STLDM_official / data /dutils.py
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'''
dutils.py
A utility library for customized data loading functions
'''
import os
import gzip
import numpy as np
import pandas as pd
import os
import cv2
from typing import List, Union, Dict, Sequence
import numpy as np
import numpy.random as nprand
import datetime
import pandas as pd
import h5py
import torch
import torch.nn.functional as F
from torch.nn.functional import avg_pool2d
import random
from torchvision import transforms as T
from torchvision import datasets
from torch.utils.data import Dataset, DataLoader
from PIL import Image
SEVIR_ROOT_DIR = "data/SEVIR"
METEO_FILE_DIR = "data/meteonet"
def resize(seq, size):
# seq shape : (B, T, 1, H, W)
seq = F.interpolate(seq.squeeze(dim=2), size=size, mode='bilinear', align_corners=False) # (B, T, H, W)
seq = seq.clamp(0,1)
return seq.unsqueeze(2) # (B, T, 1, H, W)
# =====================================================================================
# HKO-7 data
# =====================================================================================
def pixel_to_dBZ_nonlinear(img):
'''
[0, 255] OR [0, 1] pixel => [0, 80] dBZ
'''
if img.mean() > 1.0:
img = img / 255.0
ashift = 31.0
afact = 4.0
atan_dBZ_min = -1.482
atan_dBZ_max = 1.412
tan_pix = np.tan(img * (atan_dBZ_max - atan_dBZ_min) + atan_dBZ_min)
return tan_pix * afact + ashift
def dbZ_to_pixel_nonlinear(dbZ):
'''
[0, 80] dBZ => [0, 255] OR [0, 1] pixel
'''
ashift = 31.0
afact = 4.0
atan_dBZ_min = -1.482
atan_dBZ_max = 1.412
dbZ_adjusted = (dbZ - ashift) / afact
return (np.arctan(dbZ_adjusted) - atan_dBZ_min) / (atan_dBZ_max - atan_dBZ_min)
def dbZ_to_pixel(dbZ):
'''
[0, 80] dbZ => [0, 1] pixel
'''
return np.floor((dbZ + 10) * 255 / 70 + 0.5) / 255.0
def pixel_to_dBZ(pixel):
'''
[0, 255] (or [0, 1]) pixel => [0, 80] dBZ
'''
if pixel.mean() > 1.0:
pixel = pixel / 255.0
return (70 * pixel) - 10
def nonlinear_to_linear(im):
return dbZ_to_pixel(pixel_to_dBZ_nonlinear(im))
def nonlinear_to_linear_batched(seq, datetime):
seq_linear = np.zeros_like(seq)
for i, (seq_b, dt_b) in enumerate(zip(seq, datetime)):
if dt_b[0].year >= 2016:
seq_linear[i] = nonlinear_to_linear(seq_b)
else:
seq_linear[i] = seq_b
seq_linear = np.clip(seq_linear, 0.0, 1.0)
return seq_linear
def linear_to_nonlinear(im):
return dbZ_to_pixel_nonlinear(pixel_to_dBZ(im))
def linear_to_nonlinear_batched(seq, datetime):
seq_nonlinear = np.zeros_like(seq)
for i, (seq_b, dt_b) in enumerate(zip(seq, datetime)):
if dt_b[0].year < 2016:
seq_nonlinear[i] = linear_to_nonlinear(seq_b)
else:
seq_nonlinear[i] = seq_b
seq_nonlinear = np.clip(seq_nonlinear, 0.0, 1.0)
return seq_nonlinear
# =====================================================================================
# SEVIR data
# Code is adapted from https://github.com/MIT-AI-Accelerator/neurips-2020-sevir. Their license is MIT License.
# (From Earthformer's implementation)
# =====================================================================================
# SEVIR Dataset constants
SEVIR_DATA_TYPES = ['vis', 'ir069', 'ir107', 'vil', 'lght']
SEVIR_RAW_DTYPES = {'vis': np.int16,
'ir069': np.int16,
'ir107': np.int16,
'vil': np.uint8,
'lght': np.int16}
LIGHTING_FRAME_TIMES = np.arange(- 120.0, 125.0, 5) * 60
SEVIR_DATA_SHAPE = {'lght': (48, 48), }
PREPROCESS_SCALE_SEVIR = {'vis': 1, # Not utilized in original paper
'ir069': 1 / 1174.68,
'ir107': 1 / 2562.43,
'vil': 1 / 47.54,
'lght': 1 / 0.60517}
PREPROCESS_OFFSET_SEVIR = {'vis': 0, # Not utilized in original paper
'ir069': 3683.58,
'ir107': 1552.80,
'vil': - 33.44,
'lght': - 0.02990}
PREPROCESS_SCALE_01 = {'vis': 1,
'ir069': 1,
'ir107': 1,
'vil': 1 / 255, # currently the only one implemented
'lght': 1}
PREPROCESS_OFFSET_01 = {'vis': 0,
'ir069': 0,
'ir107': 0,
'vil': 0, # currently the only one implemented
'lght': 0}
# sevir
SEVIR_CATALOG = os.path.join(SEVIR_ROOT_DIR, "CATALOG.csv")
SEVIR_DATA_DIR = os.path.join(SEVIR_ROOT_DIR, "data")
SEVIR_RAW_SEQ_LEN = 49
SEVIR_TRAIN_VAL_SPLIT_DATE = datetime.datetime(2019, 1, 1)
SEVIR_TRAIN_TEST_SPLIT_DATE = datetime.datetime(2019, 6, 1)
def change_layout_np(data,
in_layout='NHWT', out_layout='NHWT',
ret_contiguous=False):
# first convert to 'NHWT'
if in_layout == 'NHWT':
pass
elif in_layout == 'NTHW':
data = np.transpose(data,
axes=(0, 2, 3, 1))
elif in_layout == 'NWHT':
data = np.transpose(data,
axes=(0, 2, 1, 3))
elif in_layout == 'NTCHW':
data = data[:, :, 0, :, :]
data = np.transpose(data,
axes=(0, 2, 3, 1))
elif in_layout == 'NTHWC':
data = data[:, :, :, :, 0]
data = np.transpose(data,
axes=(0, 2, 3, 1))
elif in_layout == 'NTWHC':
data = data[:, :, :, :, 0]
data = np.transpose(data,
axes=(0, 3, 2, 1))
elif in_layout == 'TNHW':
data = np.transpose(data,
axes=(1, 2, 3, 0))
elif in_layout == 'TNCHW':
data = data[:, :, 0, :, :]
data = np.transpose(data,
axes=(1, 2, 3, 0))
else:
raise NotImplementedError
if out_layout == 'NHWT':
pass
elif out_layout == 'NTHW':
data = np.transpose(data,
axes=(0, 3, 1, 2))
elif out_layout == 'NWHT':
data = np.transpose(data,
axes=(0, 2, 1, 3))
elif out_layout == 'NTCHW':
data = np.transpose(data,
axes=(0, 3, 1, 2))
data = np.expand_dims(data, axis=2)
elif out_layout == 'NTHWC':
data = np.transpose(data,
axes=(0, 3, 1, 2))
data = np.expand_dims(data, axis=-1)
elif out_layout == 'NTWHC':
data = np.transpose(data,
axes=(0, 3, 2, 1))
data = np.expand_dims(data, axis=-1)
elif out_layout == 'TNHW':
data = np.transpose(data,
axes=(3, 0, 1, 2))
elif out_layout == 'TNCHW':
data = np.transpose(data,
axes=(3, 0, 1, 2))
data = np.expand_dims(data, axis=2)
else:
raise NotImplementedError
if ret_contiguous:
data = data.ascontiguousarray()
return data
def change_layout_torch(data,
in_layout='NHWT', out_layout='NHWT',
ret_contiguous=False):
# first convert to 'NHWT'
if in_layout == 'NHWT':
pass
elif in_layout == 'NTHW':
data = data.permute(0, 2, 3, 1)
elif in_layout == 'NTCHW':
data = data[:, :, 0, :, :]
data = data.permute(0, 2, 3, 1)
elif in_layout == 'NTHWC':
data = data[:, :, :, :, 0]
data = data.permute(0, 2, 3, 1)
elif in_layout == 'TNHW':
data = data.permute(1, 2, 3, 0)
elif in_layout == 'TNCHW':
data = data[:, :, 0, :, :]
data = data.permute(1, 2, 3, 0)
else:
raise NotImplementedError
if out_layout == 'NHWT':
pass
elif out_layout == 'NTHW':
data = data.permute(0, 3, 1, 2)
elif out_layout == 'NTCHW':
data = data.permute(0, 3, 1, 2)
data = torch.unsqueeze(data, dim=2)
elif out_layout == 'NTHWC':
data = data.permute(0, 3, 1, 2)
data = torch.unsqueeze(data, dim=-1)
elif out_layout == 'TNHW':
data = data.permute(3, 0, 1, 2)
elif out_layout == 'TNCHW':
data = data.permute(3, 0, 1, 2)
data = torch.unsqueeze(data, dim=2)
else:
raise NotImplementedError
if ret_contiguous:
data = data.contiguous()
return data
class SEVIRDataLoader:
r"""
DataLoader that loads SEVIR sequences, and spilts each event
into segments according to specified sequence length.
Event Frames:
[-----------------------raw_seq_len----------------------]
[-----seq_len-----]
<--stride-->[-----seq_len-----]
<--stride-->[-----seq_len-----]
...
"""
def __init__(self,
data_types: Sequence[str] = None,
seq_len: int = 49,
raw_seq_len: int = 49,
sample_mode: str = 'sequent',
stride: int = 12,
batch_size: int = 1,
layout: str = 'NHWT',
num_shard: int = 1,
rank: int = 0,
split_mode: str = "uneven",
sevir_catalog: Union[str, pd.DataFrame] = None,
sevir_data_dir: str = None,
start_date: datetime.datetime = None,
end_date: datetime.datetime = None,
datetime_filter=None,
catalog_filter='default',
shuffle: bool = False,
shuffle_seed: int = 1,
output_type=np.float32,
preprocess: bool = True,
rescale_method: str = '01',
downsample_dict: Dict[str, Sequence[int]] = None,
verbose: bool = False):
r"""
Parameters
----------
data_types
A subset of SEVIR_DATA_TYPES.
seq_len
The length of the data sequences. Should be smaller than the max length raw_seq_len.
raw_seq_len
The length of the raw data sequences.
sample_mode
'random' or 'sequent'
stride
Useful when sample_mode == 'sequent'
stride must not be smaller than out_len to prevent data leakage in testing.
batch_size
Number of sequences in one batch.
layout
str: consists of batch_size 'N', seq_len 'T', channel 'C', height 'H', width 'W'
The layout of sampled data. Raw data layout is 'NHWT'.
valid layout: 'NHWT', 'NTHW', 'NTCHW', 'TNHW', 'TNCHW'.
num_shard
Split the whole dataset into num_shard parts for distributed training.
rank
Rank of the current process within num_shard.
split_mode: str
if 'ceil', all `num_shard` dataloaders have the same length = ceil(total_len / num_shard).
Different dataloaders may have some duplicated data batches, if the total size of datasets is not divided by num_shard.
if 'floor', all `num_shard` dataloaders have the same length = floor(total_len / num_shard).
The last several data batches may be wasted, if the total size of datasets is not divided by num_shard.
if 'uneven', the last datasets has larger length when the total length is not divided by num_shard.
The uneven split leads to synchronization error in dist.all_reduce() or dist.barrier().
See related issue: https://github.com/pytorch/pytorch/issues/33148
Notice: this also affects the behavior of `self.use_up`.
sevir_catalog
Name of SEVIR catalog CSV file.
sevir_data_dir
Directory path to SEVIR data.
start_date
Start time of SEVIR samples to generate.
end_date
End time of SEVIR samples to generate.
datetime_filter
function
Mask function applied to time_utc column of catalog (return true to keep the row).
Pass function of the form lambda t : COND(t)
Example: lambda t: np.logical_and(t.dt.hour>=13,t.dt.hour<=21) # Generate only day-time events
catalog_filter
function or None or 'default'
Mask function applied to entire catalog dataframe (return true to keep row).
Pass function of the form lambda catalog: COND(catalog)
Example: lambda c: [s[0]=='S' for s in c.id] # Generate only the 'S' events
shuffle
bool, If True, data samples are shuffled before each epoch.
shuffle_seed
int, Seed to use for shuffling.
output_type
np.dtype, dtype of generated tensors
preprocess
bool, If True, self.preprocess_data_dict(data_dict) is called before each sample generated
downsample_dict:
dict, downsample_dict.keys() == data_types. downsample_dict[key] is a Sequence of (t_factor, h_factor, w_factor),
representing the downsampling factors of all dimensions.
verbose
bool, verbose when opening raw data files
"""
super(SEVIRDataLoader, self).__init__()
if sevir_catalog is None:
sevir_catalog = SEVIR_CATALOG
if sevir_data_dir is None:
sevir_data_dir = SEVIR_DATA_DIR
if data_types is None:
data_types = SEVIR_DATA_TYPES
else:
assert set(data_types).issubset(SEVIR_DATA_TYPES)
# configs which should not be modified
self._dtypes = SEVIR_RAW_DTYPES
self.lght_frame_times = LIGHTING_FRAME_TIMES
self.data_shape = SEVIR_DATA_SHAPE
self.raw_seq_len = raw_seq_len
assert seq_len <= self.raw_seq_len, f'seq_len must not be larger than raw_seq_len = {raw_seq_len}, got {seq_len}.'
self.seq_len = seq_len
assert sample_mode in ['random', 'sequent'], f'Invalid sample_mode = {sample_mode}, must be \'random\' or \'sequent\'.'
self.sample_mode = sample_mode
self.stride = stride
self.batch_size = batch_size
valid_layout = ('NHWT', 'NTHW', 'NTCHW', 'NTHWC', 'TNHW', 'TNCHW')
if layout not in valid_layout:
raise ValueError(f'Invalid layout = {layout}! Must be one of {valid_layout}.')
self.layout = layout
self.num_shard = num_shard
self.rank = rank
valid_split_mode = ('ceil', 'floor', 'uneven')
if split_mode not in valid_split_mode:
raise ValueError(f'Invalid split_mode: {split_mode}! Must be one of {valid_split_mode}.')
self.split_mode = split_mode
self._samples = None
self._hdf_files = {}
self.data_types = data_types
if isinstance(sevir_catalog, str):
self.catalog = pd.read_csv(sevir_catalog, parse_dates=['time_utc'], low_memory=False)
else:
self.catalog = sevir_catalog
self.sevir_data_dir = sevir_data_dir
self.datetime_filter = datetime_filter
self.catalog_filter = catalog_filter
self.start_date = start_date
self.end_date = end_date
self.shuffle = shuffle
self.shuffle_seed = int(shuffle_seed)
self.output_type = output_type
self.preprocess = preprocess
self.downsample_dict = downsample_dict
self.rescale_method = rescale_method
self.verbose = verbose
if self.start_date is not None:
self.catalog = self.catalog[self.catalog.time_utc > self.start_date]
if self.end_date is not None:
self.catalog = self.catalog[self.catalog.time_utc <= self.end_date]
if self.datetime_filter:
self.catalog = self.catalog[self.datetime_filter(self.catalog.time_utc)]
if self.catalog_filter is not None:
if self.catalog_filter == 'default':
self.catalog_filter = lambda c: c.pct_missing == 0
self.catalog = self.catalog[self.catalog_filter(self.catalog)]
self._compute_samples()
self._open_files(verbose=self.verbose)
self.reset()
def _compute_samples(self):
"""
Computes the list of samples in catalog to be used. This sets self._samples
"""
# locate all events containing colocated data_types
imgt = self.data_types
imgts = set(imgt)
filtcat = self.catalog[ np.logical_or.reduce([self.catalog.img_type==i for i in imgt]) ]
# remove rows missing one or more requested img_types
filtcat = filtcat.groupby('id').filter(lambda x: imgts.issubset(set(x['img_type'])))
# If there are repeated IDs, remove them (this is a bug in SEVIR)
# TODO: is it necessary to keep one of them instead of deleting them all
filtcat = filtcat.groupby('id').filter(lambda x: x.shape[0]==len(imgt))
self._samples = filtcat.groupby('id').apply(lambda df: self._df_to_series(df,imgt) )
if self.shuffle:
self.shuffle_samples()
def shuffle_samples(self):
self._samples = self._samples.sample(frac=1, random_state=self.shuffle_seed)
def _df_to_series(self, df, imgt):
d = {}
df = df.set_index('img_type')
for i in imgt:
s = df.loc[i]
idx = s.file_index if i != 'lght' else s.id
d.update({f'{i}_filename': [s.file_name],
f'{i}_index': [idx]})
return pd.DataFrame(d)
def _open_files(self, verbose=True):
"""
Opens HDF files
"""
imgt = self.data_types
hdf_filenames = []
for t in imgt:
hdf_filenames += list(np.unique( self._samples[f'{t}_filename'].values ))
self._hdf_files = {}
for f in hdf_filenames:
if verbose:
print('Opening HDF5 file for reading', f)
self._hdf_files[f] = h5py.File(self.sevir_data_dir + '/' + f, 'r')
def close(self):
"""
Closes all open file handles
"""
for f in self._hdf_files:
self._hdf_files[f].close()
self._hdf_files = {}
@property
def num_seq_per_event(self):
return 1 + (self.raw_seq_len - self.seq_len) // self.stride
@property
def total_num_seq(self):
"""
The total number of sequences within each shard.
Notice that it is not the product of `self.num_seq_per_event` and `self.total_num_event`.
"""
return int(self.num_seq_per_event * self.num_event)
@property
def total_num_event(self):
"""
The total number of events in the whole dataset, before split into different shards.
"""
return int(self._samples.shape[0])
@property
def start_event_idx(self):
"""
The event idx used in certain rank should satisfy event_idx >= start_event_idx
"""
return self.total_num_event // self.num_shard * self.rank
@property
def end_event_idx(self):
"""
The event idx used in certain rank should satisfy event_idx < end_event_idx
"""
if self.split_mode == 'ceil':
_last_start_event_idx = self.total_num_event // self.num_shard * (self.num_shard - 1)
_num_event = self.total_num_event - _last_start_event_idx
return self.start_event_idx + _num_event
elif self.split_mode == 'floor':
return self.total_num_event // self.num_shard * (self.rank + 1)
else: # self.split_mode == 'uneven':
if self.rank == self.num_shard - 1: # the last process
return self.total_num_event
else:
return self.total_num_event // self.num_shard * (self.rank + 1)
@property
def num_event(self):
"""
The number of events split into each rank
"""
return self.end_event_idx - self.start_event_idx
def _read_data(self, row, data):
"""
Iteratively read data into data dict. Finally data[imgt] gets shape (batch_size, height, width, raw_seq_len).
Parameters
----------
row
A series with fields IMGTYPE_filename, IMGTYPE_index, IMGTYPE_time_index.
data
Dict, data[imgt] is a data tensor with shape = (tmp_batch_size, height, width, raw_seq_len).
Returns
-------
data
Updated data. Updated shape = (tmp_batch_size + 1, height, width, raw_seq_len).
"""
imgtyps = np.unique([x.split('_')[0] for x in list(row.keys())])
for t in imgtyps:
fname = row[f'{t}_filename']
idx = row[f'{t}_index']
t_slice = slice(0, None)
# Need to bin lght counts into grid
if t == 'lght':
lght_data = self._hdf_files[fname][idx][:]
data_i = self._lght_to_grid(lght_data, t_slice)
else:
data_i = self._hdf_files[fname][t][idx:idx + 1, :, :, t_slice]
data[t] = np.concatenate((data[t], data_i), axis=0) if (t in data) else data_i
return data
def _lght_to_grid(self, data, t_slice=slice(0, None)):
"""
Converts Nx5 lightning data matrix into a 2D grid of pixel counts
"""
# out_size = (48,48,len(self.lght_frame_times)-1) if isinstance(t_slice,(slice,)) else (48,48)
out_size = (*self.data_shape['lght'], len(self.lght_frame_times)) if t_slice.stop is None else (*self.data_shape['lght'], 1)
if data.shape[0] == 0:
return np.zeros((1,) + out_size, dtype=np.float32)
# filter out points outside the grid
x, y = data[:, 3], data[:, 4]
m = np.logical_and.reduce([x >= 0, x < out_size[0], y >= 0, y < out_size[1]])
data = data[m, :]
if data.shape[0] == 0:
return np.zeros((1,) + out_size, dtype=np.float32)
# Filter/separate times
t = data[:, 0]
if t_slice.stop is not None: # select only one time bin
if t_slice.stop > 0:
if t_slice.stop < len(self.lght_frame_times):
tm = np.logical_and(t >= self.lght_frame_times[t_slice.stop - 1],
t < self.lght_frame_times[t_slice.stop])
else:
tm = t >= self.lght_frame_times[-1]
else: # special case: frame 0 uses lght from frame 1
tm = np.logical_and(t >= self.lght_frame_times[0], t < self.lght_frame_times[1])
# tm=np.logical_and( (t>=FRAME_TIMES[t_slice],t<FRAME_TIMES[t_slice+1]) )
data = data[tm, :]
z = np.zeros(data.shape[0], dtype=np.int64)
else: # compute z coordinate based on bin location times
z = np.digitize(t, self.lght_frame_times) - 1
z[z == -1] = 0 # special case: frame 0 uses lght from frame 1
x = data[:, 3].astype(np.int64)
y = data[:, 4].astype(np.int64)
k = np.ravel_multi_index(np.array([y, x, z]), out_size)
n = np.bincount(k, minlength=np.prod(out_size))
return np.reshape(n, out_size).astype(np.int16)[np.newaxis, :]
def _old_save_downsampled_dataset(self, save_dir, downsample_dict, verbose=True):
"""
This method does not save .h5 dataset correctly. There are some batches missed due to unknown error.
E.g., the first converted .h5 file `SEVIR_VIL_RANDOMEVENTS_2017_0501_0831.h5` only has batch_dim = 1414,
while it should be 1440 in the original .h5 file.
"""
import os
from skimage.measure import block_reduce
assert not os.path.exists(save_dir), f"save_dir {save_dir} already exists!"
os.makedirs(save_dir)
sample_counter = 0
for index, row in self._samples.iterrows():
if verbose:
print(f"Downsampling {sample_counter}-th data item.", end='\r')
for data_type in self.data_types:
fname = row[f'{data_type}_filename']
idx = row[f'{data_type}_index']
t_slice = slice(0, None)
if data_type == 'lght':
lght_data = self._hdf_files[fname][idx][:]
data_i = self._lght_to_grid(lght_data, t_slice)
else:
data_i = self._hdf_files[fname][data_type][idx:idx + 1, :, :, t_slice]
# Downsample t
t_slice = [slice(None, None), ] * 4
t_slice[-1] = slice(None, None, downsample_dict[data_type][0]) # layout = 'NHWT'
data_i = data_i[tuple(t_slice)]
# Downsample h, w
data_i = block_reduce(data_i,
block_size=(1, *downsample_dict[data_type][1:], 1),
func=np.max)
# Save as new .h5 file
new_file_path = os.path.join(save_dir, fname)
if not os.path.exists(new_file_path):
if not os.path.exists(os.path.dirname(new_file_path)):
os.makedirs(os.path.dirname(new_file_path))
# Create dataset
with h5py.File(new_file_path, 'w') as hf:
hf.create_dataset(
data_type, data=data_i,
maxshape=(None, *data_i.shape[1:]))
else:
# Append
with h5py.File(new_file_path, 'a') as hf:
hf[data_type].resize((hf[data_type].shape[0] + data_i.shape[0]), axis=0)
hf[data_type][-data_i.shape[0]:] = data_i
sample_counter += 1
def save_downsampled_dataset(self, save_dir, downsample_dict, verbose=True):
"""
Parameters
----------
save_dir
downsample_dict: Dict[Sequence[int]]
Notice that this is different from `self.downsample_dict`, which is used during runtime.
"""
import os
from skimage.measure import block_reduce
from ...utils.utils import path_splitall
assert not os.path.exists(save_dir), f"save_dir {save_dir} already exists!"
os.makedirs(save_dir)
for fname, hdf_file in self._hdf_files.items():
if verbose:
print(f"Downsampling data in {fname}.")
data_type = path_splitall(fname)[0]
if data_type == 'lght':
# TODO: how to get idx?
raise NotImplementedError
# lght_data = self._hdf_files[fname][idx][:]
# t_slice = slice(0, None)
# data_i = self._lght_to_grid(lght_data, t_slice)
else:
data_i = self._hdf_files[fname][data_type]
# Downsample t
t_slice = [slice(None, None), ] * 4
t_slice[-1] = slice(None, None, downsample_dict[data_type][0]) # layout = 'NHWT'
data_i = data_i[tuple(t_slice)]
# Downsample h, w
data_i = block_reduce(data_i,
block_size=(1, *downsample_dict[data_type][1:], 1),
func=np.max)
# Save as new .h5 file
new_file_path = os.path.join(save_dir, fname)
if not os.path.exists(os.path.dirname(new_file_path)):
os.makedirs(os.path.dirname(new_file_path))
# Create dataset
with h5py.File(new_file_path, 'w') as hf:
hf.create_dataset(
data_type, data=data_i,
maxshape=(None, *data_i.shape[1:]))
@property
def sample_count(self):
"""
Record how many times self.__next__() is called.
"""
return self._sample_count
def inc_sample_count(self):
self._sample_count += 1
@property
def curr_event_idx(self):
return self._curr_event_idx
@property
def curr_seq_idx(self):
"""
Used only when self.sample_mode == 'sequent'
"""
return self._curr_seq_idx
def set_curr_event_idx(self, val):
self._curr_event_idx = val
def set_curr_seq_idx(self, val):
"""
Used only when self.sample_mode == 'sequent'
"""
self._curr_seq_idx = val
def reset(self, shuffle: bool = None):
self.set_curr_event_idx(val=self.start_event_idx)
self.set_curr_seq_idx(0)
self._sample_count = 0
if shuffle is None:
shuffle = self.shuffle
if shuffle:
self.shuffle_samples()
def __len__(self):
"""
Used only when self.sample_mode == 'sequent'
"""
return self.total_num_seq // self.batch_size
@property
def use_up(self):
"""
Check if dataset is used up in 'sequent' mode.
"""
if self.sample_mode == 'random':
return False
else: # self.sample_mode == 'sequent'
# compute the remaining number of sequences in current event
curr_event_remain_seq = self.num_seq_per_event - self.curr_seq_idx
all_remain_seq = curr_event_remain_seq + (
self.end_event_idx - self.curr_event_idx - 1) * self.num_seq_per_event
if self.split_mode == "floor":
# This approach does not cover all available data, but avoid dealing with masks
return all_remain_seq < self.batch_size
else:
return all_remain_seq <= 0
def _load_event_batch(self, event_idx, event_batch_size):
"""
Loads a selected batch of events (not batch of sequences) into memory.
Parameters
----------
idx
event_batch_size
event_batch[i] = all_type_i_available_events[idx:idx + event_batch_size]
Returns
-------
event_batch
list of event batches.
event_batch[i] is the event batch of the i-th data type.
Each event_batch[i] is a np.ndarray with shape = (event_batch_size, height, width, raw_seq_len)
"""
event_idx_slice_end = event_idx + event_batch_size
pad_size = 0
if event_idx_slice_end > self.end_event_idx:
pad_size = event_idx_slice_end - self.end_event_idx
event_idx_slice_end = self.end_event_idx
pd_batch = self._samples.iloc[event_idx:event_idx_slice_end]
data = {}
for index, row in pd_batch.iterrows():
data = self._read_data(row, data)
if pad_size > 0:
event_batch = []
for t in self.data_types:
pad_shape = [pad_size, ] + list(data[t].shape[1:])
data_pad = np.concatenate((data[t].astype(self.output_type),
np.zeros(pad_shape, dtype=self.output_type)),
axis=0)
event_batch.append(data_pad)
else:
event_batch = [data[t].astype(self.output_type) for t in self.data_types]
return event_batch
def __iter__(self):
return self
def __next__(self):
if self.sample_mode == 'random':
self.inc_sample_count()
ret_dict = self._random_sample()
else:
if self.use_up:
raise StopIteration
else:
self.inc_sample_count()
ret_dict = self._sequent_sample()
ret_dict = self.data_dict_to_tensor(data_dict=ret_dict,
data_types=self.data_types)
if self.preprocess:
ret_dict = self.preprocess_data_dict(data_dict=ret_dict,
data_types=self.data_types,
layout=self.layout,
rescale=self.rescale_method)
if self.downsample_dict is not None:
ret_dict = self.downsample_data_dict(data_dict=ret_dict,
data_types=self.data_types,
factors_dict=self.downsample_dict,
layout=self.layout)
return ret_dict
def __getitem__(self, index):
data_dict = self._idx_sample(index=index)
return data_dict
@staticmethod
def preprocess_data_dict(data_dict, data_types=None, layout='NHWT', rescale='01'):
"""
Parameters
----------
data_dict: Dict[str, Union[np.ndarray, torch.Tensor]]
data_types: Sequence[str]
The data types that we want to rescale. This mainly excludes "mask" from preprocessing.
layout: str
consists of batch_size 'N', seq_len 'T', channel 'C', height 'H', width 'W'
rescale: str
'sevir': use the offsets and scale factors in original implementation.
'01': scale all values to range 0 to 1, currently only supports 'vil'
Returns
-------
data_dict: Dict[str, Union[np.ndarray, torch.Tensor]]
preprocessed data
"""
if rescale == 'sevir':
scale_dict = PREPROCESS_SCALE_SEVIR
offset_dict = PREPROCESS_OFFSET_SEVIR
elif rescale == '01':
scale_dict = PREPROCESS_SCALE_01
offset_dict = PREPROCESS_OFFSET_01
else:
raise ValueError(f'Invalid rescale option: {rescale}.')
if data_types is None:
data_types = data_dict.keys()
for key, data in data_dict.items():
if key in data_types:
if isinstance(data, np.ndarray):
data = scale_dict[key] * (
data.astype(np.float32) +
offset_dict[key])
data = change_layout_np(data=data,
in_layout='NHWT',
out_layout=layout)
elif isinstance(data, torch.Tensor):
data = scale_dict[key] * (
data.float() +
offset_dict[key])
data = change_layout_torch(data=data,
in_layout='NHWT',
out_layout=layout)
data_dict[key] = data
return data_dict
@staticmethod
def process_data_dict_back(data_dict, data_types=None, rescale='01'):
"""
Parameters
----------
data_dict
each data_dict[key] is a torch.Tensor.
rescale
str:
'sevir': data are scaled using the offsets and scale factors in original implementation.
'01': data are all scaled to range 0 to 1, currently only supports 'vil'
Returns
-------
data_dict
each data_dict[key] is the data processed back in torch.Tensor.
"""
if rescale == 'sevir':
scale_dict = PREPROCESS_SCALE_SEVIR
offset_dict = PREPROCESS_OFFSET_SEVIR
elif rescale == '01':
scale_dict = PREPROCESS_SCALE_01
offset_dict = PREPROCESS_OFFSET_01
else:
raise ValueError(f'Invalid rescale option: {rescale}.')
if data_types is None:
data_types = data_dict.keys()
for key in data_types:
data = data_dict[key]
data = data.float() / scale_dict[key] - offset_dict[key]
data_dict[key] = data
return data_dict
@staticmethod
def data_dict_to_tensor(data_dict, data_types=None):
"""
Convert each element in data_dict to torch.Tensor (copy without grad).
"""
ret_dict = {}
if data_types is None:
data_types = data_dict.keys()
for key, data in data_dict.items():
if key in data_types:
if isinstance(data, torch.Tensor):
ret_dict[key] = data.detach().clone()
elif isinstance(data, np.ndarray):
ret_dict[key] = torch.from_numpy(data)
else:
raise ValueError(f"Invalid data type: {type(data)}. Should be torch.Tensor or np.ndarray")
else: # key == "mask"
ret_dict[key] = data
return ret_dict
@staticmethod
def downsample_data_dict(data_dict, data_types=None, factors_dict=None, layout='NHWT'):
"""
Parameters
----------
data_dict: Dict[str, Union[np.array, torch.Tensor]]
factors_dict: Optional[Dict[str, Sequence[int]]]
each element `factors` is a Sequence of int, representing (t_factor, h_factor, w_factor)
Returns
-------
downsampled_data_dict: Dict[str, torch.Tensor]
Modify on a deep copy of data_dict instead of directly modifying the original data_dict
"""
if factors_dict is None:
factors_dict = {}
if data_types is None:
data_types = data_dict.keys()
downsampled_data_dict = SEVIRDataLoader.data_dict_to_tensor(
data_dict=data_dict,
data_types=data_types) # make a copy
for key, data in data_dict.items():
factors = factors_dict.get(key, None)
if factors is not None:
downsampled_data_dict[key] = change_layout_torch(
data=downsampled_data_dict[key],
in_layout=layout,
out_layout='NTHW')
# downsample t dimension
t_slice = [slice(None, None), ] * 4
t_slice[1] = slice(None, None, factors[0])
downsampled_data_dict[key] = downsampled_data_dict[key][tuple(t_slice)]
# downsample spatial dimensions
downsampled_data_dict[key] = avg_pool2d(
input=downsampled_data_dict[key],
kernel_size=(factors[1], factors[2]))
downsampled_data_dict[key] = change_layout_torch(
data=downsampled_data_dict[key],
in_layout='NTHW',
out_layout=layout)
return downsampled_data_dict
def _random_sample(self):
"""
Returns
-------
ret_dict
dict. ret_dict.keys() == self.data_types.
If self.preprocess == False:
ret_dict[imgt].shape == (batch_size, height, width, seq_len)
"""
num_sampled = 0
event_idx_list = nprand.randint(low=self.start_event_idx,
high=self.end_event_idx,
size=self.batch_size)
seq_idx_list = nprand.randint(low=0,
high=self.num_seq_per_event,
size=self.batch_size)
seq_slice_list = [slice(seq_idx * self.stride,
seq_idx * self.stride + self.seq_len)
for seq_idx in seq_idx_list]
ret_dict = {}
while num_sampled < self.batch_size:
event = self._load_event_batch(event_idx=event_idx_list[num_sampled],
event_batch_size=1)
for imgt_idx, imgt in enumerate(self.data_types):
sampled_seq = event[imgt_idx][[0, ], :, :, seq_slice_list[num_sampled]] # keep the dim of batch_size for concatenation
if imgt in ret_dict:
ret_dict[imgt] = np.concatenate((ret_dict[imgt], sampled_seq),
axis=0)
else:
ret_dict.update({imgt: sampled_seq})
return ret_dict
def _sequent_sample(self):
"""
Returns
-------
ret_dict: Dict
`ret_dict.keys()` contains `self.data_types`.
`ret_dict["mask"]` is a list of bool, indicating if the data entry is real or padded.
If self.preprocess == False:
ret_dict[imgt].shape == (batch_size, height, width, seq_len)
"""
assert not self.use_up, 'Data loader used up! Reset it to reuse.'
event_idx = self.curr_event_idx
seq_idx = self.curr_seq_idx
num_sampled = 0
sampled_idx_list = [] # list of (event_idx, seq_idx) records
while num_sampled < self.batch_size:
sampled_idx_list.append({'event_idx': event_idx,
'seq_idx': seq_idx})
seq_idx += 1
if seq_idx >= self.num_seq_per_event:
event_idx += 1
seq_idx = 0
num_sampled += 1
start_event_idx = sampled_idx_list[0]['event_idx']
event_batch_size = sampled_idx_list[-1]['event_idx'] - start_event_idx + 1
event_batch = self._load_event_batch(event_idx=start_event_idx,
event_batch_size=event_batch_size)
ret_dict = {"mask": []}
all_no_pad_flag = True
for sampled_idx in sampled_idx_list:
batch_slice = [sampled_idx['event_idx'] - start_event_idx, ] # use [] to keepdim
seq_slice = slice(sampled_idx['seq_idx'] * self.stride,
sampled_idx['seq_idx'] * self.stride + self.seq_len)
for imgt_idx, imgt in enumerate(self.data_types):
sampled_seq = event_batch[imgt_idx][batch_slice, :, :, seq_slice]
if imgt in ret_dict:
ret_dict[imgt] = np.concatenate((ret_dict[imgt], sampled_seq),
axis=0)
else:
ret_dict.update({imgt: sampled_seq})
# add mask
no_pad_flag = sampled_idx['event_idx'] < self.end_event_idx
if not no_pad_flag:
all_no_pad_flag = False
ret_dict["mask"].append(no_pad_flag)
if all_no_pad_flag:
# if there is no padded data items at all, set `ret_dict["mask"] = None` for convenience.
ret_dict["mask"] = None
# update current idx
self.set_curr_event_idx(event_idx)
self.set_curr_seq_idx(seq_idx)
return ret_dict
def _idx_sample(self, index):
"""
Parameters
----------
index
The index of the batch to sample.
Returns
-------
ret_dict
dict. ret_dict.keys() == self.data_types.
If self.preprocess == False:
ret_dict[imgt].shape == (batch_size, height, width, seq_len)
"""
event_idx = (index * self.batch_size) // self.num_seq_per_event
seq_idx = (index * self.batch_size) % self.num_seq_per_event
num_sampled = 0
sampled_idx_list = [] # list of (event_idx, seq_idx) records
while num_sampled < self.batch_size:
sampled_idx_list.append({'event_idx': event_idx,
'seq_idx': seq_idx})
seq_idx += 1
if seq_idx >= self.num_seq_per_event:
event_idx += 1
seq_idx = 0
num_sampled += 1
start_event_idx = sampled_idx_list[0]['event_idx']
event_batch_size = sampled_idx_list[-1]['event_idx'] - start_event_idx + 1
event_batch = self._load_event_batch(event_idx=start_event_idx,
event_batch_size=event_batch_size)
ret_dict = {}
for sampled_idx in sampled_idx_list:
batch_slice = [sampled_idx['event_idx'] - start_event_idx, ] # use [] to keepdim
seq_slice = slice(sampled_idx['seq_idx'] * self.stride,
sampled_idx['seq_idx'] * self.stride + self.seq_len)
for imgt_idx, imgt in enumerate(self.data_types):
sampled_seq = event_batch[imgt_idx][batch_slice, :, :, seq_slice]
if imgt in ret_dict:
ret_dict[imgt] = np.concatenate((ret_dict[imgt], sampled_seq),
axis=0)
else:
ret_dict.update({imgt: sampled_seq})
ret_dict = self.data_dict_to_tensor(data_dict=ret_dict,
data_types=self.data_types)
if self.preprocess:
ret_dict = self.preprocess_data_dict(data_dict=ret_dict,
data_types=self.data_types,
layout=self.layout,
rescale=self.rescale_method)
if self.downsample_dict is not None:
ret_dict = self.downsample_data_dict(data_dict=ret_dict,
data_types=self.data_types,
factors_dict=self.downsample_dict,
layout=self.layout)
return ret_dict
class SEVIRDataIterator():
'''
A wrapper s.t. it implements the function sample().
Every arguments in this class will be redirected to the inner SEVIRDataLoader object.
If you expect a pythonic iterator, use SEVIRDataLoader instead.
'''
def __init__(self, **kwargs):
self.loader = SEVIRDataLoader(**kwargs)
self.sample_mode = kwargs['sample_mode'] if 'sample_mode' in kwargs else 'random'
def reset(self):
self.loader.reset()
def sample(self, batch_size=None):
'''
The input param batch_size here is not used
'''
out = next(self.loader, None)
if out is None and self.sample_mode == 'random':
self.loader.reset()
out = next(self.loader, None)
return out
def __len__(self):
"""
Used only when self.sample_mode == 'sequent'
"""
return len(self.loader)
# =====================================================================================
# MeteoNet data
# Reshape it to 256x256, with in_len=4, out_len=10
# https://meteofrance.github.io/meteonet/
# dwonload from https://meteonet.umr-cnrm.fr/dataset/data/NW/radar/reflectivity_old_product/
# =====================================================================================
class Meteo(Dataset):
def __init__(self, data_path, img_size, type='train', trans=None, in_len=-1):
super().__init__()
self.pixel_scale = 70.0
self.data_path = data_path
self.img_size = img_size
self.in_len = in_len
assert type in ['train', 'test', 'val']
self.type = type if type!='val' else 'test'
with h5py.File(data_path,'r') as f:
self.all_len = int(f[f'{self.type}_len'][()]) # 10000-3000 for train, 2000 for test, 1000 for val
if trans is not None:
self.transform = trans
else:
self.transform = T.Compose([
T.Resize((img_size, img_size)),
# transforms.ToTensor(),
# trans.Lambda(lambda x: x/255.0),
# transforms.Normalize(mean=[0.5], std=[0.5]),
# trans.RandomCrop(data_config["img_size"]),
])
def __len__(self):
return self.all_len
def sample(self):
index = np.random.randint(0, self.all_len)
return self.__getitem__(index)
def __getitem__(self, index):
with h5py.File(self.data_path,'r') as f:
imgs = f[self.type][str(index)][()] # numpy array: (25, 565, 784), dtype=uint8, range(0,70)
frames = torch.from_numpy(imgs).float().squeeze()
frames = frames / self.pixel_scale
frames = self.transform(frames).unsqueeze(1)
# return frames.unsqueeze(1) # (25,1,128,128
return frames[:self.in_len], frames[self.in_len:]
def load_meteonet(batch_size, val_batch_size, in_len, train=False, num_workers=0, img_size=128):
meteo_filepath = os.path.join(METEO_FILE_DIR, "meteo.h5")
if train:
train_set = Meteo(meteo_filepath, img_size, 'train', in_len=in_len)
valid_set = Meteo(meteo_filepath, img_size, 'val', in_len=in_len)
dataloader_train = torch.utils.data.DataLoader(train_set, batch_size=batch_size, shuffle=True, drop_last=True, num_workers=num_workers)
dataloader_valid = torch.utils.data.DataLoader(valid_set, batch_size=val_batch_size, shuffle=False, drop_last=True, num_workers=num_workers)
return dataloader_train, dataloader_valid
else:
test_set = Meteo(meteo_filepath, img_size, 'test', in_len=in_len)
dataloader_test = torch.utils.data.DataLoader(test_set, batch_size=batch_size, shuffle=False, num_workers=num_workers)
return None, dataloader_test