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| """Functions to build DetectionModel training optimizers."""
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|
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| import tensorflow.compat.v1 as tf
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|
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| from object_detection.utils import learning_schedules
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| from object_detection.utils import tf_version
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|
|
|
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| if tf_version.is_tf2():
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| from official.modeling.optimization import ema_optimizer
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|
|
|
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| try:
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| from tensorflow.contrib import opt as tf_opt
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| except:
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| pass
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|
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|
|
| def build_optimizers_tf_v1(optimizer_config, global_step=None):
|
| """Create a TF v1 compatible optimizer based on config.
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|
|
| Args:
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| optimizer_config: A Optimizer proto message.
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| global_step: A variable representing the current step.
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| If None, defaults to tf.train.get_or_create_global_step()
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|
|
| Returns:
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| An optimizer and a list of variables for summary.
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|
|
| Raises:
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| ValueError: when using an unsupported input data type.
|
| """
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| optimizer_type = optimizer_config.WhichOneof('optimizer')
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| optimizer = None
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|
|
| summary_vars = []
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| if optimizer_type == 'rms_prop_optimizer':
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| config = optimizer_config.rms_prop_optimizer
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| learning_rate = _create_learning_rate(config.learning_rate,
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| global_step=global_step)
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| summary_vars.append(learning_rate)
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| optimizer = tf.train.RMSPropOptimizer(
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| learning_rate,
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| decay=config.decay,
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| momentum=config.momentum_optimizer_value,
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| epsilon=config.epsilon)
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|
|
| if optimizer_type == 'momentum_optimizer':
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| config = optimizer_config.momentum_optimizer
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| learning_rate = _create_learning_rate(config.learning_rate,
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| global_step=global_step)
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| summary_vars.append(learning_rate)
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| optimizer = tf.train.MomentumOptimizer(
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| learning_rate,
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| momentum=config.momentum_optimizer_value)
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|
|
| if optimizer_type == 'adam_optimizer':
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| config = optimizer_config.adam_optimizer
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| learning_rate = _create_learning_rate(config.learning_rate,
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| global_step=global_step)
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| summary_vars.append(learning_rate)
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| optimizer = tf.train.AdamOptimizer(learning_rate, epsilon=config.epsilon)
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|
|
|
|
| if optimizer is None:
|
| raise ValueError('Optimizer %s not supported.' % optimizer_type)
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|
|
| if optimizer_config.use_moving_average:
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| optimizer = tf_opt.MovingAverageOptimizer(
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| optimizer, average_decay=optimizer_config.moving_average_decay)
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|
|
| return optimizer, summary_vars
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|
|
|
|
| def build_optimizers_tf_v2(optimizer_config, global_step=None):
|
| """Create a TF v2 compatible optimizer based on config.
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|
|
| Args:
|
| optimizer_config: A Optimizer proto message.
|
| global_step: A variable representing the current step.
|
| If None, defaults to tf.train.get_or_create_global_step()
|
|
|
| Returns:
|
| An optimizer and a list of variables for summary.
|
|
|
| Raises:
|
| ValueError: when using an unsupported input data type.
|
| """
|
| optimizer_type = optimizer_config.WhichOneof('optimizer')
|
| optimizer = None
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|
|
| summary_vars = []
|
| if optimizer_type == 'rms_prop_optimizer':
|
| config = optimizer_config.rms_prop_optimizer
|
| learning_rate = _create_learning_rate(config.learning_rate,
|
| global_step=global_step)
|
| summary_vars.append(learning_rate)
|
| optimizer = tf.keras.optimizers.RMSprop(
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| learning_rate,
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| decay=config.decay,
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| momentum=config.momentum_optimizer_value,
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| epsilon=config.epsilon)
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|
|
| if optimizer_type == 'momentum_optimizer':
|
| config = optimizer_config.momentum_optimizer
|
| learning_rate = _create_learning_rate(config.learning_rate,
|
| global_step=global_step)
|
| summary_vars.append(learning_rate)
|
| optimizer = tf.keras.optimizers.SGD(
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| learning_rate,
|
| momentum=config.momentum_optimizer_value)
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|
|
| if optimizer_type == 'adam_optimizer':
|
| config = optimizer_config.adam_optimizer
|
| learning_rate = _create_learning_rate(config.learning_rate,
|
| global_step=global_step)
|
| summary_vars.append(learning_rate)
|
| optimizer = tf.keras.optimizers.Adam(learning_rate, epsilon=config.epsilon)
|
|
|
| if optimizer is None:
|
| raise ValueError('Optimizer %s not supported.' % optimizer_type)
|
|
|
| if optimizer_config.use_moving_average:
|
| optimizer = ema_optimizer.ExponentialMovingAverage(
|
| optimizer=optimizer,
|
| average_decay=optimizer_config.moving_average_decay)
|
|
|
| return optimizer, summary_vars
|
|
|
|
|
| def build(config, global_step=None):
|
|
|
| if tf.executing_eagerly():
|
| return build_optimizers_tf_v2(config, global_step)
|
| else:
|
| return build_optimizers_tf_v1(config, global_step)
|
|
|
|
|
| def _create_learning_rate(learning_rate_config, global_step=None):
|
| """Create optimizer learning rate based on config.
|
|
|
| Args:
|
| learning_rate_config: A LearningRate proto message.
|
| global_step: A variable representing the current step.
|
| If None, defaults to tf.train.get_or_create_global_step()
|
|
|
| Returns:
|
| A learning rate.
|
|
|
| Raises:
|
| ValueError: when using an unsupported input data type.
|
| """
|
| if global_step is None:
|
| global_step = tf.train.get_or_create_global_step()
|
| learning_rate = None
|
| learning_rate_type = learning_rate_config.WhichOneof('learning_rate')
|
| if learning_rate_type == 'constant_learning_rate':
|
| config = learning_rate_config.constant_learning_rate
|
| learning_rate = tf.constant(config.learning_rate, dtype=tf.float32,
|
| name='learning_rate')
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|
|
| if learning_rate_type == 'exponential_decay_learning_rate':
|
| config = learning_rate_config.exponential_decay_learning_rate
|
| learning_rate = learning_schedules.exponential_decay_with_burnin(
|
| global_step,
|
| config.initial_learning_rate,
|
| config.decay_steps,
|
| config.decay_factor,
|
| burnin_learning_rate=config.burnin_learning_rate,
|
| burnin_steps=config.burnin_steps,
|
| min_learning_rate=config.min_learning_rate,
|
| staircase=config.staircase)
|
|
|
| if learning_rate_type == 'manual_step_learning_rate':
|
| config = learning_rate_config.manual_step_learning_rate
|
| if not config.schedule:
|
| raise ValueError('Empty learning rate schedule.')
|
| learning_rate_step_boundaries = [x.step for x in config.schedule]
|
| learning_rate_sequence = [config.initial_learning_rate]
|
| learning_rate_sequence += [x.learning_rate for x in config.schedule]
|
| learning_rate = learning_schedules.manual_stepping(
|
| global_step, learning_rate_step_boundaries,
|
| learning_rate_sequence, config.warmup)
|
|
|
| if learning_rate_type == 'cosine_decay_learning_rate':
|
| config = learning_rate_config.cosine_decay_learning_rate
|
| learning_rate = learning_schedules.cosine_decay_with_warmup(
|
| global_step,
|
| config.learning_rate_base,
|
| config.total_steps,
|
| config.warmup_learning_rate,
|
| config.warmup_steps,
|
| config.hold_base_rate_steps)
|
|
|
| if learning_rate is None:
|
| raise ValueError('Learning_rate %s not supported.' % learning_rate_type)
|
|
|
| return learning_rate
|
|
|