Vincentqyw
update: features and matchers
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import os.path as osp
import numpy as np
import torch
import torch.nn.functional as F
from torch.utils.data import Dataset
from loguru import logger
from src.utils.dataset import read_megadepth_gray, read_megadepth_depth
class MegaDepthDataset(Dataset):
def __init__(self,
root_dir,
npz_path,
mode='train',
min_overlap_score=0.4,
img_resize=None,
df=None,
img_padding=False,
depth_padding=False,
augment_fn=None,
**kwargs):
"""
Manage one scene(npz_path) of MegaDepth dataset.
Args:
root_dir (str): megadepth root directory that has `phoenix`.
npz_path (str): {scene_id}.npz path. This contains image pair information of a scene.
mode (str): options are ['train', 'val', 'test']
min_overlap_score (float): how much a pair should have in common. In range of [0, 1]. Set to 0 when testing.
img_resize (int, optional): the longer edge of resized images. None for no resize. 640 is recommended.
This is useful during training with batches and testing with memory intensive algorithms.
df (int, optional): image size division factor. NOTE: this will change the final image size after img_resize.
img_padding (bool): If set to 'True', zero-pad the image to squared size. This is useful during training.
depth_padding (bool): If set to 'True', zero-pad depthmap to (2000, 2000). This is useful during training.
augment_fn (callable, optional): augments images with pre-defined visual effects.
"""
super().__init__()
self.root_dir = root_dir
self.mode = mode
self.scene_id = npz_path.split('.')[0]
# prepare scene_info and pair_info
if mode == 'test' and min_overlap_score != 0:
logger.warning("You are using `min_overlap_score`!=0 in test mode. Set to 0.")
min_overlap_score = 0
self.scene_info = np.load(npz_path, allow_pickle=True)
self.pair_infos = self.scene_info['pair_infos'].copy()
del self.scene_info['pair_infos']
self.pair_infos = [pair_info for pair_info in self.pair_infos if pair_info[1] > min_overlap_score]
# parameters for image resizing, padding and depthmap padding
if mode == 'train':
assert img_resize is not None and img_padding and depth_padding
self.img_resize = img_resize
if mode == 'val':
self.img_resize = 864
self.df = df
self.img_padding = img_padding
self.depth_max_size = 2000 if depth_padding else None # the upperbound of depthmaps size in megadepth.
# for training LoFTR
self.augment_fn = augment_fn if mode == 'train' else None
self.coarse_scale = getattr(kwargs, 'coarse_scale', 0.125)
def __len__(self):
return len(self.pair_infos)
def __getitem__(self, idx):
(idx0, idx1), overlap_score, central_matches = self.pair_infos[idx]
# read grayscale image and mask. (1, h, w) and (h, w)
img_name0 = osp.join(self.root_dir, self.scene_info['image_paths'][idx0])
img_name1 = osp.join(self.root_dir, self.scene_info['image_paths'][idx1])
# TODO: Support augmentation & handle seeds for each worker correctly.
image0, mask0, scale0 = read_megadepth_gray(
img_name0, self.img_resize, self.df, self.img_padding, None)
# np.random.choice([self.augment_fn, None], p=[0.5, 0.5]))
image1, mask1, scale1 = read_megadepth_gray(
img_name1, self.img_resize, self.df, self.img_padding, None)
# np.random.choice([self.augment_fn, None], p=[0.5, 0.5]))
# read depth. shape: (h, w)
if self.mode in ['train', 'val']:
depth0 = read_megadepth_depth(
osp.join(self.root_dir, self.scene_info['depth_paths'][idx0]), pad_to=self.depth_max_size)
depth1 = read_megadepth_depth(
osp.join(self.root_dir, self.scene_info['depth_paths'][idx1]), pad_to=self.depth_max_size)
else:
depth0 = depth1 = torch.tensor([])
# read intrinsics of original size
K_0 = torch.tensor(self.scene_info['intrinsics'][idx0].copy(), dtype=torch.float).reshape(3, 3)
K_1 = torch.tensor(self.scene_info['intrinsics'][idx1].copy(), dtype=torch.float).reshape(3, 3)
# read and compute relative poses
T0 = self.scene_info['poses'][idx0]
T1 = self.scene_info['poses'][idx1]
T_0to1 = torch.tensor(np.matmul(T1, np.linalg.inv(T0)), dtype=torch.float)[:4, :4] # (4, 4)
T_1to0 = T_0to1.inverse()
data = {
'image0': image0, # (1, h, w)
'depth0': depth0, # (h, w)
'image1': image1,
'depth1': depth1,
'T_0to1': T_0to1, # (4, 4)
'T_1to0': T_1to0,
'K0': K_0, # (3, 3)
'K1': K_1,
'scale0': scale0, # [scale_w, scale_h]
'scale1': scale1,
'dataset_name': 'MegaDepth',
'scene_id': self.scene_id,
'pair_id': idx,
'pair_names': (self.scene_info['image_paths'][idx0], self.scene_info['image_paths'][idx1]),
}
# for LoFTR training
if mask0 is not None: # img_padding is True
if self.coarse_scale:
[ts_mask_0, ts_mask_1] = F.interpolate(torch.stack([mask0, mask1], dim=0)[None].float(),
scale_factor=self.coarse_scale,
mode='nearest',
recompute_scale_factor=False)[0].bool()
data.update({'mask0': ts_mask_0, 'mask1': ts_mask_1})
return data