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import os |
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import numpy as np |
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import torch |
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import torchvision |
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import trimesh |
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import open3d as o3d |
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import tinyobjloader |
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import os.path as osp |
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import _pickle as cPickle |
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from termcolor import colored |
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from scipy.spatial import cKDTree |
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from pytorch3d.structures import Meshes |
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import torch.nn.functional as F |
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import lib.smplx as smplx |
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from lib.common.render_utils import Pytorch3dRasterizer |
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from pytorch3d.renderer.mesh import rasterize_meshes |
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from PIL import Image, ImageFont, ImageDraw |
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from pytorch3d.loss import mesh_laplacian_smoothing, mesh_normal_consistency |
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class Format: |
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end = '\033[0m' |
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start = '\033[4m' |
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class SMPLX: |
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def __init__(self): |
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self.current_dir = osp.join(osp.dirname(__file__), "../../data/smpl_related") |
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self.smpl_verts_path = osp.join(self.current_dir, "smpl_data/smpl_verts.npy") |
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self.smpl_faces_path = osp.join(self.current_dir, "smpl_data/smpl_faces.npy") |
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self.smplx_verts_path = osp.join(self.current_dir, "smpl_data/smplx_verts.npy") |
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self.smplx_faces_path = osp.join(self.current_dir, "smpl_data/smplx_faces.npy") |
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self.cmap_vert_path = osp.join(self.current_dir, "smpl_data/smplx_cmap.npy") |
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self.smplx_to_smplx_path = osp.join(self.current_dir, "smpl_data/smplx_to_smpl.pkl") |
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self.smplx_eyeball_fid_path = osp.join(self.current_dir, "smpl_data/eyeball_fid.npy") |
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self.smplx_fill_mouth_fid_path = osp.join(self.current_dir, "smpl_data/fill_mouth_fid.npy") |
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self.smplx_flame_vid_path = osp.join( |
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self.current_dir, "smpl_data/FLAME_SMPLX_vertex_ids.npy" |
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) |
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self.smplx_mano_vid_path = osp.join(self.current_dir, "smpl_data/MANO_SMPLX_vertex_ids.pkl") |
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self.front_flame_path = osp.join(self.current_dir, "smpl_data/FLAME_face_mask_ids.npy") |
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self.smplx_vertex_lmkid_path = osp.join( |
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self.current_dir, "smpl_data/smplx_vertex_lmkid.npy" |
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) |
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self.smplx_faces = np.load(self.smplx_faces_path) |
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self.smplx_verts = np.load(self.smplx_verts_path) |
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self.smpl_verts = np.load(self.smpl_verts_path) |
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self.smpl_faces = np.load(self.smpl_faces_path) |
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self.smplx_vertex_lmkid = np.load(self.smplx_vertex_lmkid_path) |
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self.smplx_eyeball_fid_mask = np.load(self.smplx_eyeball_fid_path) |
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self.smplx_mouth_fid = np.load(self.smplx_fill_mouth_fid_path) |
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self.smplx_mano_vid_dict = np.load(self.smplx_mano_vid_path, allow_pickle=True) |
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self.smplx_mano_vid = np.concatenate( |
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[self.smplx_mano_vid_dict["left_hand"], self.smplx_mano_vid_dict["right_hand"]] |
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) |
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self.smplx_flame_vid = np.load(self.smplx_flame_vid_path, allow_pickle=True) |
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self.smplx_front_flame_vid = self.smplx_flame_vid[np.load(self.front_flame_path)] |
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self.mano_vertex_mask = torch.zeros(self.smplx_verts.shape[0], ).index_fill_( |
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0, torch.tensor(self.smplx_mano_vid), 1.0 |
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) |
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self.front_flame_vertex_mask = torch.zeros(self.smplx_verts.shape[0], ).index_fill_( |
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0, torch.tensor(self.smplx_front_flame_vid), 1.0 |
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) |
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self.eyeball_vertex_mask = torch.zeros(self.smplx_verts.shape[0], ).index_fill_( |
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0, torch.tensor(self.smplx_faces[self.smplx_eyeball_fid_mask].flatten()), 1.0 |
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) |
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self.smplx_to_smpl = cPickle.load(open(self.smplx_to_smplx_path, "rb")) |
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self.model_dir = osp.join(self.current_dir, "models") |
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self.tedra_dir = osp.join(self.current_dir, "../tedra_data") |
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self.ghum_smpl_pairs = torch.tensor( |
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[ |
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(0, 24), (2, 26), (5, 25), (7, 28), (8, 27), (11, 16), (12, 17), (13, 18), (14, 19), |
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(15, 20), (16, 21), (17, 39), (18, 44), (19, 36), (20, 41), (21, 35), (22, 40), |
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(23, 1), (24, 2), (25, 4), (26, 5), (27, 7), (28, 8), (29, 31), (30, 34), (31, 29), |
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(32, 32) |
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] |
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).long() |
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self.smpl_joint_ids_24 = np.arange(22).tolist() + [68, 73] |
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self.smpl_joint_ids_24_pixie = np.arange(22).tolist() + [61 + 68, 72 + 68] |
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self.smpl_joint_ids_45 = np.arange(22).tolist() + [68, 73] + np.arange(55, 76).tolist() |
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self.extra_joint_ids = np.array( |
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[ |
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61, 72, 66, 69, 58, 68, 57, 56, 64, 59, 67, 75, 70, 65, 60, 61, 63, 62, 76, 71, 72, |
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74, 73 |
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] |
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) |
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self.extra_joint_ids += 68 |
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self.smpl_joint_ids_45_pixie = (np.arange(22).tolist() + self.extra_joint_ids.tolist()) |
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def cmap_smpl_vids(self, type): |
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cmap_smplx = torch.as_tensor(np.load(self.cmap_vert_path)).float() |
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if type == "smplx": |
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return cmap_smplx |
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elif type == "smpl": |
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bc = torch.as_tensor(self.smplx_to_smpl["bc"].astype(np.float32)) |
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closest_faces = self.smplx_to_smpl["closest_faces"].astype(np.int32) |
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cmap_smpl = torch.einsum("bij, bi->bj", cmap_smplx[closest_faces], bc) |
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return cmap_smpl |
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model_init_params = dict( |
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gender="male", |
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model_type="smplx", |
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model_path=SMPLX().model_dir, |
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create_global_orient=False, |
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create_body_pose=False, |
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create_betas=False, |
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create_left_hand_pose=False, |
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create_right_hand_pose=False, |
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create_expression=False, |
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create_jaw_pose=False, |
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create_leye_pose=False, |
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create_reye_pose=False, |
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create_transl=False, |
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num_pca_comps=12, |
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) |
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def get_smpl_model(model_type, gender): |
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return smplx.create(**model_init_params) |
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def load_fit_body(fitted_path, scale, smpl_type="smplx", smpl_gender="neutral", noise_dict=None): |
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param = np.load(fitted_path, allow_pickle=True) |
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for key in param.keys(): |
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param[key] = torch.as_tensor(param[key]) |
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smpl_model = get_smpl_model(smpl_type, smpl_gender) |
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model_forward_params = dict( |
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betas=param["betas"], |
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global_orient=param["global_orient"], |
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body_pose=param["body_pose"], |
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left_hand_pose=param["left_hand_pose"], |
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right_hand_pose=param["right_hand_pose"], |
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jaw_pose=param["jaw_pose"], |
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leye_pose=param["leye_pose"], |
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reye_pose=param["reye_pose"], |
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expression=param["expression"], |
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return_verts=True, |
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) |
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if noise_dict is not None: |
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model_forward_params.update(noise_dict) |
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smpl_out = smpl_model(**model_forward_params) |
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smpl_verts = ((smpl_out.vertices[0] * param["scale"] + param["translation"]) * scale).detach() |
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smpl_joints = ((smpl_out.joints[0] * param["scale"] + param["translation"]) * scale).detach() |
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smpl_mesh = trimesh.Trimesh(smpl_verts, smpl_model.faces, process=False, maintain_order=True) |
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return smpl_mesh, smpl_joints |
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def apply_face_mask(mesh, face_mask): |
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mesh.update_faces(face_mask) |
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mesh.remove_unreferenced_vertices() |
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return mesh |
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def apply_vertex_mask(mesh, vertex_mask): |
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faces_mask = vertex_mask[mesh.faces].any(dim=1) |
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mesh = apply_face_mask(mesh, faces_mask) |
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return mesh |
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def apply_vertex_face_mask(mesh, vertex_mask, face_mask): |
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faces_mask = vertex_mask[mesh.faces].any(dim=1) * torch.tensor(face_mask) |
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mesh.update_faces(faces_mask) |
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mesh.remove_unreferenced_vertices() |
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return mesh |
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def part_removal(full_mesh, part_mesh, thres, device, smpl_obj, region, clean=True): |
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smpl_tree = cKDTree(smpl_obj.vertices) |
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SMPL_container = SMPLX() |
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from lib.dataset.PointFeat import PointFeat |
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part_extractor = PointFeat( |
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torch.tensor(part_mesh.vertices).unsqueeze(0).to(device), |
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torch.tensor(part_mesh.faces).unsqueeze(0).to(device) |
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) |
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(part_dist, _) = part_extractor.query(torch.tensor(full_mesh.vertices).unsqueeze(0).to(device)) |
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remove_mask = part_dist < thres |
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if region == "hand": |
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_, idx = smpl_tree.query(full_mesh.vertices, k=1) |
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full_lmkid = SMPL_container.smplx_vertex_lmkid[idx] |
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remove_mask = torch.logical_and( |
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remove_mask, |
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torch.tensor(full_lmkid >= 20).type_as(remove_mask).unsqueeze(0) |
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) |
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elif region == "face": |
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_, idx = smpl_tree.query(full_mesh.vertices, k=5) |
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face_space_mask = torch.isin( |
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torch.tensor(idx), torch.tensor(SMPL_container.smplx_front_flame_vid) |
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) |
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remove_mask = torch.logical_and( |
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remove_mask, |
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face_space_mask.any(dim=1).type_as(remove_mask).unsqueeze(0) |
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) |
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BNI_part_mask = ~(remove_mask).flatten()[full_mesh.faces].any(dim=1) |
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full_mesh.update_faces(BNI_part_mask.detach().cpu()) |
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full_mesh.remove_unreferenced_vertices() |
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if clean: |
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full_mesh = clean_floats(full_mesh) |
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return full_mesh |
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def obj_loader(path, with_uv=True): |
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reader = tinyobjloader.ObjReader() |
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ret = reader.ParseFromFile(path) |
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attrib = reader.GetAttrib() |
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v = np.array(attrib.vertices).reshape(-1, 3) |
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vt = np.array(attrib.texcoords).reshape(-1, 2) |
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shapes = reader.GetShapes() |
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tri = shapes[0].mesh.numpy_indices().reshape(-1, 9) |
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f_v = tri[:, [0, 3, 6]] |
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f_vt = tri[:, [2, 5, 8]] |
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if with_uv: |
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face_uvs = vt[f_vt].mean(axis=1) |
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vert_uvs = np.zeros((v.shape[0], 2), dtype=np.float32) |
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vert_uvs[f_v.reshape(-1)] = vt[f_vt.reshape(-1)] |
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return v, f_v, vert_uvs, face_uvs |
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else: |
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return v, f_v |
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class HoppeMesh: |
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def __init__(self, verts, faces, uvs=None, texture=None): |
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""" |
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The HoppeSDF calculates signed distance towards a predefined oriented point cloud |
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http://hhoppe.com/recon.pdf |
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For clean and high-resolution pcl data, this is the fastest and accurate approximation of sdf |
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""" |
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mesh = trimesh.Trimesh(verts, faces, process=False, maintains_order=True) |
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self.verts = torch.tensor(verts).float() |
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self.faces = torch.tensor(faces).long() |
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self.vert_normals = torch.tensor(mesh.vertex_normals).float() |
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if (uvs is not None) and (texture is not None): |
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self.vertex_colors = trimesh.visual.color.uv_to_color(uvs, texture) |
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self.face_normals = torch.tensor(mesh.face_normals).float() |
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def get_colors(self, points, faces): |
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""" |
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Get colors of surface points from texture image through |
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barycentric interpolation. |
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- points: [n, 3] |
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- return: [n, 4] rgba |
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""" |
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triangles = self.verts[faces] |
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barycentric = trimesh.triangles.points_to_barycentric(triangles, points) |
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vert_colors = self.vertex_colors[faces] |
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point_colors = torch.tensor((barycentric[:, :, None] * vert_colors).sum(axis=1)).float() |
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return point_colors |
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def triangles(self): |
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return self.verts[self.faces].numpy() |
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def tensor2variable(tensor, device): |
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return tensor.requires_grad_(True).to(device) |
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def mesh_edge_loss(meshes, target_length: float = 0.0): |
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""" |
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Computes mesh edge length regularization loss averaged across all meshes |
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in a batch. Each mesh contributes equally to the final loss, regardless of |
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the number of edges per mesh in the batch by weighting each mesh with the |
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inverse number of edges. For example, if mesh 3 (out of N) has only E=4 |
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edges, then the loss for each edge in mesh 3 should be multiplied by 1/E to |
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contribute to the final loss. |
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Args: |
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meshes: Meshes object with a batch of meshes. |
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target_length: Resting value for the edge length. |
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Returns: |
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loss: Average loss across the batch. Returns 0 if meshes contains |
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no meshes or all empty meshes. |
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""" |
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if meshes.isempty(): |
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return torch.tensor([0.0], dtype=torch.float32, device=meshes.device, requires_grad=True) |
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N = len(meshes) |
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edges_packed = meshes.edges_packed() |
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verts_packed = meshes.verts_packed() |
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edge_to_mesh_idx = meshes.edges_packed_to_mesh_idx() |
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num_edges_per_mesh = meshes.num_edges_per_mesh() |
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weights = num_edges_per_mesh.gather(0, edge_to_mesh_idx) |
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weights = 1.0 / weights.float() |
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verts_edges = verts_packed[edges_packed] |
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v0, v1 = verts_edges.unbind(1) |
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loss = ((v0 - v1).norm(dim=1, p=2) - target_length)**2.0 |
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loss_vertex = loss * weights |
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loss_all = loss_vertex.sum() / N |
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return loss_all |
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def remesh_laplacian(mesh, obj_path): |
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mesh = mesh.simplify_quadratic_decimation(50000) |
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mesh = trimesh.smoothing.filter_humphrey( |
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mesh, alpha=0.1, beta=0.5, iterations=10, laplacian_operator=None |
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) |
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mesh.export(obj_path) |
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return mesh |
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def poisson(mesh, obj_path, depth=10, decimation=True): |
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pcd_path = obj_path[:-4] + ".ply" |
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assert (mesh.vertex_normals.shape[1] == 3) |
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mesh.export(pcd_path) |
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pcl = o3d.io.read_point_cloud(pcd_path) |
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with o3d.utility.VerbosityContextManager(o3d.utility.VerbosityLevel.Error) as cm: |
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mesh, densities = o3d.geometry.TriangleMesh.create_from_point_cloud_poisson( |
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pcl, depth=depth, n_threads=-1 |
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) |
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print(colored(f"\n Poisson completion to {Format.start} {obj_path} {Format.end}", "yellow")) |
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largest_mesh = keep_largest(trimesh.Trimesh(np.array(mesh.vertices), np.array(mesh.triangles))) |
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largest_mesh.export(obj_path) |
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if decimation: |
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low_res_mesh = largest_mesh.simplify_quadratic_decimation(50000) |
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return low_res_mesh |
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else: |
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return largest_mesh |
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def update_mesh_shape_prior_losses(mesh, losses): |
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losses["edge"]["value"] = mesh_edge_loss(mesh) |
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losses["nc"]["value"] = mesh_normal_consistency(mesh) |
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losses["lapla"]["value"] = mesh_laplacian_smoothing(mesh, method="uniform") |
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def read_smpl_constants(folder): |
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"""Load smpl vertex code""" |
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smpl_vtx_std = np.loadtxt(os.path.join(folder, "vertices.txt")) |
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min_x = np.min(smpl_vtx_std[:, 0]) |
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max_x = np.max(smpl_vtx_std[:, 0]) |
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min_y = np.min(smpl_vtx_std[:, 1]) |
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max_y = np.max(smpl_vtx_std[:, 1]) |
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min_z = np.min(smpl_vtx_std[:, 2]) |
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max_z = np.max(smpl_vtx_std[:, 2]) |
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smpl_vtx_std[:, 0] = (smpl_vtx_std[:, 0] - min_x) / (max_x - min_x) |
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smpl_vtx_std[:, 1] = (smpl_vtx_std[:, 1] - min_y) / (max_y - min_y) |
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smpl_vtx_std[:, 2] = (smpl_vtx_std[:, 2] - min_z) / (max_z - min_z) |
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smpl_vertex_code = np.float32(np.copy(smpl_vtx_std)) |
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"""Load smpl faces & tetrahedrons""" |
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smpl_faces = np.loadtxt(os.path.join(folder, "faces.txt"), dtype=np.int32) - 1 |
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smpl_face_code = ( |
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smpl_vertex_code[smpl_faces[:, 0]] + smpl_vertex_code[smpl_faces[:, 1]] + |
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smpl_vertex_code[smpl_faces[:, 2]] |
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) / 3.0 |
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smpl_tetras = (np.loadtxt(os.path.join(folder, "tetrahedrons.txt"), dtype=np.int32) - 1) |
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return_dict = { |
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"smpl_vertex_code": torch.tensor(smpl_vertex_code), |
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"smpl_face_code": torch.tensor(smpl_face_code), |
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"smpl_faces": torch.tensor(smpl_faces), |
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"smpl_tetras": torch.tensor(smpl_tetras) |
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} |
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return return_dict |
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def get_visibility(xy, z, faces, img_res=2**12, blur_radius=0.0, faces_per_pixel=1): |
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"""get the visibility of vertices |
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|
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Args: |
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xy (torch.tensor): [B, N,2] |
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z (torch.tensor): [B, N,1] |
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faces (torch.tensor): [B, N,3] |
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size (int): resolution of rendered image |
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""" |
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|
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if xy.ndimension() == 2: |
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xy = xy.unsqueeze(0) |
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z = z.unsqueeze(0) |
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faces = faces.unsqueeze(0) |
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|
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xyz = (torch.cat((xy, -z), dim=-1) + 1.) / 2. |
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N_body = xyz.shape[0] |
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faces = faces.long().repeat(N_body, 1, 1) |
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vis_mask = torch.zeros(size=(N_body, z.shape[1])) |
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rasterizer = Pytorch3dRasterizer(image_size=img_res) |
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|
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meshes_screen = Meshes(verts=xyz, faces=faces) |
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pix_to_face, zbuf, bary_coords, dists = rasterize_meshes( |
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meshes_screen, |
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image_size=rasterizer.raster_settings.image_size, |
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blur_radius=blur_radius, |
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faces_per_pixel=faces_per_pixel, |
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bin_size=rasterizer.raster_settings.bin_size, |
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max_faces_per_bin=rasterizer.raster_settings.max_faces_per_bin, |
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perspective_correct=rasterizer.raster_settings.perspective_correct, |
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cull_backfaces=rasterizer.raster_settings.cull_backfaces, |
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) |
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|
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pix_to_face = pix_to_face.detach().cpu().view(N_body, -1) |
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faces = faces.detach().cpu() |
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|
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for idx in range(N_body): |
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Num_faces = len(faces[idx]) |
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vis_vertices_id = torch.unique( |
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faces[idx][torch.unique(pix_to_face[idx][pix_to_face[idx] != -1]) - Num_faces * idx, :] |
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) |
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vis_mask[idx, vis_vertices_id] = 1.0 |
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return vis_mask |
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|
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def barycentric_coordinates_of_projection(points, vertices): |
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"""https://github.com/MPI-IS/mesh/blob/master/mesh/geometry/barycentric_coordinates_of_projection.py""" |
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"""Given a point, gives projected coords of that point to a triangle |
|
in barycentric coordinates. |
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See |
|
**Heidrich**, Computing the Barycentric Coordinates of a Projected Point, JGT 05 |
|
at http://www.cs.ubc.ca/~heidrich/Papers/JGT.05.pdf |
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|
|
:param p: point to project. [B, 3] |
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:param v0: first vertex of triangles. [B, 3] |
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:returns: barycentric coordinates of ``p``'s projection in triangle defined by ``q``, ``u``, ``v`` |
|
vectorized so ``p``, ``q``, ``u``, ``v`` can all be ``3xN`` |
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""" |
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|
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v0, v1, v2 = vertices[:, 0], vertices[:, 1], vertices[:, 2] |
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|
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u = v1 - v0 |
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v = v2 - v0 |
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n = torch.cross(u, v) |
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sb = torch.sum(n * n, dim=1) |
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|
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sb[sb == 0] = 1e-6 |
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oneOver4ASquared = 1.0 / sb |
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w = points - v0 |
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b2 = torch.sum(torch.cross(u, w) * n, dim=1) * oneOver4ASquared |
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b1 = torch.sum(torch.cross(w, v) * n, dim=1) * oneOver4ASquared |
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weights = torch.stack((1 - b1 - b2, b1, b2), dim=-1) |
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|
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|
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return weights |
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|
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def orthogonal(points, calibrations, transforms=None): |
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""" |
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Compute the orthogonal projections of 3D points into the image plane by given projection matrix |
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:param points: [B, 3, N] Tensor of 3D points |
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:param calibrations: [B, 3, 4] Tensor of projection matrix |
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:param transforms: [B, 2, 3] Tensor of image transform matrix |
|
:return: xyz: [B, 3, N] Tensor of xyz coordinates in the image plane |
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""" |
|
rot = calibrations[:, :3, :3] |
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trans = calibrations[:, :3, 3:4] |
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pts = torch.baddbmm(trans, rot, points) |
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if transforms is not None: |
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scale = transforms[:2, :2] |
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shift = transforms[:2, 2:3] |
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pts[:, :2, :] = torch.baddbmm(shift, scale, pts[:, :2, :]) |
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return pts |
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|
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|
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def projection(points, calib): |
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if torch.is_tensor(points): |
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calib = torch.as_tensor(calib) if not torch.is_tensor(calib) else calib |
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return torch.mm(calib[:3, :3], points.T).T + calib[:3, 3] |
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else: |
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return np.matmul(calib[:3, :3], points.T).T + calib[:3, 3] |
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|
|
|
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def load_calib(calib_path): |
|
calib_data = np.loadtxt(calib_path, dtype=float) |
|
extrinsic = calib_data[:4, :4] |
|
intrinsic = calib_data[4:8, :4] |
|
calib_mat = np.matmul(intrinsic, extrinsic) |
|
calib_mat = torch.from_numpy(calib_mat).float() |
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return calib_mat |
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|
|
|
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def normalize_v3(arr): |
|
""" Normalize a numpy array of 3 component vectors shape=(n,3) """ |
|
lens = np.sqrt(arr[:, 0]**2 + arr[:, 1]**2 + arr[:, 2]**2) |
|
eps = 0.00000001 |
|
lens[lens < eps] = eps |
|
arr[:, 0] /= lens |
|
arr[:, 1] /= lens |
|
arr[:, 2] /= lens |
|
return arr |
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|
|
|
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def compute_normal(vertices, faces): |
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|
|
vert_norms = np.zeros(vertices.shape, dtype=vertices.dtype) |
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|
|
tris = vertices[faces] |
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|
|
face_norms = np.cross(tris[::, 1] - tris[::, 0], tris[::, 2] - tris[::, 0]) |
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|
|
|
|
normalize_v3(face_norms) |
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|
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|
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|
|
vert_norms[faces[:, 0]] += face_norms |
|
vert_norms[faces[:, 1]] += face_norms |
|
vert_norms[faces[:, 2]] += face_norms |
|
normalize_v3(vert_norms) |
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|
|
return vert_norms, face_norms |
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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] |
|
""" |
|
|
|
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, vertices.shape[-1])) |
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|
|
return vertices[faces.long()] |
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|
|
|
|
def compute_normal_batch(vertices, faces): |
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|
|
if faces.shape[0] != vertices.shape[0]: |
|
faces = faces.repeat(vertices.shape[0], 1, 1) |
|
|
|
bs, nv = vertices.shape[:2] |
|
bs, nf = faces.shape[:2] |
|
|
|
vert_norm = torch.zeros(bs * nv, 3).type_as(vertices) |
|
tris = face_vertices(vertices, faces) |
|
face_norm = F.normalize( |
|
torch.cross(tris[:, :, 1] - tris[:, :, 0], tris[:, :, 2] - tris[:, :, 0]), |
|
dim=-1, |
|
) |
|
|
|
faces = (faces + (torch.arange(bs).type_as(faces) * nv)[:, None, None]).view(-1, 3) |
|
|
|
vert_norm[faces[:, 0]] += face_norm.view(-1, 3) |
|
vert_norm[faces[:, 1]] += face_norm.view(-1, 3) |
|
vert_norm[faces[:, 2]] += face_norm.view(-1, 3) |
|
|
|
vert_norm = F.normalize(vert_norm, dim=-1).view(bs, nv, 3) |
|
|
|
return vert_norm |
|
|
|
|
|
def get_optim_grid_image(per_loop_lst, loss=None, nrow=4, type="smpl"): |
|
|
|
font_path = os.path.join(os.path.dirname(__file__), "tbfo.ttf") |
|
font = ImageFont.truetype(font_path, 30) |
|
grid_img = torchvision.utils.make_grid(torch.cat(per_loop_lst, dim=0), nrow=nrow, padding=0) |
|
grid_img = Image.fromarray( |
|
((grid_img.permute(1, 2, 0).detach().cpu().numpy() + 1.0) * 0.5 * 255.0).astype(np.uint8) |
|
) |
|
|
|
if False: |
|
|
|
draw = ImageDraw.Draw(grid_img) |
|
grid_size = 512 |
|
if loss is not None: |
|
draw.text((10, 5), f"error: {loss:.3f}", (255, 0, 0), font=font) |
|
|
|
if type == "smpl": |
|
for col_id, col_txt in enumerate( |
|
[ |
|
"image", |
|
"smpl-norm(render)", |
|
"cloth-norm(pred)", |
|
"diff-norm", |
|
"diff-mask", |
|
] |
|
): |
|
draw.text((10 + (col_id * grid_size), 5), col_txt, (255, 0, 0), font=font) |
|
elif type == "cloth": |
|
for col_id, col_txt in enumerate( |
|
["image", "cloth-norm(recon)", "cloth-norm(pred)", "diff-norm"] |
|
): |
|
draw.text((10 + (col_id * grid_size), 5), col_txt, (255, 0, 0), font=font) |
|
for col_id, col_txt in enumerate(["0", "90", "180", "270"]): |
|
draw.text( |
|
(10 + (col_id * grid_size), grid_size * 2 + 5), |
|
col_txt, |
|
(255, 0, 0), |
|
font=font, |
|
) |
|
else: |
|
print(f"{type} should be 'smpl' or 'cloth'") |
|
|
|
grid_img = grid_img.resize((grid_img.size[0], grid_img.size[1]), Image.ANTIALIAS) |
|
|
|
return grid_img |
|
|
|
|
|
def clean_mesh(verts, faces): |
|
|
|
device = verts.device |
|
|
|
mesh_lst = trimesh.Trimesh(verts.detach().cpu().numpy(), faces.detach().cpu().numpy()) |
|
largest_mesh = keep_largest(mesh_lst) |
|
final_verts = torch.as_tensor(largest_mesh.vertices).float().to(device) |
|
final_faces = torch.as_tensor(largest_mesh.faces).long().to(device) |
|
|
|
return final_verts, final_faces |
|
|
|
|
|
def clean_floats(mesh): |
|
thres = mesh.vertices.shape[0] * 1e-2 |
|
mesh_lst = mesh.split(only_watertight=False) |
|
clean_mesh_lst = [mesh for mesh in mesh_lst if mesh.vertices.shape[0] > thres] |
|
return sum(clean_mesh_lst) |
|
|
|
|
|
def keep_largest(mesh): |
|
mesh_lst = mesh.split(only_watertight=False) |
|
keep_mesh = mesh_lst[0] |
|
for mesh in mesh_lst: |
|
if mesh.vertices.shape[0] > keep_mesh.vertices.shape[0]: |
|
keep_mesh = mesh |
|
return keep_mesh |
|
|
|
|
|
def mesh_move(mesh_lst, step, scale=1.0): |
|
|
|
trans = np.array([1.0, 0.0, 0.0]) * step |
|
|
|
resize_matrix = trimesh.transformations.scale_and_translate(scale=(scale), translate=trans) |
|
|
|
results = [] |
|
|
|
for mesh in mesh_lst: |
|
mesh.apply_transform(resize_matrix) |
|
results.append(mesh) |
|
|
|
return results |
|
|
|
|
|
def rescale_smpl(fitted_path, scale=100, translate=(0, 0, 0)): |
|
|
|
fitted_body = trimesh.load(fitted_path, process=False, maintain_order=True, skip_materials=True) |
|
resize_matrix = trimesh.transformations.scale_and_translate(scale=(scale), translate=translate) |
|
|
|
fitted_body.apply_transform(resize_matrix) |
|
|
|
return np.array(fitted_body.vertices) |
|
|
|
|
|
def get_joint_mesh(joints, radius=2.0): |
|
|
|
ball = trimesh.creation.icosphere(radius=radius) |
|
combined = None |
|
for joint in joints: |
|
ball_new = trimesh.Trimesh(vertices=ball.vertices + joint, faces=ball.faces, process=False) |
|
if combined is None: |
|
combined = ball_new |
|
else: |
|
combined = sum([combined, ball_new]) |
|
return combined |
|
|