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setup_training.py
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setup_training.py
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from copy import copy
import os
import cv2
import numpy as np
from matplotlib import pyplot as plt
import shutil
import wget
import tensorflow as tf
from object_detection.utils import config_util
from object_detection.protos import pipeline_pb2
from google.protobuf import text_format
from object_detection.utils import label_map_util
from object_detection.utils import visualization_utils as viz_utils
from object_detection.builders import model_builder
#CUSTOM_MODEL_NAME = 'my_ssd_mobnet'
CUSTOM_MODEL_NAME = 'my_ssd_resnet50v1fpn640x640'
#PRETRAINED_MODEL_NAME = 'ssd_mobilenet_v2_fpnlite_320x320_coco17_tpu-8'
PRETRAINED_MODEL_NAME = 'ssd_resnet50_v1_fpn_640x640_coco17_tpu-8'
#PRETRAINED_MODEL_URL = 'http://download.tensorflow.org/models/object_detection/tf2/20200711/ssd_mobilenet_v2_fpnlite_320x320_coco17_tpu-8.tar.gz'
PRETRAINED_MODEL_URL = 'http://download.tensorflow.org/models/object_detection/tf2/20200711/ssd_resnet50_v1_fpn_640x640_coco17_tpu-8.tar.gz'
TF_RECORD_SCRIPT_NAME = 'generate_tfrecord.py'
LABEL_MAP_NAME = 'label_map.pbtxt'
paths = {
'WORKSPACE_PATH': os.path.join('Tensorflow', 'workspace'),
'SCRIPTS_PATH': os.path.join('Tensorflow','scripts'),
'APIMODEL_PATH': os.path.join('Tensorflow','models'),
'ANNOTATION_PATH': os.path.join('Tensorflow', 'workspace','annotations'),
'IMAGE_PATH': os.path.join('Tensorflow', 'workspace','images'),
'MODEL_PATH': os.path.join('Tensorflow', 'workspace','models'),
'PRETRAINED_MODEL_PATH': os.path.join('Tensorflow', 'workspace','pre-trained-models'),
'CHECKPOINT_PATH': os.path.join('Tensorflow', 'workspace','models',CUSTOM_MODEL_NAME),
'OUTPUT_PATH': os.path.join('Tensorflow', 'workspace','models',CUSTOM_MODEL_NAME, 'export'),
'TFJS_PATH':os.path.join('Tensorflow', 'workspace','models',CUSTOM_MODEL_NAME, 'tfjsexport'),
'TFLITE_PATH':os.path.join('Tensorflow', 'workspace','models',CUSTOM_MODEL_NAME, 'tfliteexport'),
'PROTOC_PATH':os.path.join('Tensorflow','protoc')
}
files = {
'PIPELINE_CONFIG':os.path.join('Tensorflow', 'workspace','models', CUSTOM_MODEL_NAME, 'pipeline.config'),
'TF_RECORD_SCRIPT': os.path.join(paths['SCRIPTS_PATH'], TF_RECORD_SCRIPT_NAME),
'LABELMAP': os.path.join(paths['ANNOTATION_PATH'], LABEL_MAP_NAME)
}
for path in paths.values():
if not os.path.exists(path):
os.mkdir(path)
labels = [{'name':'pin', 'id':1}]
with open(files['LABELMAP'], 'w') as f:
for label in labels:
f.write('item { \n')
f.write('\tname:\'{}\'\n'.format(label['name']))
f.write('\tid:{}\n'.format(label['id']))
f.write('}\n')
if not os.path.exists(os.path.join(paths['APIMODEL_PATH'], 'research', 'object_detection')):
os.system(f"git clone https://github.com/tensorflow/models {paths['APIMODEL_PATH']}")
# Install Tensorflow Object Detection
if os.name=='posix':
os.system("apt-get install protobuf-compiler")
os.system("cd Tensorflow/models/research && protoc object_detection/protos/*.proto --python_out=. && cp object_detection/packages/tf2/setup.py . && python -m pip install . ")
if os.name=='nt':
url="https://github.com/protocolbuffers/protobuf/releases/download/v3.15.6/protoc-3.15.6-win64.zip"
wget.download(url)
shutil.move("protoc-3.15.6-win64.zip", paths['PROTOC_PATH'])
cdto = paths['PROTOC_PATH']
os.system(f"cd {cdto} && tar -xf protoc-3.15.6-win64.zip")
os.environ['PATH'] += os.pathsep + os.path.abspath(os.path.join(paths['PROTOC_PATH'], 'bin'))
os.system("cd Tensorflow/models/research && protoc object_detection/protos/*.proto --python_out=. && copy object_detection\\packages\\tf2\\setup.py setup.py && python setup.py build && python setup.py install")
os.system("cd Tensorflow/models/research/slim && pip install -e . ")
untarit = PRETRAINED_MODEL_NAME + '.tar.gz'
if os.path.exists(os.path.join(paths['PRETRAINED_MODEL_PATH'], PRETRAINED_MODEL_NAME)):
print(f"Model {PRETRAINED_MODEL_NAME} already downloaded")
pass
else:
wget.download(PRETRAINED_MODEL_URL)
shutil.move(untarit, paths['PRETRAINED_MODEL_PATH'])
premodpath = paths['PRETRAINED_MODEL_PATH']
os.system(f"cd {premodpath} && tar -zxvf {untarit}")
os.system(f"python {files['TF_RECORD_SCRIPT']} -x {os.path.join(paths['IMAGE_PATH'], 'train')} -l {files['LABELMAP']} -o {os.path.join(paths['ANNOTATION_PATH'], 'train.record')} ")
os.system(f"python {files['TF_RECORD_SCRIPT']} -x {os.path.join(paths['IMAGE_PATH'], 'test')} -l {files['LABELMAP']} -o {os.path.join(paths['ANNOTATION_PATH'], 'test.record')} ")
shutil.copy((os.path.join(paths['PRETRAINED_MODEL_PATH'], PRETRAINED_MODEL_NAME, 'pipeline.config')), (os.path.join(paths['CHECKPOINT_PATH'], 'pipeline.config')))
config = config_util.get_configs_from_pipeline_file(files['PIPELINE_CONFIG'])
pipeline_config = pipeline_pb2.TrainEvalPipelineConfig()
with tf.io.gfile.GFile(files['PIPELINE_CONFIG'], "r") as f:
proto_str = f.read()
text_format.Merge(proto_str, pipeline_config)
pipeline_config.model.ssd.num_classes = len(labels)
pipeline_config.train_config.batch_size = 1
pipeline_config.train_config.fine_tune_checkpoint = os.path.join(paths['PRETRAINED_MODEL_PATH'], PRETRAINED_MODEL_NAME, 'checkpoint', 'ckpt-0')
pipeline_config.train_config.fine_tune_checkpoint_type = "detection"
pipeline_config.train_input_reader.label_map_path= files['LABELMAP']
pipeline_config.train_input_reader.tf_record_input_reader.input_path[:] = [os.path.join(paths['ANNOTATION_PATH'], 'train.record')]
pipeline_config.eval_input_reader[0].label_map_path = files['LABELMAP']
pipeline_config.eval_input_reader[0].tf_record_input_reader.input_path[:] = [os.path.join(paths['ANNOTATION_PATH'], 'test.record')]
config_text = text_format.MessageToString(pipeline_config)
with tf.io.gfile.GFile(files['PIPELINE_CONFIG'], "wb") as f:
f.write(config_text)
TRAINING_SCRIPT = os.path.join(paths['APIMODEL_PATH'], 'research', 'object_detection', 'model_main_tf2.py')
command = "python {} --model_dir={} --pipeline_config_path={} --num_train_steps=2000".format(TRAINING_SCRIPT, paths['CHECKPOINT_PATH'],files['PIPELINE_CONFIG'])
print("Training\n")
print(command)
command = "python {} --model_dir={} --pipeline_config_path={} --checkpoint_dir={}".format(TRAINING_SCRIPT, paths['CHECKPOINT_PATH'],files['PIPELINE_CONFIG'], paths['CHECKPOINT_PATH'])
print("Evaluating\n")
print(command)
FREEZE_SCRIPT = os.path.join(paths['APIMODEL_PATH'], 'research', 'object_detection', 'exporter_main_v2.py ')
command = "python {} --input_type=image_tensor --pipeline_config_path={} --trained_checkpoint_dir={} --output_directory={}".format(FREEZE_SCRIPT ,files['PIPELINE_CONFIG'], paths['CHECKPOINT_PATH'], paths['OUTPUT_PATH'])
print("Freezing\n")
print(command)
command = "tensorflowjs_converter --input_format=tf_saved_model --output_node_names='detection_boxes,detection_classes,detection_features,detection_multiclass_scores,detection_scores,num_detections,raw_detection_boxes,raw_detection_scores' --output_format=tfjs_graph_model --signature_name=serving_default {} {}".format(os.path.join(paths['OUTPUT_PATH'], 'saved_model'), paths['TFJS_PATH'])
print("To TFJS\n")
print(command)
TFLITE_SCRIPT = os.path.join(paths['APIMODEL_PATH'], 'research', 'object_detection', 'export_tflite_graph_tf2.py ')
command = "python {} --pipeline_config_path={} --trained_checkpoint_dir={} --output_directory={}".format(TFLITE_SCRIPT ,files['PIPELINE_CONFIG'], paths['CHECKPOINT_PATH'], paths['TFLITE_PATH'])
print("To TFLite\n")
print(command)
FROZEN_TFLITE_PATH = os.path.join(paths['TFLITE_PATH'], 'saved_model')
TFLITE_MODEL = os.path.join(paths['TFLITE_PATH'], 'saved_model', 'detect.tflite')
command = "tflite_convert \
--saved_model_dir={} \
--output_file={} \
--input_shapes=1,300,300,3 \
--input_arrays=normalized_input_image_tensor \
--output_arrays='TFLite_Detection_PostProcess','TFLite_Detection_PostProcess:1','TFLite_Detection_PostProcess:2','TFLite_Detection_PostProcess:3' \
--inference_type=FLOAT \
--allow_custom_ops".format(FROZEN_TFLITE_PATH, TFLITE_MODEL, )
print(command)
# Load pipeline config and build a detection model
# configs = config_util.get_configs_from_pipeline_file(files['PIPELINE_CONFIG'])
# detection_model = model_builder.build(model_config=configs['model'], is_training=False)
# Restore checkpoint
# ckpt = tf.compat.v2.train.Checkpoint(model=detection_model)
# ckpt.restore(os.path.join(paths['CHECKPOINT_PATH'], 'ckpt-18')).expect_partial()
# @tf.function
# def detect_fn(image):
# image, shapes = detection_model.preprocess(image)
# prediction_dict = detection_model.predict(image, shapes)
# detections = detection_model.postprocess(prediction_dict, shapes)
# return detections
# category_index = label_map_util.create_category_index_from_labelmap(files['LABELMAP'])
# runpath = os.path.join(paths['IMAGE_PATH'], 'goniopin')
# #outpath = os.path.join(paths['IMAGE_PATH'], 'goniopin_out')
# for IMAGE_PATH in os.listdir(runpath):
# print(f"Working on {IMAGE_PATH}")
# IMAGE_PATH = os.path.join(runpath, IMAGE_PATH)
# img = cv2.imread(IMAGE_PATH)
# image_np = np.array(img)
# input_tensor = tf.convert_to_tensor(np.expand_dims(image_np, 0), dtype=tf.float32)
# detections = detect_fn(input_tensor)
# num_detections = int(detections.pop('num_detections'))
# detections = {key: value[0, :num_detections].numpy()
# for key, value in detections.items()}
# detections['num_detections'] = num_detections
# # detection_classes should be ints.
# detections['detection_classes'] = detections['detection_classes'].astype(np.int64)
# label_id_offset = 1
# image_np_with_detections = image_np.copy()
# viz_utils.visualize_boxes_and_labels_on_image_array(
# image_np_with_detections,
# detections['detection_boxes'],
# detections['detection_classes']+label_id_offset,
# detections['detection_scores'],
# category_index,
# use_normalized_coordinates=True,
# max_boxes_to_draw=5,
# min_score_thresh=.5,
# agnostic_mode=False)
# plt.imshow(cv2.cvtColor(image_np_with_detections, cv2.COLOR_BGR2RGB))
# plt.savefig(os.path.splitext(IMAGE_PATH)[0] + "_out.jpg")