liguang0115's picture
Add initial project structure with core files, configurations, and sample images
2df809d
raw
history blame
4.65 kB
import os.path as osp
import cv2
import numpy as np
import itertools
import os
import sys
sys.path.append(osp.join(osp.dirname(__file__), "..", ".."))
from tqdm import tqdm
from dust3r.datasets.base.base_multiview_dataset import BaseMultiViewDataset
from dust3r.utils.image import imread_cv2
class Spring(BaseMultiViewDataset):
def __init__(self, *args, ROOT, **kwargs):
self.ROOT = ROOT
self.video = True
self.is_metric = True
self.max_interval = 16
super().__init__(*args, **kwargs)
self.loaded_data = self._load_data()
def _load_data(self):
self.scenes = os.listdir(self.ROOT)
offset = 0
scenes = []
sceneids = []
scene_img_list = []
images = []
start_img_ids = []
j = 0
for scene in tqdm(self.scenes):
scene_dir = osp.join(self.ROOT, scene)
rgb_dir = osp.join(scene_dir, "rgb")
basenames = sorted(
[f[:-4] for f in os.listdir(rgb_dir) if f.endswith(".png")]
)
num_imgs = len(basenames)
img_ids = list(np.arange(num_imgs) + offset)
# start_img_ids_ = img_ids[:-self.num_views+1]
cut_off = (
self.num_views if not self.allow_repeat else max(self.num_views // 3, 3)
)
start_img_ids_ = img_ids[: num_imgs - cut_off + 1]
if num_imgs < cut_off:
print(f"Skipping {scene}")
continue
start_img_ids.extend(start_img_ids_)
sceneids.extend([j] * num_imgs)
images.extend(basenames)
scenes.append(scene)
scene_img_list.append(img_ids)
# offset groups
offset += num_imgs
j += 1
self.scenes = scenes
self.sceneids = sceneids
self.images = images
self.start_img_ids = start_img_ids
self.scene_img_list = scene_img_list
def __len__(self):
return len(self.start_img_ids)
def get_image_num(self):
return len(self.images)
def _get_views(self, idx, resolution, rng, num_views):
start_id = self.start_img_ids[idx]
all_image_ids = self.scene_img_list[self.sceneids[start_id]]
pos, ordered_video = self.get_seq_from_start_id(
num_views,
start_id,
all_image_ids,
rng,
max_interval=self.max_interval,
video_prob=1.0,
fix_interval_prob=1.0,
)
image_idxs = np.array(all_image_ids)[pos]
views = []
for v, view_idx in enumerate(image_idxs):
scene_id = self.sceneids[view_idx]
scene_dir = osp.join(self.ROOT, self.scenes[scene_id])
rgb_dir = osp.join(scene_dir, "rgb")
depth_dir = osp.join(scene_dir, "depth")
cam_dir = osp.join(scene_dir, "cam")
basename = self.images[view_idx]
# Load RGB image
rgb_image = imread_cv2(osp.join(rgb_dir, basename + ".png"))
# Load depthmap
depthmap = np.load(osp.join(depth_dir, basename + ".npy"))
depthmap[~np.isfinite(depthmap)] = 0 # invalid
cam = np.load(osp.join(cam_dir, basename + ".npz"))
camera_pose = cam["pose"]
intrinsics = cam["intrinsics"]
rgb_image, depthmap, intrinsics = self._crop_resize_if_necessary(
rgb_image, depthmap, intrinsics, resolution, rng=rng, info=view_idx
)
# generate img mask and raymap mask
img_mask, ray_mask = self.get_img_and_ray_masks(
self.is_metric, v, rng, p=[0.85, 0.10, 0.05]
)
views.append(
dict(
img=rgb_image,
depthmap=depthmap.astype(np.float32),
camera_pose=camera_pose.astype(np.float32),
camera_intrinsics=intrinsics.astype(np.float32),
dataset="spring",
label=self.scenes[scene_id] + "_" + basename,
instance=f"{str(idx)}_{str(view_idx)}",
is_metric=self.is_metric,
is_video=ordered_video,
quantile=np.array(1.0, dtype=np.float32),
img_mask=img_mask,
ray_mask=ray_mask,
camera_only=False,
depth_only=False,
single_view=False,
reset=False,
)
)
assert len(views) == num_views
return views