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# Ultralytics YOLO ๐, AGPL-3.0 license | |
from ultralytics.utils import LOGGER, RANK, SETTINGS, TESTS_RUNNING, ops | |
try: | |
assert not TESTS_RUNNING # do not log pytest | |
assert SETTINGS["comet"] is True # verify integration is enabled | |
import comet_ml | |
assert hasattr(comet_ml, "__version__") # verify package is not directory | |
import os | |
from pathlib import Path | |
# Ensures certain logging functions only run for supported tasks | |
COMET_SUPPORTED_TASKS = ["detect"] | |
# Names of plots created by YOLOv8 that are logged to Comet | |
EVALUATION_PLOT_NAMES = "F1_curve", "P_curve", "R_curve", "PR_curve", "confusion_matrix" | |
LABEL_PLOT_NAMES = "labels", "labels_correlogram" | |
_comet_image_prediction_count = 0 | |
except (ImportError, AssertionError): | |
comet_ml = None | |
def _get_comet_mode(): | |
"""Returns the mode of comet set in the environment variables, defaults to 'online' if not set.""" | |
return os.getenv("COMET_MODE", "online") | |
def _get_comet_model_name(): | |
"""Returns the model name for Comet from the environment variable 'COMET_MODEL_NAME' or defaults to 'YOLOv8'.""" | |
return os.getenv("COMET_MODEL_NAME", "YOLOv8") | |
def _get_eval_batch_logging_interval(): | |
"""Get the evaluation batch logging interval from environment variable or use default value 1.""" | |
return int(os.getenv("COMET_EVAL_BATCH_LOGGING_INTERVAL", 1)) | |
def _get_max_image_predictions_to_log(): | |
"""Get the maximum number of image predictions to log from the environment variables.""" | |
return int(os.getenv("COMET_MAX_IMAGE_PREDICTIONS", 100)) | |
def _scale_confidence_score(score): | |
"""Scales the given confidence score by a factor specified in an environment variable.""" | |
scale = float(os.getenv("COMET_MAX_CONFIDENCE_SCORE", 100.0)) | |
return score * scale | |
def _should_log_confusion_matrix(): | |
"""Determines if the confusion matrix should be logged based on the environment variable settings.""" | |
return os.getenv("COMET_EVAL_LOG_CONFUSION_MATRIX", "false").lower() == "true" | |
def _should_log_image_predictions(): | |
"""Determines whether to log image predictions based on a specified environment variable.""" | |
return os.getenv("COMET_EVAL_LOG_IMAGE_PREDICTIONS", "true").lower() == "true" | |
def _get_experiment_type(mode, project_name): | |
"""Return an experiment based on mode and project name.""" | |
if mode == "offline": | |
return comet_ml.OfflineExperiment(project_name=project_name) | |
return comet_ml.Experiment(project_name=project_name) | |
def _create_experiment(args): | |
"""Ensures that the experiment object is only created in a single process during distributed training.""" | |
if RANK not in (-1, 0): | |
return | |
try: | |
comet_mode = _get_comet_mode() | |
_project_name = os.getenv("COMET_PROJECT_NAME", args.project) | |
experiment = _get_experiment_type(comet_mode, _project_name) | |
experiment.log_parameters(vars(args)) | |
experiment.log_others( | |
{ | |
"eval_batch_logging_interval": _get_eval_batch_logging_interval(), | |
"log_confusion_matrix_on_eval": _should_log_confusion_matrix(), | |
"log_image_predictions": _should_log_image_predictions(), | |
"max_image_predictions": _get_max_image_predictions_to_log(), | |
} | |
) | |
experiment.log_other("Created from", "yolov8") | |
except Exception as e: | |
LOGGER.warning(f"WARNING โ ๏ธ Comet installed but not initialized correctly, not logging this run. {e}") | |
def _fetch_trainer_metadata(trainer): | |
"""Returns metadata for YOLO training including epoch and asset saving status.""" | |
curr_epoch = trainer.epoch + 1 | |
train_num_steps_per_epoch = len(trainer.train_loader.dataset) // trainer.batch_size | |
curr_step = curr_epoch * train_num_steps_per_epoch | |
final_epoch = curr_epoch == trainer.epochs | |
save = trainer.args.save | |
save_period = trainer.args.save_period | |
save_interval = curr_epoch % save_period == 0 | |
save_assets = save and save_period > 0 and save_interval and not final_epoch | |
return dict(curr_epoch=curr_epoch, curr_step=curr_step, save_assets=save_assets, final_epoch=final_epoch) | |
def _scale_bounding_box_to_original_image_shape(box, resized_image_shape, original_image_shape, ratio_pad): | |
""" | |
YOLOv8 resizes images during training and the label values are normalized based on this resized shape. | |
This function rescales the bounding box labels to the original image shape. | |
""" | |
resized_image_height, resized_image_width = resized_image_shape | |
# Convert normalized xywh format predictions to xyxy in resized scale format | |
box = ops.xywhn2xyxy(box, h=resized_image_height, w=resized_image_width) | |
# Scale box predictions from resized image scale back to original image scale | |
box = ops.scale_boxes(resized_image_shape, box, original_image_shape, ratio_pad) | |
# Convert bounding box format from xyxy to xywh for Comet logging | |
box = ops.xyxy2xywh(box) | |
# Adjust xy center to correspond top-left corner | |
box[:2] -= box[2:] / 2 | |
box = box.tolist() | |
return box | |
def _format_ground_truth_annotations_for_detection(img_idx, image_path, batch, class_name_map=None): | |
"""Format ground truth annotations for detection.""" | |
indices = batch["batch_idx"] == img_idx | |
bboxes = batch["bboxes"][indices] | |
if len(bboxes) == 0: | |
LOGGER.debug(f"COMET WARNING: Image: {image_path} has no bounding boxes labels") | |
return None | |
cls_labels = batch["cls"][indices].squeeze(1).tolist() | |
if class_name_map: | |
cls_labels = [str(class_name_map[label]) for label in cls_labels] | |
original_image_shape = batch["ori_shape"][img_idx] | |
resized_image_shape = batch["resized_shape"][img_idx] | |
ratio_pad = batch["ratio_pad"][img_idx] | |
data = [] | |
for box, label in zip(bboxes, cls_labels): | |
box = _scale_bounding_box_to_original_image_shape(box, resized_image_shape, original_image_shape, ratio_pad) | |
data.append( | |
{ | |
"boxes": [box], | |
"label": f"gt_{label}", | |
"score": _scale_confidence_score(1.0), | |
} | |
) | |
return {"name": "ground_truth", "data": data} | |
def _format_prediction_annotations_for_detection(image_path, metadata, class_label_map=None): | |
"""Format YOLO predictions for object detection visualization.""" | |
stem = image_path.stem | |
image_id = int(stem) if stem.isnumeric() else stem | |
predictions = metadata.get(image_id) | |
if not predictions: | |
LOGGER.debug(f"COMET WARNING: Image: {image_path} has no bounding boxes predictions") | |
return None | |
data = [] | |
for prediction in predictions: | |
boxes = prediction["bbox"] | |
score = _scale_confidence_score(prediction["score"]) | |
cls_label = prediction["category_id"] | |
if class_label_map: | |
cls_label = str(class_label_map[cls_label]) | |
data.append({"boxes": [boxes], "label": cls_label, "score": score}) | |
return {"name": "prediction", "data": data} | |
def _fetch_annotations(img_idx, image_path, batch, prediction_metadata_map, class_label_map): | |
"""Join the ground truth and prediction annotations if they exist.""" | |
ground_truth_annotations = _format_ground_truth_annotations_for_detection( | |
img_idx, image_path, batch, class_label_map | |
) | |
prediction_annotations = _format_prediction_annotations_for_detection( | |
image_path, prediction_metadata_map, class_label_map | |
) | |
annotations = [ | |
annotation for annotation in [ground_truth_annotations, prediction_annotations] if annotation is not None | |
] | |
return [annotations] if annotations else None | |
def _create_prediction_metadata_map(model_predictions): | |
"""Create metadata map for model predictions by groupings them based on image ID.""" | |
pred_metadata_map = {} | |
for prediction in model_predictions: | |
pred_metadata_map.setdefault(prediction["image_id"], []) | |
pred_metadata_map[prediction["image_id"]].append(prediction) | |
return pred_metadata_map | |
def _log_confusion_matrix(experiment, trainer, curr_step, curr_epoch): | |
"""Log the confusion matrix to Comet experiment.""" | |
conf_mat = trainer.validator.confusion_matrix.matrix | |
names = list(trainer.data["names"].values()) + ["background"] | |
experiment.log_confusion_matrix( | |
matrix=conf_mat, labels=names, max_categories=len(names), epoch=curr_epoch, step=curr_step | |
) | |
def _log_images(experiment, image_paths, curr_step, annotations=None): | |
"""Logs images to the experiment with optional annotations.""" | |
if annotations: | |
for image_path, annotation in zip(image_paths, annotations): | |
experiment.log_image(image_path, name=image_path.stem, step=curr_step, annotations=annotation) | |
else: | |
for image_path in image_paths: | |
experiment.log_image(image_path, name=image_path.stem, step=curr_step) | |
def _log_image_predictions(experiment, validator, curr_step): | |
"""Logs predicted boxes for a single image during training.""" | |
global _comet_image_prediction_count | |
task = validator.args.task | |
if task not in COMET_SUPPORTED_TASKS: | |
return | |
jdict = validator.jdict | |
if not jdict: | |
return | |
predictions_metadata_map = _create_prediction_metadata_map(jdict) | |
dataloader = validator.dataloader | |
class_label_map = validator.names | |
batch_logging_interval = _get_eval_batch_logging_interval() | |
max_image_predictions = _get_max_image_predictions_to_log() | |
for batch_idx, batch in enumerate(dataloader): | |
if (batch_idx + 1) % batch_logging_interval != 0: | |
continue | |
image_paths = batch["im_file"] | |
for img_idx, image_path in enumerate(image_paths): | |
if _comet_image_prediction_count >= max_image_predictions: | |
return | |
image_path = Path(image_path) | |
annotations = _fetch_annotations( | |
img_idx, | |
image_path, | |
batch, | |
predictions_metadata_map, | |
class_label_map, | |
) | |
_log_images( | |
experiment, | |
[image_path], | |
curr_step, | |
annotations=annotations, | |
) | |
_comet_image_prediction_count += 1 | |
def _log_plots(experiment, trainer): | |
"""Logs evaluation plots and label plots for the experiment.""" | |
plot_filenames = [trainer.save_dir / f"{plots}.png" for plots in EVALUATION_PLOT_NAMES] | |
_log_images(experiment, plot_filenames, None) | |
label_plot_filenames = [trainer.save_dir / f"{labels}.jpg" for labels in LABEL_PLOT_NAMES] | |
_log_images(experiment, label_plot_filenames, None) | |
def _log_model(experiment, trainer): | |
"""Log the best-trained model to Comet.ml.""" | |
model_name = _get_comet_model_name() | |
experiment.log_model(model_name, file_or_folder=str(trainer.best), file_name="best.pt", overwrite=True) | |
def on_pretrain_routine_start(trainer): | |
"""Creates or resumes a CometML experiment at the start of a YOLO pre-training routine.""" | |
experiment = comet_ml.get_global_experiment() | |
is_alive = getattr(experiment, "alive", False) | |
if not experiment or not is_alive: | |
_create_experiment(trainer.args) | |
def on_train_epoch_end(trainer): | |
"""Log metrics and save batch images at the end of training epochs.""" | |
experiment = comet_ml.get_global_experiment() | |
if not experiment: | |
return | |
metadata = _fetch_trainer_metadata(trainer) | |
curr_epoch = metadata["curr_epoch"] | |
curr_step = metadata["curr_step"] | |
experiment.log_metrics(trainer.label_loss_items(trainer.tloss, prefix="train"), step=curr_step, epoch=curr_epoch) | |
if curr_epoch == 1: | |
_log_images(experiment, trainer.save_dir.glob("train_batch*.jpg"), curr_step) | |
def on_fit_epoch_end(trainer): | |
"""Logs model assets at the end of each epoch.""" | |
experiment = comet_ml.get_global_experiment() | |
if not experiment: | |
return | |
metadata = _fetch_trainer_metadata(trainer) | |
curr_epoch = metadata["curr_epoch"] | |
curr_step = metadata["curr_step"] | |
save_assets = metadata["save_assets"] | |
experiment.log_metrics(trainer.metrics, step=curr_step, epoch=curr_epoch) | |
experiment.log_metrics(trainer.lr, step=curr_step, epoch=curr_epoch) | |
if curr_epoch == 1: | |
from ultralytics.utils.torch_utils import model_info_for_loggers | |
experiment.log_metrics(model_info_for_loggers(trainer), step=curr_step, epoch=curr_epoch) | |
if not save_assets: | |
return | |
_log_model(experiment, trainer) | |
if _should_log_confusion_matrix(): | |
_log_confusion_matrix(experiment, trainer, curr_step, curr_epoch) | |
if _should_log_image_predictions(): | |
_log_image_predictions(experiment, trainer.validator, curr_step) | |
def on_train_end(trainer): | |
"""Perform operations at the end of training.""" | |
experiment = comet_ml.get_global_experiment() | |
if not experiment: | |
return | |
metadata = _fetch_trainer_metadata(trainer) | |
curr_epoch = metadata["curr_epoch"] | |
curr_step = metadata["curr_step"] | |
plots = trainer.args.plots | |
_log_model(experiment, trainer) | |
if plots: | |
_log_plots(experiment, trainer) | |
_log_confusion_matrix(experiment, trainer, curr_step, curr_epoch) | |
_log_image_predictions(experiment, trainer.validator, curr_step) | |
experiment.end() | |
global _comet_image_prediction_count | |
_comet_image_prediction_count = 0 | |
callbacks = ( | |
{ | |
"on_pretrain_routine_start": on_pretrain_routine_start, | |
"on_train_epoch_end": on_train_epoch_end, | |
"on_fit_epoch_end": on_fit_epoch_end, | |
"on_train_end": on_train_end, | |
} | |
if comet_ml | |
else {} | |
) | |