertex, weight_grid2grid, weight_grid2vertex]),
(
np.concatenate([source_close, source_vertex2vertex, source_grid2grid, source_grid2vertex], axis=0),
np.concatenate([to_close, to_vertex2vertex, to_grid2grid, to_grid2vertex], axis=0)),
),
shape=(N+M, N+M),
)
# get shortest path (J, N+M)
dist_matrix = shortest_path(graph, method='D', directed=False, indices=joint_indices)
# (sum_J, N)
dis_vertex2bone = dist_matrix[:, :N]
unreachable = np.isinf(dis_vertex2bone).all(axis=0)
k = min(J, 3)
dist, idx = joint_tree.query(vertices[unreachable], k)
# make sure at least one value in dis is not inf
unreachable_indices = np.where(unreachable)[0]
row_indices = idx
col_indices = np.repeat(unreachable_indices, k).reshape(-1, k)
dis_vertex2bone[row_indices, col_indices] = dist
finite_vals = dis_vertex2bone[np.isfinite(dis_vertex2bone)]
max_dis = np.max(finite_vals)
dis_vertex2bone = np.nan_to_num(dis_vertex2bone, nan=max_dis, posinf=max_dis, neginf=max_dis)
dis_vertex2bone = np.maximum(dis_vertex2bone, 1e-6)
# turn dis2bone to dis2vertex
dis_vertex2joint = np.full((joints.shape[0], vertices.shape[0]), max_dis)
for i in range(len(dis_vertex2bone)):
dis_vertex2joint[joints_map[i]] = np.minimum(dis_vertex2bone[i], dis_vertex2joint[joints_map[i]])
# (J, N)
if mode == 'exp':
skin = np.exp(-dis_vertex2joint / max_dis * 20.0)
elif mode == 'square':
skin = (1./((1-alpha)*dis_vertex2joint + alpha*dis_vertex2joint**2))**2
else:
assert False, f'invalid mode: {mode}'
skin = skin / skin.sum(axis=0)
# (N, J)
skin = skin.transpose()
return skin
def get_vertex_groups(*args) -> List[VertexGroup]:
vertex_groups = []
MAP = {
'skin': VertexGroupSkin,
'voxel_skin': VertexGroupVoxelSkin,
}
MAP: Dict[str, type[VertexGroup]]
for (i, c) in enumerate(args):
__target__ = c.get('__target__')
assert __target__ is not None, f"do not find `__target__` in config of vertex_groups of position {i}"
assert __target__ in MAP, f"expect: [{','.join(MAP.keys())}], found: {__target__}"
c = deepcopy(c)
del c['__target__']
vertex_groups.append(MAP[__target__].parse(**c))
return vertex_groups