xinjie.wang
update
7734c01
# Copyright (c) Meta Platforms, Inc. and affiliates.
import os
# not ideal to put that here
os.environ["CUDA_HOME"] = os.environ["CONDA_PREFIX"]
os.environ["LIDRA_SKIP_INIT"] = "true"
import sys
from typing import Union, Optional, List, Callable
import numpy as np
from PIL import Image
from omegaconf import OmegaConf, DictConfig, ListConfig
from hydra.utils import instantiate, get_method
import torch
import math
import utils3d
import shutil
import subprocess
import seaborn as sns
from PIL import Image
import numpy as np
import gradio as gr
import matplotlib.pyplot as plt
from copy import deepcopy
from kaolin.visualize import IpyTurntableVisualizer
from kaolin.render.camera import Camera, CameraExtrinsics, PinholeIntrinsics
import builtins
from pytorch3d.transforms import quaternion_multiply, quaternion_invert
import sam3d_objects # REMARK(Pierre) : do not remove this import
from sam3d_objects.pipeline.inference_pipeline_pointmap import InferencePipelinePointMap
from sam3d_objects.model.backbone.tdfy_dit.utils import render_utils
from sam3d_objects.utils.visualization import SceneVisualizer
__all__ = ["Inference"]
WHITELIST_FILTERS = [
lambda target: target.split(".", 1)[0] in {"sam3d_objects", "torch", "torchvision", "moge"},
]
BLACKLIST_FILTERS = [
lambda target: get_method(target)
in {
builtins.exec,
builtins.eval,
builtins.__import__,
os.kill,
os.system,
os.putenv,
os.remove,
os.removedirs,
os.rmdir,
os.fchdir,
os.setuid,
os.fork,
os.forkpty,
os.killpg,
os.rename,
os.renames,
os.truncate,
os.replace,
os.unlink,
os.fchmod,
os.fchown,
os.chmod,
os.chown,
os.chroot,
os.fchdir,
os.lchown,
os.getcwd,
os.chdir,
shutil.rmtree,
shutil.move,
shutil.chown,
subprocess.Popen,
builtins.help,
},
]
class Inference:
# public facing inference API
# only put publicly exposed arguments here
def __init__(self, config_file: str, compile: bool = False):
# load inference pipeline
config = OmegaConf.load(config_file)
config.rendering_engine = "pytorch3d" # overwrite to disable nvdiffrast
config.compile_model = compile
config.workspace_dir = os.path.dirname(config_file)
check_hydra_safety(config, WHITELIST_FILTERS, BLACKLIST_FILTERS)
self._pipeline: InferencePipelinePointMap = instantiate(config)
def merge_mask_to_rgba(self, image, mask):
mask = mask.astype(np.uint8) * 255
mask = mask[..., None]
# embed mask in alpha channel
rgba_image = np.concatenate([image[..., :3], mask], axis=-1)
return rgba_image
def __call__(
self,
image: Union[Image.Image, np.ndarray],
mask: Optional[Union[None, Image.Image, np.ndarray]],
seed: Optional[int] = None,
pointmap=None,
) -> dict:
image = self.merge_mask_to_rgba(image, mask)
return self._pipeline.run(
image,
None,
seed,
stage1_only=False,
with_mesh_postprocess=False,
with_texture_baking=False,
with_layout_postprocess=True,
use_vertex_color=True,
stage1_inference_steps=None,
pointmap=pointmap,
)
def _yaw_pitch_r_fov_to_extrinsics_intrinsics(yaws, pitchs, rs, fovs):
is_list = isinstance(yaws, list)
if not is_list:
yaws = [yaws]
pitchs = [pitchs]
if not isinstance(rs, list):
rs = [rs] * len(yaws)
if not isinstance(fovs, list):
fovs = [fovs] * len(yaws)
extrinsics = []
intrinsics = []
for yaw, pitch, r, fov in zip(yaws, pitchs, rs, fovs):
fov = torch.deg2rad(torch.tensor(float(fov))).cuda()
yaw = torch.tensor(float(yaw)).cuda()
pitch = torch.tensor(float(pitch)).cuda()
orig = (
torch.tensor(
[
torch.sin(yaw) * torch.cos(pitch),
torch.sin(pitch),
torch.cos(yaw) * torch.cos(pitch),
]
).cuda()
* r
)
extr = utils3d.torch.extrinsics_look_at(
orig,
torch.tensor([0, 0, 0]).float().cuda(),
torch.tensor([0, 1, 0]).float().cuda(),
)
intr = utils3d.torch.intrinsics_from_fov_xy(fov, fov)
extrinsics.append(extr)
intrinsics.append(intr)
if not is_list:
extrinsics = extrinsics[0]
intrinsics = intrinsics[0]
return extrinsics, intrinsics
def render_video(
sample,
resolution=512,
bg_color=(0, 0, 0),
num_frames=300,
r=2.0,
fov=40,
pitch_deg=0,
yaw_start_deg=-90,
**kwargs,
):
yaws = (
torch.linspace(0, 2 * torch.pi, num_frames) + math.radians(yaw_start_deg)
).tolist()
pitch = [math.radians(pitch_deg)] * num_frames
extr, intr = _yaw_pitch_r_fov_to_extrinsics_intrinsics(yaws, pitch, r, fov)
return render_utils.render_frames(
sample,
extr,
intr,
{"resolution": resolution, "bg_color": bg_color, "backend": "gsplat"},
**kwargs,
)
def ready_gaussian_for_video_rendering(scene_gs, in_place=False, fix_alignment=False):
if fix_alignment:
scene_gs = _fix_gaussian_alignment(scene_gs, in_place=in_place)
scene_gs = normalized_gaussian(scene_gs, in_place=fix_alignment)
return scene_gs
def _fix_gaussian_alignment(scene_gs, in_place=False):
if not in_place:
scene_gs = deepcopy(scene_gs)
device = scene_gs._xyz.device
dtype = scene_gs._xyz.dtype
scene_gs._xyz = (
scene_gs._xyz
@ torch.tensor(
[
[-1, 0, 0],
[0, 0, 1],
[0, 1, 0],
],
device=device,
dtype=dtype,
).T
)
return scene_gs
def normalized_gaussian(scene_gs, in_place=False, outlier_percentile=None):
if not in_place:
scene_gs = deepcopy(scene_gs)
orig_xyz = scene_gs.get_xyz
orig_scale = scene_gs.get_scaling
active_mask = (scene_gs.get_opacity > 0.9).squeeze()
inv_scale = (
orig_xyz[active_mask].max(dim=0)[0] - orig_xyz[active_mask].min(dim=0)[0]
).max()
norm_scale = orig_scale / inv_scale
norm_xyz = orig_xyz / inv_scale
if outlier_percentile is None:
lower_bound_xyz = torch.min(norm_xyz[active_mask], dim=0)[0]
upper_bound_xyz = torch.max(norm_xyz[active_mask], dim=0)[0]
else:
lower_bound_xyz = torch.quantile(
norm_xyz[active_mask],
outlier_percentile,
dim=0,
)
upper_bound_xyz = torch.quantile(
norm_xyz[active_mask],
1.0 - outlier_percentile,
dim=0,
)
center = (lower_bound_xyz + upper_bound_xyz) / 2
norm_xyz = norm_xyz - center
scene_gs.from_xyz(norm_xyz)
scene_gs.mininum_kernel_size /= inv_scale.item()
scene_gs.from_scaling(norm_scale)
return scene_gs
def make_scene(*outputs, in_place=False):
if not in_place:
outputs = [deepcopy(output) for output in outputs]
all_outs = []
minimum_kernel_size = float("inf")
for output in outputs:
# move gaussians to scene frame of reference
PC = SceneVisualizer.object_pointcloud(
points_local=output["gaussian"][0].get_xyz.unsqueeze(0),
quat_l2c=output["rotation"],
trans_l2c=output["translation"],
scale_l2c=output["scale"],
)
output["gaussian"][0].from_xyz(PC.points_list()[0])
# must ... ROTATE
output["gaussian"][0].from_rotation(
quaternion_multiply(
quaternion_invert(output["rotation"]),
output["gaussian"][0].get_rotation,
)
)
scale = output["gaussian"][0].get_scaling
adjusted_scale = scale * output["scale"]
assert (
output["scale"][0, 0].item()
== output["scale"][0, 1].item()
== output["scale"][0, 2].item()
)
output["gaussian"][0].mininum_kernel_size *= output["scale"][0, 0].item()
adjusted_scale = torch.maximum(
adjusted_scale,
torch.tensor(
output["gaussian"][0].mininum_kernel_size * 1.1,
device=adjusted_scale.device,
),
)
output["gaussian"][0].from_scaling(adjusted_scale)
minimum_kernel_size = min(
minimum_kernel_size,
output["gaussian"][0].mininum_kernel_size,
)
all_outs.append(output)
# merge gaussians
scene_gs = all_outs[0]["gaussian"][0]
scene_gs.mininum_kernel_size = minimum_kernel_size
for out in all_outs[1:]:
out_gs = out["gaussian"][0]
scene_gs._xyz = torch.cat([scene_gs._xyz, out_gs._xyz], dim=0)
scene_gs._features_dc = torch.cat(
[scene_gs._features_dc, out_gs._features_dc], dim=0
)
scene_gs._scaling = torch.cat([scene_gs._scaling, out_gs._scaling], dim=0)
scene_gs._rotation = torch.cat([scene_gs._rotation, out_gs._rotation], dim=0)
scene_gs._opacity = torch.cat([scene_gs._opacity, out_gs._opacity], dim=0)
return scene_gs
def check_target(
target: str,
whitelist_filters: List[Callable],
blacklist_filters: List[Callable],
):
if any(filt(target) for filt in whitelist_filters):
if not any(filt(target) for filt in blacklist_filters):
return
raise RuntimeError(
f"target '{target}' is not allowed to be hydra instantiated, if this is a mistake, please do modify the whitelist_filters / blacklist_filters"
)
def check_hydra_safety(
config: DictConfig,
whitelist_filters: List[Callable],
blacklist_filters: List[Callable],
):
to_check = [config]
while len(to_check) > 0:
node = to_check.pop()
if isinstance(node, DictConfig):
to_check.extend(list(node.values()))
if "_target_" in node:
check_target(node["_target_"], whitelist_filters, blacklist_filters)
elif isinstance(node, ListConfig):
to_check.extend(list(node))
def load_image(path):
image = Image.open(path)
image = np.array(image)
image = image.astype(np.uint8)
return image
def load_mask(path):
mask = load_image(path)
mask = mask > 0
if mask.ndim == 3:
mask = mask[..., -1]
return mask
def load_single_mask(folder_path, index=0, extension=".png"):
masks = load_masks(folder_path, [index], extension)
return masks[0]
def load_masks(folder_path, indices_list=None, extension=".png"):
masks = []
indices_list = [] if indices_list is None else list(indices_list)
if not len(indices_list) > 0: # get all all masks if not provided
idx = 0
while os.path.exists(os.path.join(folder_path, f"{idx}{extension}")):
indices_list.append(idx)
idx += 1
for idx in indices_list:
mask_path = os.path.join(folder_path, f"{idx}{extension}")
assert os.path.exists(mask_path), f"Mask path {mask_path} does not exist"
mask = load_mask(mask_path)
masks.append(mask)
return masks
def display_image(image, masks=None):
def imshow(image, ax):
ax.axis("off")
ax.imshow(image)
grid = (1, 1) if masks is None else (2, 2)
fig, axes = plt.subplots(*grid)
if masks is not None:
mask_colors = sns.color_palette("husl", len(masks))
black_image = np.zeros_like(image[..., :3], dtype=float) # background
mask_display = np.copy(black_image)
mask_union = np.zeros_like(image[..., :3])
for i, mask in enumerate(masks):
mask_display[mask] = mask_colors[i]
mask_union |= mask[..., None] if mask.ndim == 2 else mask
imshow(black_image, axes[0, 1])
imshow(mask_display, axes[1, 0])
imshow(image * mask_union, axes[1, 1])
image_axe = axes if masks is None else axes[0, 0]
imshow(image, image_axe)
fig.tight_layout(pad=0)
fig.show()
def interactive_visualizer(ply_path):
with gr.Blocks() as demo:
gr.Markdown("# 3D Gaussian Splatting (black-screen loading might take a while)")
gr.Model3D(
value=ply_path, # splat file
label="3D Scene",
)
demo.launch(share=True)