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import random
import numpy as np
import torch
import torch.nn as nn
from easydict import EasyDict as edict
from einops import rearrange
import imageio
import math
def create_video_from_frames(frames, output_video_file, framerate=30):
"""
Creates a video from a sequence of frames.
Parameters:
frames (numpy.ndarray): Array of image frames (shape: N x H x W x C).
output_video_file (str): Path to save the output video file.
framerate (int, optional): Frames per second for the video. Default is 30.
"""
frames = np.asarray(frames)
# Normalize frames if values are in [0,1] range
if frames.max() <= 1:
frames = (frames * 255).astype(np.uint8)
imageio.mimsave(output_video_file, frames, fps=framerate, quality=8)
# used in lvsm repo, which is slightly different from rayzer's view sampling setting
class ProcessData(nn.Module):
def __init__(self, config):
super().__init__()
self.config = config
@torch.no_grad()
def compute_rays(self, c2w, fxfycxcy, h=None, w=None, device="cuda"):
"""
Args:
c2w (torch.tensor): [b, v, 4, 4]
fxfycxcy (torch.tensor): [b, v, 4]
h (int): height of the image
w (int): width of the image
Returns:
ray_o (torch.tensor): [b, v, 3, h, w]
ray_d (torch.tensor): [b, v, 3, h, w]
"""
b, v = c2w.size()[:2]
c2w = c2w.reshape(b * v, 4, 4)
fx, fy, cx, cy = fxfycxcy[:, :, 0], fxfycxcy[:, :, 1], fxfycxcy[:, :, 2], fxfycxcy[:, :, 3]
h_orig = int(2 * cy.max().item()) # Original height (estimated from the intrinsic matrix)
w_orig = int(2 * cx.max().item()) # Original width (estimated from the intrinsic matrix)
if h is None or w is None:
h, w = h_orig, w_orig
# in case the ray/image map has different resolution than the original image
if h_orig != h or w_orig != w:
fx = fx * w / w_orig
fy = fy * h / h_orig
cx = cx * w / w_orig
cy = cy * h / h_orig
fxfycxcy = fxfycxcy.reshape(b * v, 4)
y, x = torch.meshgrid(torch.arange(h), torch.arange(w), indexing="ij")
y, x = y.to(device), x.to(device)
x = x[None, :, :].expand(b * v, -1, -1).reshape(b * v, -1)
y = y[None, :, :].expand(b * v, -1, -1).reshape(b * v, -1)
x = (x + 0.5 - fxfycxcy[:, 2:3]) / fxfycxcy[:, 0:1]
y = (y + 0.5 - fxfycxcy[:, 3:4]) / fxfycxcy[:, 1:2]
z = torch.ones_like(x)
ray_d = torch.stack([x, y, z], dim=2) # [b*v, h*w, 3]
ray_d = torch.bmm(ray_d, c2w[:, :3, :3].transpose(1, 2)) # [b*v, h*w, 3]
ray_d = ray_d / torch.norm(ray_d, dim=2, keepdim=True) # [b*v, h*w, 3]
ray_o = c2w[:, :3, 3][:, None, :].expand_as(ray_d) # [b*v, h*w, 3]
ray_o = rearrange(ray_o, "(b v) (h w) c -> b v c h w", b=b, v=v, h=h, w=w, c=3)
ray_d = rearrange(ray_d, "(b v) (h w) c -> b v c h w", b=b, v=v, h=h, w=w, c=3)
return ray_o, ray_d
def fetch_views(self, data_batch, has_target_image=False, target_has_input=True):
"""
Splits the input data batch into input and target sets.
Args:
data_batch (dict): Contains input tensors with the following keys:
- 'image' (torch.Tensor): Shape [b, v, c, h, w], optional for some target views
- 'fxfycxcy' (torch.Tensor): Shape [b, v, 4]
- 'c2w' (torch.Tensor): Shape [b, v, 4, 4]
target_has_input (bool): If True, target includes input views.
Returns:
tuple: (input_dict, target_dict), both as EasyDict objects.
"""
# randomize input views if dynamic_input_view_num is True and not in inference mode
if self.config.training.get("dynamic_input_view_num", False) and (
not self.config.inference.get("if_inference", False)
):
self.config.training.num_input_views = np.random.randint(2, 5)
input_dict, target_dict = {}, {}
# index = [] save for future use if we want to select specific views
# Handle different data formats from adapters
if "input" in data_batch and "target" in data_batch:
# Handle nested format from simple_stereo4d_adapter
# The DataLoader batches the data, so we get [B, V, C, H, W] format
input_images = data_batch["input"]["image"] # [B, num_input, 3, H, W]
target_images = data_batch["target"]["image"] # [B, num_target, 3, H, W]
# Concatenate along the view dimension (dim=1)
all_images = torch.cat([input_images, target_images], dim=1) # [B, V, 3, H, W]
# Create flat structure that rest of fetch_views expects
data_batch_flat = {
"image": all_images, # [B, V, 3, H, W] - already has batch dim
"scene_name": data_batch.get("scene_name", ""),
"fps": data_batch.get("fps", 0.0),
"frame_count": data_batch.get("frame_count", 0),
}
# Add time if available
if "time" in data_batch["input"] and "time" in data_batch["target"]:
input_time = data_batch["input"]["time"] # [B, num_input, 1]
target_time = data_batch["target"]["time"] # [B, num_target, 1]
all_time = torch.cat([input_time, target_time], dim=1) # [B, V, 1]
data_batch_flat["time"] = all_time # [B, V, 1]
# Add index field for visualization (required by metric_utils.py)
# Create index from time information and batch indices
B = all_images.shape[0]
V = all_images.shape[1]
# Use time values to create pseudo frame indices
# Convert normalized time [-1, 1] to frame-like indices [0, 1000]
if "time" in data_batch_flat:
time_tensor = data_batch_flat["time"] # [B, V, 1]
pseudo_frame_indices = (
(time_tensor.squeeze(-1) + 1.0) * 500
).long() # [B, V] in [0, 1000]
else:
# Fallback: use view indices as frame indices
pseudo_frame_indices = (
torch.arange(V, device=all_images.device).unsqueeze(0).expand(B, -1)
) # [B, V]
# Create scene indices (batch indices repeated for each view)
scene_indices = (
torch.arange(B, device=all_images.device).unsqueeze(1).expand(B, V)
) # [B, V]
# Combine frame and scene indices
index_field = torch.stack([pseudo_frame_indices, scene_indices], dim=-1) # [B, V, 2]
data_batch_flat["index"] = index_field
data_batch = data_batch_flat
num_target_views, num_views, bs = (
self.config.training.num_target_views,
data_batch["image"].size(1),
data_batch["image"].size(0),
)
elif "c2w" in data_batch:
num_target_views, num_views, bs = (
self.config.training.num_target_views,
data_batch["c2w"].size(1),
data_batch["image"].size(0),
)
else:
# For pose-free datasets, get dimensions from image tensor
num_target_views, num_views, bs = (
self.config.training.num_target_views,
data_batch["image"].size(1),
data_batch["image"].size(0),
)
assert (
num_target_views < num_views
), f"We have {num_views} views, but we want to select {num_target_views} target views. This is more than the total number of views we have."
K = int(self.config.training.num_input_views)
T = int(num_target_views)
# Decide the target view indices
if target_has_input:
# Target views are the remaining views after inputs (maintaining temporal order)
# Since your dataset puts inputs first, targets are views K to V-1
target_indices = list(range(K, num_views)) # Views after the first K input views
index = torch.tensor(
[
target_indices[
:num_target_views
] # Take the first num_target_views from remaining
for _ in range(bs)
],
dtype=torch.long,
device=data_batch["image"].device,
) # [b, num_target_views]
else:
# assert (
# self.config.training.num_input_views + num_target_views <= self.config.training.num_views
# ), f"We have {self.config.training.num_views} views in total, but we want to select {self.config.training.num_input_views} input views and {num_target_views} target views. This is more than the total number of views we have."
# index = torch.tensor([
# [self.config.training.num_views - 1 - j for j in range(num_target_views)]
# for _ in range(bs)
# ], dtype=torch.long, device=data_batch["image"].device)
# index = torch.sort(index, dim=1).values # [b, num_target_views]
assert (
K + T <= num_views
), f"Need K (inputs) + T (targets) <= num_views, got {K}+{T}>{num_views}"
base = torch.arange(K, K + T, device=data_batch["image"].device) # [T]
index = base.unsqueeze(0).expand(bs, -1).to(torch.long) # [b, T]
skip_keys = {
"scene_name",
"fps",
"frame_count",
"context_indices",
"target_indices",
"context_source_indices",
"target_source_indices",
"context_original_filenames",
"target_original_filenames",
"context_gt_original_filenames",
"target_gt_original_filenames",
}
for key, value in data_batch.items():
if key in skip_keys:
# Preserve metadata tensors/lists without slicing by view dimension
input_dict[key] = value
target_dict[key] = value
continue
# Handle tensors with view dimensions
if isinstance(value, torch.Tensor) and len(value.shape) >= 2:
input_dict[key] = value[:, : self.config.training.num_input_views, ...]
else:
# Handle other data types or unexpected shapes
input_dict[key] = value
target_dict[key] = value
continue
to_expand_dim = value.shape[2:] # [b, v, ...] -> [...]
expanded_index = index.view(
index.shape[0], index.shape[1], *(1,) * len(to_expand_dim)
).expand(-1, -1, *to_expand_dim)
# Don't have target image supervision
if key == "image" and not has_target_image:
continue
else:
target_dict[key] = torch.gather(value, dim=1, index=expanded_index)
height, width = data_batch["image"].shape[3], data_batch["image"].shape[4]
input_dict["image_h_w"] = (height, width)
target_dict["image_h_w"] = (height, width)
input_dict, target_dict = edict(input_dict), edict(target_dict)
return input_dict, target_dict
@torch.no_grad()
def forward(self, data_batch, has_target_image=True, target_has_input=True, compute_rays=True):
"""
Preprocesses the input data batch and (optionally) computes ray_o and ray_d.
Args:
data_batch (dict): Contains input tensors with the following keys:
- 'image' (torch.Tensor): Shape [b, v, c, h, w]
- 'fxfycxcy' (torch.Tensor): Shape [b, v, 4]
- 'c2w' (torch.Tensor): Shape [b, v, 4, 4]
has_target_image (bool): If True, target views have image supervision.
target_has_input (bool): If True, target views can be sampled from input views.
compute_rays (bool): If True, compute ray_o and ray_d.
Returns:
Input and Target data_batch (dict): Contains processed tensors with the following keys:
- 'image' (torch.Tensor): Shape [b, v, c, h, w]
- 'fxfycxcy' (torch.Tensor): Shape [b, v, 4]
- 'c2w' (torch.Tensor): Shape [b, v, 4, 4]
- 'ray_o' (torch.Tensor): Shape [b, v, 3, h, w]
- 'ray_d' (torch.Tensor): Shape [b, v, 3, h, w]
- 'image_h_w' (tuple): (height, width)
"""
input_dict, target_dict = self.fetch_views(
data_batch, has_target_image=has_target_image, target_has_input=target_has_input
)
if compute_rays:
for dict in [input_dict, target_dict]:
c2w = dict["c2w"]
fxfycxcy = dict["fxfycxcy"]
image_height, image_width = dict["image_h_w"]
ray_o, ray_d = self.compute_rays(
c2w, fxfycxcy, image_height, image_width, device=data_batch["image"].device
)
dict["ray_o"], dict["ray_d"] = ray_o, ray_d
return input_dict, target_dict
class SplitData(nn.Module):
def __init__(self, config):
super().__init__()
self.config = config
# Basic check: we want num_input_views + num_target_views = num_views
assert (
self.config.training.num_views
== self.config.training.num_input_views + self.config.training.num_target_views
), "num_input_views + num_target_views must equal num_views"
# Precompute input and target indices (no overlap, evenly spaced)
self.input_pattern, self.target_pattern = self._build_indices(
total_views=self.config.training.num_views,
num_input_views=self.config.training.num_input_views,
num_target_views=self.config.training.num_target_views,
)
print(
"When not using random index, input and target indices are:",
self.input_pattern,
self.target_pattern,
)
# tmp1, tmp2 = self.input_pattern[-1].clone(), self.target_pattern[-1].clone()
# self.target_pattern[-1] = tmp1
# self.input_pattern[-1] = tmp2
@torch.no_grad()
def forward(self, data_batch, random_index=True):
"""
Each tensor in data_batch has shape [B, V, ...].
We'll slice along dimension 1 (the 'view' dimension).
"""
input_dict, target_dict = {}, {}
B, V = data_batch["image"].shape[:2]
batch_idx = torch.arange(B).unsqueeze(1).to(data_batch["image"].device)
# Check if using dataset-provided indices (evaluation mode)
use_dataset_indices = "context_indices" in data_batch and "target_indices" in data_batch
if use_dataset_indices:
# use loaded view indices, for evaluation
input_pattern = data_batch["context_indices"]
target_pattern = data_batch["target_indices"]
else:
# for training
if random_index:
input_pattern, target_pattern = self.get_random_index(B, V)
else:
input_pattern, target_pattern = self.input_pattern.unsqueeze(0).repeat(
B, 1
), self.target_pattern.unsqueeze(0).repeat(B, 1)
for key, value in data_batch.items():
if key in set(
[
"scene_name",
"context_indices",
"target_indices",
"dataset_sources",
"dataset_source",
]
):
continue
# value shape: [B, V, ...]
B, V = value.shape[:2]
# Only validate view count for training (not for evaluation with dataset-provided indices)
if not use_dataset_indices:
expected_views = self.config.training.num_views
if V != expected_views:
raise ValueError(f"Expected {key} to have {expected_views} views, got {V}.")
input_dict[key] = value[batch_idx, input_pattern, ...]
target_dict[key] = value[batch_idx, target_pattern, ...]
# Add scene_name to both dicts (needed for evaluation)
# scene_name should be indexed by batch when it's a list
if "scene_name" in data_batch:
scene_names = data_batch["scene_name"]
# If it's a list (batched), keep as list; if single string, keep as string
input_dict["scene_name"] = scene_names
target_dict["scene_name"] = scene_names
return edict(input_dict), edict(target_dict), input_pattern, target_pattern
def _build_indices(self, total_views, num_input_views, num_target_views):
"""
Build two arrays of indices for input and target such that
they don't overlap and cover all views evenly.
E.g. total_views=24, num_input_views=16, num_target_views=8
=> input might be [0,1,3,4,6,7,9,10,...], target [2,5,8,11,...]
"""
# Simple approach: gcd-based grouping
g = math.gcd(num_input_views, num_target_views)
group_size = total_views // g # number of consecutive indices per group
in_per_group = num_input_views // g
tar_per_group = num_target_views // g
input_indices = []
target_indices = []
for group_idx in range(g):
start = group_idx * group_size
block = list(range(start, start + group_size))
# first part goes to inputs
input_indices.extend(block[:in_per_group])
# next part goes to targets
target_indices.extend(block[in_per_group : in_per_group + tar_per_group])
# Convert to torch.LongTensor
input_indices = torch.tensor(input_indices, dtype=torch.long)
target_indices = torch.tensor(target_indices, dtype=torch.long)
input_indices, _ = torch.sort(input_indices)
target_indices, _ = torch.sort(target_indices)
return input_indices, target_indices
def get_random_index(self, b, v):
total_views = self.config.training.num_views
num_input_views = self.config.training.num_input_views
num_target_views = self.config.training.num_target_views
random_shuffle = self.config.training.view_selector.get("shuffle", False)
assert (
num_input_views + num_target_views == total_views
), "Mismatch in total views allocation."
rand_vals = torch.rand(b, v) # shape [B, V]
perms = rand_vals.argsort(dim=1) # shape [B, V]
# Ensure at least one index in input is smaller than all in target, and one index in input is larger than all in target
idx_part1 = torch.zeros((b, num_input_views), dtype=torch.long, device=perms.device)
idx_part2 = torch.zeros((b, num_target_views), dtype=torch.long, device=perms.device)
for i in range(b):
# Ensure the first index in input is always 0 and the last index is always v-1
idx_part1[i, 0] = 0
idx_part1[i, -1] = v - 1
# Remaining indices to choose from
remaining_indices = torch.arange(1, v - 1, device=perms.device) # Exclude 0 and v-1
# Randomly sample (num_input_views - 2) indices from remaining
middle_size = num_input_views - 2
middle_indices = remaining_indices[torch.randperm(len(remaining_indices))[:middle_size]]
middle_indices, _ = middle_indices.sort() # Ensure sorted order
# Assign middle indices to idx_part1
idx_part1[i, 1:-1] = middle_indices
# Target indices are the remaining ones
idx_part2_indeices = torch.tensor(
[x for x in range(v) if x not in idx_part1[i]], device=perms.device
)
idx_part2_indeices, _ = idx_part2_indeices.sort() # Ensure sorted order for target
idx_part2[i] = idx_part2_indeices
if random_shuffle:
idx_part1[i] = idx_part1[i][torch.randperm(num_input_views)]
idx_part2[i] = idx_part2[i][torch.randperm(num_target_views)]
return idx_part1, idx_part2
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