train.py
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from __future__ import division, print_function
import tensorflow as tf
import numpy as np
import os
from tqdm import trange
import args
from misc_utils import shuffle_and_overwrite, config_learning_rate, config_optimizer, AverageMeter
from data_utils import get_batch_data
from eval_utils import evaluate_on_cpu, evaluate_on_gpu, get_preds_gpu, voc_eval, parse_gt_rec
from nms_utils import gpu_nms
from model import yolov3
train_dataset = tf.data.TFRecordDataset(filenames=train_file, compression_type='GZIP')
train_dataset = train_dataset.shuffle(train_img_cnt)
train_dataset = train_dataset.batch(batch_size)
train_dataset = train_dataset.map(
lambda x: tf.py_func(get_batch_data,
inp=[x, args.class_num, args.img_size, args.anchors, True, args.multi_scale_train, args.use_mix_up, args.letterbox_resize],
Tout=[tf.int64, tf.float32, tf.float32, tf.float32, tf.float32]),
num_parallel_calls=args.num_threads
)
train_dataset = train_dataset.prefetch(prefetech_buffer)
val_dataset = tf.data.TFRecordDataset(filenames=val_file, compression_type='GZIP')
val_dataset = val_dataset.batch(1)
val_dataset = val_dataset.map(
lambda x: tf.py_func(get_batch_data,
inp=[x, args.class_num, args.img_size, args.anchors, False, False, False, args.letterbox_resize],
Tout=[tf.int64, tf.float32, tf.float32, tf.float32, tf.float32]),
num_parallel_calls=args.num_threads
)
val_dataset.prefetch(prefetech_buffer)
iterator = tf.data.Iterator.from_structure(train_dataset.output_types, train_dataset.output_shapes)
train_init_op = iterator.make_initializer(train_dataset)
val_init_op = iterator.make_initializer(val_dataset)
image_ids, image, y_true_13, y_true_26, y_true_52 = iterator.get_next()
y_true = [y_true_13, y_true_26, y_true_52]
image_ids.set_shape([None])
image.set_shape([None, None, None, 3])
for y in y_true:
y.set_shape([None, None, None, None, None])
### Model definition
yolo_model = yolov3(class_num, anchors, use_label_smooth, use_focal_loss, batch_norm_decay, weight_decay, use_static_shape=False)
with tf.variable_scope('yolov3'):
pred_feature_maps = yolo_model.forward(image, is_training=is_training)
loss = yolo_model.compute_loss(pred_feature_maps, y_true)
y_pred = yolo_model.predict(pred_feature_maps)
l2_loss = tf.losses.get_regularization_loss()
saver_to_restore = tf.train.Saver(var_list=tf.contrib.framework.get_variables_to_restore(include=restore_include, exclude=restore_exclude))
update_vars = tf.contrib.framework.get_variables_to_restore(include=update_part)
global_step = tf.Variable(float(global_step), trainable=False, collections=[tf.GraphKeys.LOCAL_VARIABLES])
if use_warm_up:
learning_rate = tf.cond(tf.less(global_step, train_batch_num * warm_up_epoch),
lambda: learning_rate_init * global_step / (train_batch_num * warm_up_epoch),
lambda: config_learning_rate(global_step - args.train_batch_num * args.warm_up_epoch))
else:
learning_rate = config_learning_rate(global_step)
optimizer = config_optimizer(args.optimizer_name, learning_rate)
update_ops = tf.get_collection(tf.GraphKeys.UPDATE_OPS)
with tf.control_dependencies(update_ops):
gvs = optimizer.compute_gradients(loss[0] + l2_loss, var_list=update_vars)
clip_grad_var = [gv if gv[0] is None else [
tf.clip_by_norm(gv[0], 100.), gv[1]] for gv in gvs]
train_op = optimizer.apply_gradients(clip_grad_var, global_step=global_step)
if args.save_optimizer:
print('Saving optimizer parameters: ON')
saver_to_save = tf.train.Saver()
saver_best = tf.train.Saver()
else:
print('Saving optimizer parameters: OFF')
##### Start training
with tf.Session() as sess:
sess.run([tf.global_variables_initializer(), tf.local_variables_initializer()])
if os.path.exists(args.restore_path):
saver_to_restore.restore(sess, args.restore_path)
print('\nStart training...\n')
best_mAP = -np.Inf
for epoch in range(args.total_epoches):
sess.run(train_init_op)
loss_total, loss_xy, loss_wh, loss_conf, loss_class = AverageMeter(), AverageMeter(), AverageMeter(), AverageMeter(), AverageMeter()
### train part
for i in trange(args.train_batch_num):
_, __y_pred, __y_true, __loss, __global_step, __lr = sess.run(
[train_op, y_pred, y_true, loss, global_step, learning_rate],
feed_dict={is_training: True})
loss_total.update(__loss[0], len(__y_pred[0]))
loss_xy.update(__loss[1], len(__y_pred[0]))
loss_wh.update(__loss[2], len(__y_pred[0]))
loss_conf.update(__loss[3], len(__y_pred[0]))
loss_class.update(__loss[4], len(__y_pred[0]))
if __global_step % args.train_evaluation_step == 0 and __global_step > 0:
recall, precision = evaluate_on_gpu(sess, gpu_nms_op, pred_boxes_flag, pred_scores_flag, __y_pred, __y_true, args.class_num, args.nms_threshold)
info = "Epoch: {}, global_step: {} | loss: total: {:.2f}, xy: {:.2f}, wh: {:.2f}, conf: {:.2f}, class: {:.2f} | ".format(
epoch, int(__global_step), loss_total.average, loss_xy.average, loss_wh.average, loss_conf.average, loss_class.average)
info += 'Last batch: rec: {:.3f}, prec: {:.3f} | lr: {:.5g}'.format(recall, precision, __lr)
print(info)
if np.isnan(loss_total.average):
print('****' * 10)
raise ArithmeticError('Gradient exploded!')
## train end (saving parameters)
if args.save_optimizer and epoch % args.save_epoch == 0 and epoch > 0:
if loss_total.average <= 2.:
saver_to_save.save(sess, args.save_dir + 'model-epoch_{}_step_{}_loss_{:.4f}_lr_{:.5g}'.format(epoch, int(__global_step), loss_total.average, __lr))
### validation part
if epoch % args.val_evaluation_epoch == 0 and epoch >= args.warm_up_epoch:
sess.run(val_init_op)
val_loss_total, val_loss_xy, val_loss_wh, val_loss_conf, val_loss_class = AverageMeter(), AverageMeter(), AverageMeter(), AverageMeter(), AverageMeter()
val_preds = []
for j in trange(args.val_img_cnt):
__image_ids, __y_pred, __loss = sess.run([image_ids, y_pred, loss],
feed_dict={is_training: False})
pred_content = get_preds_gpu(sess, gpu_nms_op, pred_boxes_flag, pred_scores_flag, __image_ids, __y_pred)
val_preds.extend(pred_content)
val_loss_total.update(__loss[0])
val_loss_xy.update(__loss[1])
val_loss_wh.update(__loss[2])
val_loss_conf.update(__loss[3])
val_loss_class.update(__loss[4])
# calc mAP
rec_total, prec_total, ap_total = AverageMeter(), AverageMeter(), AverageMeter()
gt_dict = parse_gt_rec(args.val_file, args.img_size, args.letterbox_resize)
info = '======> Epoch: {}, global_step: {}, lr: {:.6g} <======\n'.format(epoch, __global_step, __lr)
for ii in range(args.class_num):
npos, nd, rec, prec, ap = voc_eval(gt_dict, val_preds, ii, iou_thres=args.eval_threshold, use_07_metric=args.use_voc_07_metric)
info += 'EVAL: Class {}: Recall: {:.4f}, Precision: {:.4f}, AP: {:.4f}\n'.format(ii, rec, prec, ap)
rec_total.update(rec, npos)
prec_total.update(prec, nd)
ap_total.update(ap, 1)
mAP = ap_total.average
info += 'EVAL: Recall: {:.4f}, Precison: {:.4f}, mAP: {:.4f}\n'.format(rec_total.average, prec_total.average, mAP)
info += 'EVAL: loss: total: {:.2f}, xy: {:.2f}, wh: {:.2f}, conf: {:.2f}, class: {:.2f}\n'.format(
val_loss_total.average, val_loss_xy.average, val_loss_wh.average, val_loss_conf.average, val_loss_class.average)
print(info)
if args.save_optimizer and mAP > best_mAP:
best_mAP = mAP
saver_best.save(sess, args.save_dir + 'best_model_Epoch_{}_step_{}_mAP_{:.4f}_loss_{:.4f}_lr_{:.7g}'.format(
epoch, int(__global_step), best_mAP, val_loss_total.average, __lr))