# -*- coding: utf-8 -*- # Max-Planck-Gesellschaft zur Förderung der Wissenschaften e.V. (MPG) is # holder of all proprietary rights on this computer program. # You can only use this computer program if you have closed # a license agreement with MPG or you get the right to use the computer # program from someone who is authorized to grant you that right. # Any use of the computer program without a valid license is prohibited and # liable to prosecution. # # Copyright©2019 Max-Planck-Gesellschaft zur Förderung # der Wissenschaften e.V. (MPG). acting on behalf of its Max Planck Institute # for Intelligent Systems. All rights reserved. # # Contact: ps-license@tuebingen.mpg.de from pytorch3d.renderer import ( BlendParams, blending, look_at_view_transform, FoVOrthographicCameras, PointLights, RasterizationSettings, PointsRasterizationSettings, PointsRenderer, AlphaCompositor, PointsRasterizer, MeshRenderer, MeshRasterizer, SoftPhongShader, SoftSilhouetteShader, TexturesVertex, ) from pytorch3d.renderer.mesh import TexturesVertex from pytorch3d.structures import Meshes import os, subprocess from lib.dataset.mesh_util import SMPLX, get_visibility import lib.common.render_utils as util import torch import numpy as np from PIL import Image from tqdm import tqdm import cv2 import math from termcolor import colored def image2vid(images, vid_path): w, h = images[0].size videodims = (w, h) fourcc = cv2.VideoWriter_fourcc(*'XVID') video = cv2.VideoWriter(vid_path, fourcc, 30, videodims) for image in images: video.write(cv2.cvtColor(np.array(image), cv2.COLOR_RGB2BGR)) video.release() def query_color(verts, faces, image, device): """query colors from points and image Args: verts ([B, 3]): [query verts] faces ([M, 3]): [query faces] image ([B, 3, H, W]): [full image] Returns: [np.float]: [return colors] """ verts = verts.float().to(device) faces = faces.long().to(device) (xy, z) = verts.split([2, 1], dim=1) visibility = get_visibility(xy, z, faces[:, [0, 2, 1]]).flatten() uv = xy.unsqueeze(0).unsqueeze(2) # [B, N, 2] uv = uv * torch.tensor([1.0, -1.0]).type_as(uv) colors = (torch.nn.functional.grid_sample(image, uv, align_corners=True)[ 0, :, :, 0].permute(1, 0) + 1.0) * 0.5 * 255.0 colors[visibility == 0.0] = ((Meshes(verts.unsqueeze(0), faces.unsqueeze( 0)).verts_normals_padded().squeeze(0) + 1.0) * 0.5 * 255.0)[visibility == 0.0] return colors.detach().cpu() class cleanShader(torch.nn.Module): def __init__(self, device="cpu", cameras=None, blend_params=None): super().__init__() self.cameras = cameras self.blend_params = blend_params if blend_params is not None else BlendParams() def forward(self, fragments, meshes, **kwargs): cameras = kwargs.get("cameras", self.cameras) if cameras is None: msg = "Cameras must be specified either at initialization \ or in the forward pass of TexturedSoftPhongShader" raise ValueError(msg) # get renderer output blend_params = kwargs.get("blend_params", self.blend_params) texels = meshes.sample_textures(fragments) images = blending.softmax_rgb_blend( texels, fragments, blend_params, znear=-256, zfar=256 ) return images class Render: def __init__(self, size=512, device=torch.device("cuda:0")): self.device = device self.mesh_y_center = 100.0 self.dis = 100.0 self.scale = 1.0 self.size = size self.cam_pos = [(0, 100, 100)] self.mesh = None self.deform_mesh = None self.pcd = None self.renderer = None self.meshRas = None self.type = None self.knn = None self.knn_inverse = None self.smpl_seg = None self.smpl_cmap = None self.smplx = SMPLX() self.uv_rasterizer = util.Pytorch3dRasterizer(self.size) def get_camera(self, cam_id): R, T = look_at_view_transform( eye=[self.cam_pos[cam_id]], at=((0, self.mesh_y_center, 0),), up=((0, 1, 0),), ) camera = FoVOrthographicCameras( device=self.device, R=R, T=T, znear=100.0, zfar=-100.0, max_y=100.0, min_y=-100.0, max_x=100.0, min_x=-100.0, scale_xyz=(self.scale * np.ones(3),), ) return camera def init_renderer(self, camera, type="clean_mesh", bg="gray"): if "mesh" in type: # rasterizer self.raster_settings_mesh = RasterizationSettings( image_size=self.size, blur_radius=np.log(1.0 / 1e-4) * 1e-7, faces_per_pixel=30, ) self.meshRas = MeshRasterizer( cameras=camera, raster_settings=self.raster_settings_mesh ) if bg == "black": blendparam = BlendParams(1e-4, 1e-4, (0.0, 0.0, 0.0)) elif bg == "white": blendparam = BlendParams(1e-4, 1e-8, (1.0, 1.0, 1.0)) elif bg == "gray": blendparam = BlendParams(1e-4, 1e-8, (0.5, 0.5, 0.5)) if type == "ori_mesh": lights = PointLights( device=self.device, ambient_color=((0.8, 0.8, 0.8),), diffuse_color=((0.2, 0.2, 0.2),), specular_color=((0.0, 0.0, 0.0),), location=[[0.0, 200.0, 0.0]], ) self.renderer = MeshRenderer( rasterizer=self.meshRas, shader=SoftPhongShader( device=self.device, cameras=camera, lights=lights, blend_params=blendparam, ), ) if type == "silhouette": self.raster_settings_silhouette = RasterizationSettings( image_size=self.size, blur_radius=np.log(1.0 / 1e-4 - 1.0) * 5e-5, faces_per_pixel=50, cull_backfaces=True, ) self.silhouetteRas = MeshRasterizer( cameras=camera, raster_settings=self.raster_settings_silhouette ) self.renderer = MeshRenderer( rasterizer=self.silhouetteRas, shader=SoftSilhouetteShader() ) if type == "pointcloud": self.raster_settings_pcd = PointsRasterizationSettings( image_size=self.size, radius=0.006, points_per_pixel=10 ) self.pcdRas = PointsRasterizer( cameras=camera, raster_settings=self.raster_settings_pcd ) self.renderer = PointsRenderer( rasterizer=self.pcdRas, compositor=AlphaCompositor(background_color=(0, 0, 0)), ) if type == "clean_mesh": self.renderer = MeshRenderer( rasterizer=self.meshRas, shader=cleanShader( device=self.device, cameras=camera, blend_params=blendparam ), ) def VF2Mesh(self, verts, faces): if not torch.is_tensor(verts): verts = torch.tensor(verts) if not torch.is_tensor(faces): faces = torch.tensor(faces) if verts.ndimension() == 2: verts = verts.unsqueeze(0).float() if faces.ndimension() == 2: faces = faces.unsqueeze(0).long() verts = verts.to(self.device) faces = faces.to(self.device) mesh = Meshes(verts, faces).to(self.device) mesh.textures = TexturesVertex( verts_features=(mesh.verts_normals_padded() + 1.0) * 0.5 ) return mesh def load_meshes(self, verts, faces): """load mesh into the pytorch3d renderer Args: verts ([N,3]): verts faces ([N,3]): faces offset ([N,3]): offset """ # camera setting self.scale = 100.0 self.mesh_y_center = 0.0 self.cam_pos = [ (0, self.mesh_y_center, 100.0), (100.0, self.mesh_y_center, 0), (0, self.mesh_y_center, -100.0), (-100.0, self.mesh_y_center, 0), ] self.type = "color" if isinstance(verts, list): self.meshes = [] for V, F in zip(verts, faces): self.meshes.append(self.VF2Mesh(V, F)) else: self.meshes = [self.VF2Mesh(verts, faces)] def get_depth_map(self, cam_ids=[0, 2]): depth_maps = [] for cam_id in cam_ids: self.init_renderer(self.get_camera(cam_id), "clean_mesh", "gray") fragments = self.meshRas(self.meshes[0]) depth_map = fragments.zbuf[..., 0].squeeze(0) if cam_id == 2: depth_map = torch.fliplr(depth_map) depth_maps.append(depth_map) return depth_maps def get_rgb_image(self, cam_ids=[0, 2]): images = [] for cam_id in range(len(self.cam_pos)): if cam_id in cam_ids: self.init_renderer(self.get_camera( cam_id), "clean_mesh", "gray") if len(cam_ids) == 4: rendered_img = ( self.renderer(self.meshes[0])[ 0:1, :, :, :3].permute(0, 3, 1, 2) - 0.5 ) * 2.0 else: rendered_img = ( self.renderer(self.meshes[0])[ 0:1, :, :, :3].permute(0, 3, 1, 2) - 0.5 ) * 2.0 if cam_id == 2 and len(cam_ids) == 2: rendered_img = torch.flip(rendered_img, dims=[3]) images.append(rendered_img) return images def get_rendered_video(self, images, save_path): tmp_path = save_path.replace('cloth', 'tmp') self.cam_pos = [] for angle in range(0, 360, 3): self.cam_pos.append( ( 100.0 * math.cos(np.pi / 180 * angle), self.mesh_y_center, 100.0 * math.sin(np.pi / 180 * angle), ) ) old_shape = np.array(images[0].shape[:2]) new_shape = np.around( (self.size / old_shape[0]) * old_shape).astype(np.int) fourcc = cv2.VideoWriter_fourcc(*"mp4v") video = cv2.VideoWriter( tmp_path, fourcc, 30, (self.size * len(self.meshes) + new_shape[1] * len(images), self.size) ) pbar = tqdm(range(len(self.cam_pos))) pbar.set_description(colored(f"exporting video {os.path.basename(save_path)}...", "blue")) for cam_id in pbar: self.init_renderer(self.get_camera(cam_id), "clean_mesh", "gray") img_lst = [ np.array(Image.fromarray(img).resize(new_shape[::-1])).astype(np.uint8)[ :, :, [2, 1, 0] ] for img in images ] for mesh in self.meshes: rendered_img = ( (self.renderer(mesh)[0, :, :, :3] * 255.0) .detach() .cpu() .numpy() .astype(np.uint8) ) img_lst.append(rendered_img) final_img = np.concatenate(img_lst, axis=1) video.write(final_img) video.release() os.system(f'ffmpeg -y -loglevel quiet -stats -i {tmp_path} -c:v libx264 {save_path}') def get_silhouette_image(self, cam_ids=[0, 2]): images = [] for cam_id in range(len(self.cam_pos)): if cam_id in cam_ids: self.init_renderer(self.get_camera(cam_id), "silhouette") rendered_img = self.renderer(self.meshes[0])[0:1, :, :, 3] if cam_id == 2 and len(cam_ids) == 2: rendered_img = torch.flip(rendered_img, dims=[2]) images.append(rendered_img) return images