Trellis.2.multiview / trellis2 /datasets /sparse_structure_latent.py
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import os
import json
from typing import *
import numpy as np
import torch
from ..representations import Voxel
from ..renderers import VoxelRenderer
from .components import StandardDatasetBase, ImageConditionedMixin
from .. import models
from ..utils.render_utils import yaw_pitch_r_fov_to_extrinsics_intrinsics
class SparseStructureLatentVisMixin:
def __init__(
self,
*args,
pretrained_ss_dec: str = 'JeffreyXiang/TRELLIS-image-large/ckpts/ss_dec_conv3d_16l8_fp16.json',
ss_dec_path: Optional[str] = None,
ss_dec_ckpt: Optional[str] = None,
**kwargs
):
super().__init__(*args, **kwargs)
self.ss_dec = None
self.pretrained_ss_dec = pretrained_ss_dec
self.ss_dec_path = ss_dec_path
self.ss_dec_ckpt = ss_dec_ckpt
def _loading_ss_dec(self):
if self.ss_dec is not None:
return
if self.ss_dec_path is not None:
cfg = json.load(open(os.path.join(self.ss_dec_path, 'config.json'), 'r'))
decoder = getattr(models, cfg['models']['decoder']['name'])(**cfg['models']['decoder']['args'])
ckpt_path = os.path.join(self.ss_dec_path, 'ckpts', f'decoder_{self.ss_dec_ckpt}.pt')
decoder.load_state_dict(torch.load(ckpt_path, map_location='cpu', weights_only=True))
else:
decoder = models.from_pretrained(self.pretrained_ss_dec)
self.ss_dec = decoder.cuda().eval()
def _delete_ss_dec(self):
del self.ss_dec
self.ss_dec = None
@torch.no_grad()
def decode_latent(self, z, batch_size=4):
self._loading_ss_dec()
ss = []
if self.normalization:
z = z * self.std.to(z.device) + self.mean.to(z.device)
for i in range(0, z.shape[0], batch_size):
ss.append(self.ss_dec(z[i:i+batch_size]))
ss = torch.cat(ss, dim=0)
self._delete_ss_dec()
return ss
@torch.no_grad()
def visualize_sample(self, x_0: Union[torch.Tensor, dict]):
x_0 = x_0 if isinstance(x_0, torch.Tensor) else x_0['x_0']
x_0 = self.decode_latent(x_0.cuda())
renderer = VoxelRenderer()
renderer.rendering_options.resolution = 512
renderer.rendering_options.ssaa = 4
# build camera
yaw = [0, np.pi/2, np.pi, 3*np.pi/2]
yaw_offset = -16 / 180 * np.pi
yaw = [y + yaw_offset for y in yaw]
pitch = [20 / 180 * np.pi for _ in range(4)]
exts, ints = yaw_pitch_r_fov_to_extrinsics_intrinsics(yaw, pitch, 2, 30)
images = []
# Build each representation
x_0 = x_0.cuda()
for i in range(x_0.shape[0]):
coords = torch.nonzero(x_0[i, 0] > 0, as_tuple=False)
resolution = x_0.shape[-1]
color = coords / resolution
rep = Voxel(
origin=[-0.5, -0.5, -0.5],
voxel_size=1/resolution,
coords=coords,
attrs=color,
layout={
'color': slice(0, 3),
}
)
image = torch.zeros(3, 1024, 1024).cuda()
tile = [2, 2]
for j, (ext, intr) in enumerate(zip(exts, ints)):
res = renderer.render(rep, ext, intr, colors_overwrite=color)
image[:, 512 * (j // tile[1]):512 * (j // tile[1] + 1), 512 * (j % tile[1]):512 * (j % tile[1] + 1)] = res['color']
images.append(image)
return torch.stack(images)
class SparseStructureLatent(SparseStructureLatentVisMixin, StandardDatasetBase):
"""
Sparse structure latent dataset
Args:
roots (str): path to the dataset
min_aesthetic_score (float): minimum aesthetic score
normalization (dict): normalization stats
pretrained_ss_dec (str): name of the pretrained sparse structure decoder
ss_dec_path (str): path to the sparse structure decoder, if given, will override the pretrained_ss_dec
ss_dec_ckpt (str): name of the sparse structure decoder checkpoint
"""
def __init__(self,
roots: str,
*,
min_aesthetic_score: float = 5.0,
normalization: Optional[dict] = None,
pretrained_ss_dec: str = 'JeffreyXiang/TRELLIS-image-large/ckpts/ss_dec_conv3d_16l8_fp16',
ss_dec_path: Optional[str] = None,
ss_dec_ckpt: Optional[str] = None,
):
self.min_aesthetic_score = min_aesthetic_score
self.normalization = normalization
self.value_range = (0, 1)
super().__init__(
roots,
pretrained_ss_dec=pretrained_ss_dec,
ss_dec_path=ss_dec_path,
ss_dec_ckpt=ss_dec_ckpt,
)
if self.normalization is not None:
self.mean = torch.tensor(self.normalization['mean']).reshape(-1, 1, 1, 1)
self.std = torch.tensor(self.normalization['std']).reshape(-1, 1, 1, 1)
def filter_metadata(self, metadata):
stats = {}
metadata = metadata[metadata['ss_latent_encoded'] == True]
stats['With latent'] = len(metadata)
metadata = metadata[metadata['aesthetic_score'] >= self.min_aesthetic_score]
stats[f'Aesthetic score >= {self.min_aesthetic_score}'] = len(metadata)
return metadata, stats
def get_instance(self, root, instance):
latent = np.load(os.path.join(root['ss_latent'], f'{instance}.npz'))
z = torch.tensor(latent['z']).float()
if self.normalization is not None:
z = (z - self.mean) / self.std
pack = {
'x_0': z,
}
return pack
class ImageConditionedSparseStructureLatent(ImageConditionedMixin, SparseStructureLatent):
"""
Image-conditioned sparse structure dataset
"""
pass