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train_detector.py
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train_detector.py
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import os
import argparse
import copy
import warnings
import numpy as np
import chainer
from chainer.datasets import TransformDataset
from chainer.optimizer import WeightDecay
from chainer import serializers
from chainer import training
from chainer.training import extensions
from chainer.training import triggers
from chainer.links.model.vision import resnet
import chainercv
from chainercv.extensions import DetectionVOCEvaluator
from chainercv.links.model.ssd import GradientScaling
from chainercv.links.model.ssd import multibox_loss
from chainercv import transforms
from chainercv.links.model.ssd import random_crop_with_bbox_constraints
from chainercv.links.model.ssd import random_distort
from chainercv.links.model.ssd import resize_with_random_interpolation
import ssd_resnet101
from road_damage_dataset import RoadDamageDataset, roaddamage_label_names
class MultiboxTrainChain(chainer.Chain):
def __init__(self, model, alpha=1, k=3):
super(MultiboxTrainChain, self).__init__()
with self.init_scope():
self.model = model
self.alpha = alpha
self.k = k
def __call__(self, imgs, gt_mb_locs, gt_mb_labels):
mb_locs, mb_confs = self.model(imgs)
loc_loss, conf_loss = multibox_loss(
mb_locs, mb_confs, gt_mb_locs, gt_mb_labels, self.k)
loss = loc_loss * self.alpha + conf_loss
chainer.reporter.report(
{'loss': loss, 'loss/loc': loc_loss, 'loss/conf': conf_loss},
self)
return loss
class MeanSubtraction(object):
def __init__(self, mean):
self.mean = mean.astype(np.float32)
def __call__(self, in_data):
img = in_data[0]
img = img - self.mean
return (img, *in_data[1:])
class ResNetPreparation(object):
def __init__(self, size):
self.size = size
def __call__(self, in_data):
img = in_data[0]
img = resnet.prepare(img, (self.size, self.size))
return (img, *in_data[1:])
class Transform(object):
def __init__(self, coder, size, mean):
# to send cpu, make a copy
self.coder = copy.copy(coder)
self.coder.to_cpu()
self.size = size
self.mean = mean
def __call__(self, in_data):
# There are five data augmentation steps
# 1. Color augmentation
# 2. Random expansion
# 3. Random cropping
# 4. Resizing with random interpolation
# 5. Random horizontal flipping
img, bbox, label = in_data
bbox = np.array(bbox).astype(np.float32)
if len(bbox) == 0:
warnings.warn("No bounding box detected", RuntimeWarning)
img = resize_with_random_interpolation(img, (self.size, self.size))
mb_loc, mb_label = self.coder.encode(bbox, label)
return img, mb_loc, mb_label
# 1. Color augmentation
img = random_distort(img)
# 2. Random expansion
if np.random.randint(2):
img, param = transforms.random_expand(
img, fill=self.mean, return_param=True)
bbox = transforms.translate_bbox(
bbox, y_offset=param['y_offset'], x_offset=param['x_offset'])
# 3. Random cropping
img, param = random_crop_with_bbox_constraints(
img, bbox, return_param=True)
bbox, param = transforms.crop_bbox(
bbox, y_slice=param['y_slice'], x_slice=param['x_slice'],
allow_outside_center=False, return_param=True)
label = label[param['index']]
# 4. Resizing with random interpolatation
_, H, W = img.shape
img = resize_with_random_interpolation(img, (self.size, self.size))
bbox = transforms.resize_bbox(bbox, (H, W), (self.size, self.size))
# 5. Random horizontal flipping
img, params = transforms.random_flip(
img, x_random=True, return_param=True)
bbox = transforms.flip_bbox(
bbox, (self.size, self.size), x_flip=params['x_flip'])
mb_loc, mb_label = self.coder.encode(bbox, label)
return img, mb_loc, mb_label
def main():
parser = argparse.ArgumentParser()
parser.add_argument('--data-dir', type=str,
default=os.path.join("RoadDamageDataset", "All"))
parser.add_argument('--batchsize', type=int, default=32,
help='Learning minibatch size')
parser.add_argument('--gpu', type=int, default=-1,
help='GPU ID (negative value indicates CPU')
parser.add_argument('--base-network', choices=('vgg16', 'resnet101'),
default='vgg16', help='Base network')
parser.add_argument('--pretrained-model', default=None,
help='Pretrained SSD model')
parser.add_argument('--pretrained-extractor', default='auto',
help='Pretrained CNN model to extract feature maps')
parser.add_argument('--out', default='result-detection',
help='Directory to output the result')
parser.add_argument('--resume', default=None,
help='Initialize the trainer from given file')
args = parser.parse_args()
print("Data directory : {}".format(args.data_dir))
print("Batchsize : {}".format(args.batchsize))
print("GPU ID : {}".format(args.gpu))
print("Base network : {}".format(args.base_network))
print("Pretrained extractor : {}".format(args.pretrained_extractor))
print("Pretrained model : {}".format(args.pretrained_model))
print("Output directory : {}".format(args.out))
print("Resume from : {}".format(args.resume))
if args.base_network == 'vgg16':
# pretrained_extractor is currently not available for this class
model = chainercv.links.SSD300(
n_fg_class=len(roaddamage_label_names),
pretrained_model=args.pretrained_model)
preprocessing = MeanSubtraction(model.mean)
elif args.base_network == 'resnet101':
model = ssd_resnet101.SSD224(
n_fg_class=len(roaddamage_label_names),
pretrained_extractor=args.pretrained_extractor,
pretrained_model=args.pretrained_model)
preprocessing = ResNetPreparation(model.insize)
else:
raise ValueError('Invalid base network')
model.use_preset('evaluate')
train_chain = MultiboxTrainChain(model)
if args.gpu >= 0:
chainer.cuda.get_device_from_id(args.gpu).use()
model.to_gpu()
train = TransformDataset(
RoadDamageDataset(args.data_dir, split='train'),
Transform(model.coder, model.insize, model.mean)
)
train = TransformDataset(train, preprocessing)
train_iter = chainer.iterators.SerialIterator(train, args.batchsize)
test = RoadDamageDataset(args.data_dir, split='val')
test_iter = chainer.iterators.SerialIterator(
test, args.batchsize, repeat=False, shuffle=False)
# initial lr is set to 3e-4 by ExponentialShift
optimizer = chainer.optimizers.MomentumSGD()
optimizer.setup(train_chain)
for param in train_chain.params():
if param.name == 'b':
param.update_rule.add_hook(GradientScaling(2))
else:
param.update_rule.add_hook(WeightDecay(0.0005))
updater = training.StandardUpdater(train_iter, optimizer, device=args.gpu)
trainer = training.Trainer(updater, (120000, 'iteration'), args.out)
trainer.extend(
extensions.ExponentialShift('lr', 0.1, init=3e-4),
trigger=triggers.ManualScheduleTrigger([80000, 100000], 'iteration'))
trainer.extend(
DetectionVOCEvaluator(
test_iter, model, use_07_metric=True,
label_names=roaddamage_label_names),
trigger=(4000, 'iteration'))
log_interval = 10, 'iteration'
trainer.extend(extensions.LogReport(trigger=log_interval))
trainer.extend(extensions.observe_lr(), trigger=log_interval)
trainer.extend(extensions.PrintReport(
['epoch', 'iteration', 'lr',
'main/loss', 'main/loss/loc', 'main/loss/conf',
'validation/main/map']),
trigger=log_interval)
# trainer.extend(extensions.ProgressBar())
trainer.extend(extensions.snapshot(), trigger=(4000, 'iteration'))
trainer.extend(
extensions.snapshot_object(model, 'model_iter_{.updater.iteration}'),
trigger=(4000, 'iteration'))
if args.resume:
serializers.load_npz(args.resume, trainer)
print("setup finished")
trainer.run()
model.to_cpu()
serializers.save_npz("model-detector.npz", model)
if __name__ == '__main__':
main()