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main.py
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main.py
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import os
import sys
import argparse
from timeit import default_timer
import yaml
import hashlib
import socket
# ======== PLEASE MODIFY ========
# where is the repo
repoRoot = r'.'
# to CUDA\vX.Y\bin
os.environ['PATH'] = r'path\to\your\NVIDIA GPU Computing Toolkit\CUDA\v9.0\bin' + ';' + os.environ['PATH']
# Flying Chairs Dataset
chairs_path = r'path\to\your\FlyingChairs_release\data'
chairs_split_file = r'path\to\your\FlyingChairs_release\FlyingChairs_train_val.txt'
import numpy as np
import mxnet as mx
# data readers
from reader.chairs import binary_reader, trainval, ppm, flo
from reader import sintel, kitti, hd1k, things3d
import cv2
model_parser = argparse.ArgumentParser(add_help=False)
training_parser = argparse.ArgumentParser(add_help=False)
training_parser.add_argument('--batch', type=int, default=8, help='minibatch size of samples per device')
parser = argparse.ArgumentParser(parents=[model_parser, training_parser])
parser.add_argument('config', type=str, nargs='?', default=None)
parser.add_argument('--dataset_cfg', type=str, default='chairs.yaml')
# proportion of data to be loaded
# for example, if shard = 4, then one fourth of data is loaded
# ONLY for things3d dataset (as it is very large)
parser.add_argument('-s', '--shard', type=int, default=1, help='')
parser.add_argument('-g', '--gpu_device', type=str, default='', help='Specify gpu device(s)')
parser.add_argument('-c', '--checkpoint', type=str, default=None,
help='model checkpoint to load; by default, the latest one.'
'You can use checkpoint:steps to load to a specific steps')
parser.add_argument('--clear_steps', action='store_true')
# the choice of network
parser.add_argument('-n', '--network', type=str, default='MaskFlownet')
# three modes
parser.add_argument('--debug', action='store_true', help='Do debug')
parser.add_argument('--valid', action='store_true', help='Do validation')
parser.add_argument('--predict', action='store_true', help='Do prediction')
# inference resize for validation and prediction
parser.add_argument('--resize', type=str, default='')
args = parser.parse_args()
ctx = [mx.cpu()] if args.gpu_device == '' else [mx.gpu(gpu_id) for gpu_id in map(int, args.gpu_device.split(','))]
infer_resize = [int(s) for s in args.resize.split(',')] if args.resize else None
import network.config
# load network configuration
with open(os.path.join(repoRoot, 'network', 'config', args.config)) as f:
config = network.config.Reader(yaml.load(f))
# load training configuration
with open(os.path.join(repoRoot, 'network', 'config', args.dataset_cfg)) as f:
dataset_cfg = network.config.Reader(yaml.load(f))
validation_steps = dataset_cfg.validation_steps.value
checkpoint_steps = dataset_cfg.checkpoint_steps.value
# create directories
def mkdir(path):
if not os.path.exists(path):
os.makedirs(path)
mkdir('logs')
mkdir(os.path.join('logs', 'val'))
mkdir(os.path.join('logs', 'debug'))
mkdir('weights')
mkdir('flows')
# find checkpoint
import path
import logger
steps = 0
if args.checkpoint is not None:
if ':' in args.checkpoint:
prefix, steps = args.checkpoint.split(':')
else:
prefix = args.checkpoint
steps = None
log_file, run_id = path.find_log(prefix)
if steps is None:
checkpoint, steps = path.find_checkpoints(run_id)[-1]
else:
checkpoints = path.find_checkpoints(run_id)
try:
checkpoint, steps = next(filter(lambda t : t[1] == steps, checkpoints))
except StopIteration:
print('The steps not found in checkpoints', steps, checkpoints)
sys.stdout.flush()
raise StopIteration
steps = int(steps)
if args.clear_steps:
steps = 0
else:
_, exp_info = path.read_log(log_file)
exp_info = exp_info[-1]
for k in args.__dict__:
if k in exp_info and k in ('tag',):
setattr(args, k, eval(exp_info[k]))
print('{}={}, '.format(k, exp_info[k]), end='')
print()
sys.stdout.flush()
# generate id
if args.checkpoint is None or args.clear_steps:
uid = (socket.gethostname() + logger.FileLog._localtime().strftime('%b%d-%H%M') + args.gpu_device)
tag = hashlib.sha224(uid.encode()).hexdigest()[:3]
run_id = tag + logger.FileLog._localtime().strftime('%b%d-%H%M')
# initiate
from network import get_pipeline
pipe = get_pipeline(args.network, ctx=ctx, config=config)
lr_schedule = dataset_cfg.optimizer.learning_rate.get(None)
if lr_schedule is not None:
pipe.lr_schedule = lr_schedule
# load parameters from given checkpoint
if args.checkpoint is not None:
print('Load Checkpoint {}'.format(checkpoint))
sys.stdout.flush()
network_class = getattr(config.network, 'class').get()
# if train the head-stack network for the first time
if network_class == 'MaskFlownet' and args.clear_steps and dataset_cfg.dataset.value == 'chairs':
print('load the weight for the head network only')
pipe.load_head(checkpoint)
else:
print('load the weight for the network')
pipe.load(checkpoint)
if network_class == 'MaskFlownet':
print('fix the weight for the head network')
pipe.fix_head()
sys.stdout.flush()
if not args.valid and not args.predict and not args.clear_steps:
pipe.trainer.step(100, ignore_stale_grad=True)
pipe.trainer.load_states(checkpoint.replace('params', 'states'))
# ======== If to do prediction ========
if args.predict:
import predict
checkpoint_name = os.path.basename(checkpoint).replace('.params', '')
predict.predict(pipe, os.path.join(repoRoot, 'flows', checkpoint_name), batch_size=args.batch, resize = infer_resize)
sys.exit(0)
# ======== If to do validation ========
def validate():
validation_result = {}
for dataset_name in validation_datasets:
validation_result[dataset_name] = pipe.validate(*validation_datasets[dataset_name], batch_size = args.batch)
return validation_result
if args.valid:
log = logger.FileLog(os.path.join(repoRoot, 'logs', 'val', '{}.val.log'.format(run_id)), screen=True)
# sintel
sintel_dataset = sintel.list_data()
for div in ('training2', 'training'):
for k, dataset in sintel_dataset[div].items():
img1, img2, flow, mask = [[sintel.load(p) for p in data] for data in zip(*dataset)]
val_epe = pipe.validate(img1, img2, flow, mask, batch_size=args.batch, resize = infer_resize)
log.log('steps={}, sintel.{}.{}:epe={}'.format(steps, div, k, val_epe))
sys.stdout.flush()
# kitti
read_resize = (370, 1224) # if infer_resize is None else infer_resize
for kitti_version in ('2012', '2015'):
dataset = kitti.read_dataset(editions = kitti_version, parts = 'mixed', resize = read_resize)
val_epe = pipe.validate(dataset['image_0'], dataset['image_1'], dataset['flow'], dataset['occ'], batch_size=args.batch, resize = infer_resize, return_type = 'epe')
log.log('steps={}, kitti.{}:epe={}'.format(steps, kitti_version, val_epe))
sys.stdout.flush()
val_epe = pipe.validate(dataset['image_0'], dataset['image_1'], dataset['flow'], dataset['occ'], batch_size=args.batch, resize = infer_resize, return_type = 'kitti')
log.log('steps={}, kitti.{}:kitti={}'.format(steps, kitti_version, val_epe))
sys.stdout.flush()
log.close()
sys.exit(0)
# ======== If to do training ========
# load training/validation datasets
validation_datasets = {}
samples = 32 if args.debug else -1
t0 = default_timer()
if dataset_cfg.dataset.value == 'kitti':
batch_size = 4
print('loading kitti dataset ...')
sys.stdout.flush()
orig_shape = dataset_cfg.orig_shape.get([370, 1224])
resize_shape = (orig_shape[1], orig_shape[0])
parts = 'mixed' if dataset_cfg.train_all.get(False) else 'train'
# training
dataset = kitti.read_dataset(editions = 'mixed', parts = parts, samples = samples, resize = resize_shape)
trainSize = len(dataset['flow'])
training_datasets = [(dataset['image_0'], dataset['image_1'], dataset['flow'], dataset['occ'])] * batch_size
# validation
validationSize = 0
dataset = kitti.read_dataset(editions = '2012', parts = 'valid', samples = samples, resize = resize_shape)
validationSize += len(dataset['flow'])
validation_datasets['kitti.12'] = (dataset['image_0'], dataset['image_1'], dataset['flow'], dataset['occ'])
dataset = kitti.read_dataset(editions = '2015', parts = 'valid', samples = samples, resize = resize_shape)
validationSize += len(dataset['flow'])
validation_datasets['kitti.15'] = (dataset['image_0'], dataset['image_1'], dataset['flow'], dataset['occ'])
elif dataset_cfg.dataset.value == 'sintel':
batch_size = 4
print('loading sintel dataset ...')
sys.stdout.flush()
orig_shape = [436, 1024]
num_kitti = dataset_cfg.kitti.get(0)
num_hd1k = dataset_cfg.hd1k.get(0)
subsets = ('training' if dataset_cfg.train_all.get(False) else 'training1', 'training2')
# training
trainImg1 = []
trainImg2 = []
trainFlow = []
trainMask = []
sintel_dataset = sintel.list_data()
for k, dataset in sintel_dataset[subsets[0]].items():
dataset = dataset[:samples]
img1, img2, flow, mask = [[sintel.load(p) for p in data] for data in zip(*dataset)]
trainImg1.extend(img1)
trainImg2.extend(img2)
trainFlow.extend(flow)
trainMask.extend(mask)
trainSize = len(trainMask)
training_datasets = [(trainImg1, trainImg2, trainFlow, trainMask)] * (batch_size - num_kitti - num_hd1k)
resize_shape = (1024, dataset_cfg.resize_shape.get(436))
if num_kitti > 0:
print('loading kitti dataset ...')
sys.stdout.flush()
editions = '2015'
dataset = kitti.read_dataset(resize = resize_shape, samples = samples, editions = editions)
trainSize += len(dataset['flow'])
training_datasets += [(dataset['image_0'], dataset['image_1'], dataset['flow'], dataset['occ'])] * num_kitti
if num_hd1k > 0:
print('loading hd1k dataset ...')
sys.stdout.flush()
dataset = hd1k.read_dataset(resize = resize_shape, samples = samples)
trainSize += len(dataset['flow'])
training_datasets += [(dataset['image_0'], dataset['image_1'], dataset['flow'], dataset['occ'])] * num_hd1k
# validation
validationSize = 0
for k, dataset in sintel_dataset[subsets[1]].items():
dataset = dataset[:samples]
img1, img2, flow, mask = [[sintel.load(p) for p in data] for data in zip(*dataset)]
validationSize += len(flow)
validation_datasets['sintel.' + k] = (img1, img2, flow, mask)
elif dataset_cfg.dataset.value == 'things3d':
batch_size = 4
print('loading things3d dataset ...')
sub_type = dataset_cfg.sub_type.get('clean')
print('sub_type: ' + sub_type)
sys.stdout.flush()
orig_shape = [540, 960]
# %%%% WARNING %%%%
# the things3d dataset (subset) is very large
# therefore, the flow is converted to float16 by default
# in float16 format, the complete dataset is about 400 GB
# please set proper args.shard according to your device
# for example, if args.shard = 4, then one fourth of data is loaded
# training
things3d_dataset = things3d.list_data(sub_type = sub_type)
print(len(things3d_dataset['flow']))
print(len(things3d_dataset['flow'][:samples:args.shard]))
print(things3d_dataset['flow'][0])
from pympler.asizeof import asizeof
trainImg1 = [cv2.imread(file).astype('uint8') for file in things3d_dataset['image_0'][:samples:args.shard]]
print(asizeof(trainImg1[0]))
print(asizeof(trainImg1))
trainImg2 = [cv2.imread(file).astype('uint8') for file in things3d_dataset['image_1'][:samples:args.shard]]
print(asizeof(trainImg2[0]))
print(asizeof(trainImg2))
trainFlow = [things3d.load(file).astype('float16') for file in things3d_dataset['flow'][:samples:args.shard]]
print(asizeof(trainFlow[0]))
print(asizeof(trainFlow))
trainSize = len(trainFlow)
training_datasets = [(trainImg1, trainImg2, trainFlow)] * batch_size
print(asizeof(training_datasets))
# validation- chairs
_, validationSet = trainval.read(chairs_split_file)
validationSet = validationSet[:samples]
validationImg1 = [ppm.load(os.path.join(chairs_path, '%05d_img1.ppm' % i)) for i in validationSet]
validationImg2 = [ppm.load(os.path.join(chairs_path, '%05d_img2.ppm' % i)) for i in validationSet]
validationFlow = [flo.load(os.path.join(chairs_path, '%05d_flow.flo' % i)) for i in validationSet]
validationSize = len(validationFlow)
validation_datasets['chairs'] = (validationImg1, validationImg2, validationFlow)
'''
# validation- sintel
sintel_dataset = sintel.list_data()
divs = ('training',) if not getattr(config.network, 'class').get() == 'MaskFlownet' else ('training2',)
for div in divs:
for k, dataset in sintel_dataset[div].items():
img1, img2, flow, mask = [[sintel.load(p) for p in data] for data in zip(*dataset)]
validationSize += len(flow)
validation_datasets['sintel.' + k] = (img1, img2, flow, mask)
# validation- kitti
for kitti_version in ('2012', '2015'):
dataset = kitti.read_dataset(editions = kitti_version, crop = (370, 1224))
validationSize += len(dataset['flow'])
validation_datasets['kitti.' + kitti_version] = (dataset['image_0'], dataset['image_1'], dataset['flow'], dataset['occ'])
'''
elif dataset_cfg.dataset.value == 'chairs':
batch_size = 8
print('loading chairs data ...')
sys.stdout.flush()
orig_shape = [384, 512]
trainSet, validationSet = trainval.read(chairs_split_file)
# training
trainSet = trainSet[:samples]
trainImg1 = [ppm.load(os.path.join(chairs_path, '%05d_img1.ppm' % i)) for i in trainSet]
trainImg2 = [ppm.load(os.path.join(chairs_path, '%05d_img2.ppm' % i)) for i in trainSet]
trainFlow = [flo.load(os.path.join(chairs_path, '%05d_flow.flo' % i)) for i in trainSet]
trainSize = len(trainFlow)
training_datasets = [(trainImg1, trainImg2, trainFlow)] * batch_size
# validaion- chairs
validationSet = validationSet[:samples]
validationImg1 = [ppm.load(os.path.join(chairs_path, '%05d_img1.ppm' % i)) for i in validationSet]
validationImg2 = [ppm.load(os.path.join(chairs_path, '%05d_img2.ppm' % i)) for i in validationSet]
validationFlow = [flo.load(os.path.join(chairs_path, '%05d_flow.flo' % i)) for i in validationSet]
validationSize = len(validationFlow)
validation_datasets['chairs'] = (validationImg1, validationImg2, validationFlow)
# validaion- sintel
sintel_dataset = sintel.list_data()
divs = ('training',) if not getattr(config.network, 'class').get() == 'MaskFlownet' else ('training2',)
for div in divs:
for k, dataset in sintel_dataset[div].items():
dataset = dataset[:samples]
img1, img2, flow, mask = [[sintel.load(p) for p in data] for data in zip(*dataset)]
validationSize += len(flow)
validation_datasets['sintel.' + k] = (img1, img2, flow, mask)
else:
raise NotImplementedError
print('Using {}s'.format(default_timer() - t0))
sys.stdout.flush()
#
assert batch_size % len(ctx) == 0
batch_size_card = batch_size // len(ctx)
orig_shape = dataset_cfg.orig_shape.get(orig_shape)
target_shape = dataset_cfg.target_shape.get([shape_axis + (64 - shape_axis) % 64 for shape_axis in orig_shape])
print('original shape: ' + str(orig_shape))
print('target shape: ' + str(target_shape))
sys.stdout.flush()
# create log file
log = logger.FileLog(os.path.join(repoRoot, 'logs', 'debug' if args.debug else '', '{}.log'.format(run_id)))
log.log('start={}, train={}, val={}, host={}, batch={}'.format(steps, trainSize, validationSize, socket.gethostname(), batch_size))
information = ', '.join(['{}={}'.format(k, repr(args.__dict__[k])) for k in args.__dict__])
log.log(information)
# implement data augmentation
import augmentation
# chromatic augmentation
aug_func = augmentation.ColorAugmentation
if dataset_cfg.dataset.value == 'sintel':
color_aug = aug_func(contrast_range=(-0.4, 0.8), brightness_sigma=0.1, channel_range=(0.8, 1.4), batch_size=batch_size_card,
shape=target_shape, noise_range=(0, 0), saturation=0.5, hue=0.5, eigen_aug = False)
elif dataset_cfg.dataset.value == 'kitti':
color_aug = aug_func(contrast_range=(-0.2, 0.4), brightness_sigma=0.05, channel_range=(0.9, 1.2), batch_size=batch_size_card,
shape=target_shape, noise_range=(0, 0.02), saturation=0.25, hue=0.1, gamma_range=(-0.5, 0.5), eigen_aug = False)
else:
color_aug = aug_func(contrast_range=(-0.4, 0.8), brightness_sigma=0.1, channel_range=(0.8, 1.4), batch_size=batch_size_card,
shape=target_shape, noise_range=(0, 0.04), saturation=0.5, hue=0.5, eigen_aug = False)
color_aug.hybridize()
# geometric augmentation
aug_func = augmentation.GeometryAugmentation
if dataset_cfg.dataset.value == 'sintel':
geo_aug = aug_func(angle_range=(-17, 17), zoom_range=(1 / 1.5, 1 / 0.9), aspect_range=(0.9, 1 / 0.9), translation_range=0.1,
target_shape=target_shape, orig_shape=orig_shape, batch_size=batch_size_card,
relative_angle=0.25, relative_scale=(0.96, 1 / 0.96), relative_translation=0.25
)
elif dataset_cfg.dataset.value == 'kitti':
geo_aug = aug_func(angle_range=(-5, 5), zoom_range=(1 / 1.25, 1 / 0.95), aspect_range=(0.95, 1 / 0.95), translation_range=0.05,
target_shape=target_shape, orig_shape=orig_shape, batch_size=batch_size_card,
relative_angle=0.25, relative_scale=(0.98, 1 / 0.98), relative_translation=0.25
)
else:
geo_aug = aug_func(angle_range=(-17, 17), zoom_range=(0.5, 1 / 0.9), aspect_range=(0.9, 1 / 0.9), translation_range=0.1,
target_shape=target_shape, orig_shape=orig_shape, batch_size=batch_size_card,
relative_angle=0.25, relative_scale=(0.96, 1 / 0.96), relative_translation=0.25
)
geo_aug.hybridize()
def index_generator(n):
indices = np.arange(0, n, dtype=np.int)
while True:
np.random.shuffle(indices)
yield from indices
class MovingAverage:
def __init__(self, ratio=0.95):
self.sum = 0
self.weight = 1e-8
self.ratio = ratio
def update(self, v):
self.sum = self.sum * self.ratio + v
self.weight = self.weight * self.ratio + 1
@property
def average(self):
return self.sum / self.weight
class DictMovingAverage:
def __init__(self, ratio=0.95):
self.sum = {}
self.weight = {}
self.ratio = ratio
def update(self, v):
for key in v:
if key not in self.sum:
self.sum[key] = 0
self.weight[key] = 1e-8
self.sum[key] = self.sum[key] * self.ratio + v[key]
self.weight[key] = self.weight[key] * self.ratio + 1
@property
def average(self):
return dict([(key, self.sum[key] / self.weight[key]) for key in self.sum])
loading_time = MovingAverage()
total_time = MovingAverage()
train_avg = DictMovingAverage()
from threading import Thread
from queue import Queue
def iterate_data(iq, dataset):
gen = index_generator(len(dataset[0]))
while True:
i = next(gen)
data = [item[i] for item in dataset]
space_x, space_y = data[0].shape[0] - orig_shape[0], data[0].shape[1] - orig_shape[1]
crop_x, crop_y = space_x and np.random.randint(space_x), space_y and np.random.randint(space_y)
data = [np.transpose(arr[crop_x: crop_x + orig_shape[0], crop_y: crop_y + orig_shape[1]], (2, 0, 1)) for arr in data]
# vertical flip
if np.random.randint(2):
data = [arr[:, :, ::-1] for arr in data]
data[2] = np.stack([-data[2][0, :, :], data[2][1, :, :]], axis = 0)
iq.put(data)
def batch_samples(iqs, oq, batch_size):
while True:
data_batch = []
for iq in iqs:
for i in range(batch_size // len(iqs)):
data_batch.append(iq.get())
oq.put([np.stack(x, axis=0) for x in zip(*data_batch)])
def remove_file(iq):
while True:
f = iq.get()
try:
os.remove(f)
except OSError as e:
log.log('Remove failed' + e)
batch_queue = Queue(maxsize=10)
remove_queue = Queue(maxsize=50)
def start_daemon(thread):
thread.daemon = True
thread.start()
data_queues = [Queue(maxsize=100) for _ in training_datasets]
for data_queue, dataset in zip(data_queues, training_datasets):
start_daemon(Thread(target=iterate_data, args=(data_queue, dataset)))
start_daemon(Thread(target=remove_file, args=(remove_queue,)))
for i in range(1):
start_daemon(Thread(target=batch_samples, args=(data_queues, batch_queue, batch_size)))
t1 = None
checkpoints = []
while True:
steps += 1
if not pipe.set_learning_rate(steps):
sys.exit(0)
batch = []
t0 = default_timer()
if t1:
total_time.update(t0 - t1)
t1 = t0
batch = batch_queue.get()
loading_time.update(default_timer() - t0)
# with or without the given invalid mask
if len(batch) == 4:
img1, img2, flow, mask = [batch[i] for i in range(4)]
train_log = pipe.train_batch(img1, img2, flow, geo_aug, color_aug, mask = mask)
else:
img1, img2, flow = [batch[i] for i in range(3)]
train_log = pipe.train_batch(img1, img2, flow, geo_aug, color_aug)
# update log
if steps <= 20 or steps % 50 == 0:
train_avg.update(train_log)
log.log('steps={}{}, total_time={:.2f}'.format(steps, ''.join([', {}={}'.format(k, v) for k, v in train_avg.average.items()]), total_time.average))
# do valiation
if steps % validation_steps == 0 or steps <= 1:
val_result = None
if validationSize > 0:
val_result = validate()
log.log('steps={}{}'.format(steps, ''.join([', {}={}'.format(k, v) for k, v in val_result.items()])))
# save parameters
if steps % checkpoint_steps == 0:
prefix = os.path.join(repoRoot, 'weights', '{}_{}'.format(run_id, steps))
pipe.save(prefix)
checkpoints.append(prefix)
# remove the older checkpoints
while len(checkpoints) > 3:
prefix = checkpoints[0]
checkpoints = checkpoints[1:]
remove_queue.put(prefix + '.params')
remove_queue.put(prefix + '.states')