# Copyright 2026 The TensorFlow Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. r"""Export binary for BASNet. To export a trained checkpoint in saved_model format (shell script): EXPERIMENT_TYPE = XX CHECKPOINT_PATH = XX EXPORT_DIR_PATH = XX export_saved_model --experiment=${EXPERIMENT_TYPE} \ --export_dir=${EXPORT_DIR_PATH}/ \ --checkpoint_path=${CHECKPOINT_PATH} \ --batch_size=2 \ --input_image_size=224,224 To serve (python): export_dir_path = XX input_type = XX input_images = XX imported = tf.saved_model.load(export_dir_path) model_fn = imported.signatures['serving_default'] output = model_fn(input_images) """ from absl import app from absl import flags from official.core import exp_factory from official.modeling import hyperparams from official.projects.basnet.serving import basnet from official.vision.serving import export_saved_model_lib FLAGS = flags.FLAGS flags.DEFINE_string( 'experiment', None, 'experiment type, e.g. retinanet_resnetfpn_coco') flags.DEFINE_string('export_dir', None, 'The export directory.') flags.DEFINE_string('checkpoint_path', None, 'Checkpoint path.') flags.DEFINE_multi_string( 'config_file', default=None, help='YAML/JSON files which specifies overrides. The override order ' 'follows the order of args. Note that each file ' 'can be used as an override template to override the default parameters ' 'specified in Python. If the same parameter is specified in both ' '`--config_file` and `--params_override`, `config_file` will be used ' 'first, followed by params_override.') flags.DEFINE_string( 'params_override', '', 'The JSON/YAML file or string which specifies the parameter to be overriden' ' on top of `config_file` template.') flags.DEFINE_integer( 'batch_size', None, 'The batch size.') flags.DEFINE_string( 'input_type', 'image_tensor', 'One of `image_tensor`, `image_bytes`, `tf_example`.') flags.DEFINE_string( 'input_image_size', '224,224', 'The comma-separated string of two integers representing the height,width ' 'of the input to the model.') def main(_): params = exp_factory.get_exp_config(FLAGS.experiment) for config_file in FLAGS.config_file or []: params = hyperparams.override_params_dict( params, config_file, is_strict=True) if FLAGS.params_override: params = hyperparams.override_params_dict( params, FLAGS.params_override, is_strict=True) params.validate() params.lock() export_saved_model_lib.export_inference_graph( input_type=FLAGS.input_type, batch_size=FLAGS.batch_size, input_image_size=[int(x) for x in FLAGS.input_image_size.split(',')], params=params, checkpoint_path=FLAGS.checkpoint_path, export_dir=FLAGS.export_dir, export_module=basnet.BASNetModule( params=params, batch_size=FLAGS.batch_size, input_image_size=[int(x) for x in FLAGS.input_image_size.split(',')]), export_checkpoint_subdir='checkpoint', export_saved_model_subdir='saved_model') if __name__ == '__main__': app.run(main)