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d2_main.py
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# Copyright (c) Facebook, Inc. and its affiliates. All Rights Reserved
"""
P3AFormer Training Script.
This script is a simplified version of the training script in detectron2/tools.
"""
try:
# ignore ShapelyDeprecationWarning from fvcore
from shapely.errors import ShapelyDeprecationWarning
import warnings
warnings.filterwarnings("ignore", category=ShapelyDeprecationWarning)
except:
pass
import copy
import itertools
import logging
import os
import random
import numpy as np
from collections import OrderedDict
from typing import Any, Dict, List, Set
from wsgiref.validate import InputWrapper
from configs.mot_detectron2.p3aformer_config_init import add_p3aformer_config
from detectron2.data.build import build_detection_test_loader
import torch
import detectron2.utils.comm as comm
from detectron2.checkpoint import DetectionCheckpointer
from detectron2.config import get_cfg
from detectron2.data import MetadataCatalog, build_detection_train_loader
from detectron2.engine import (
DefaultTrainer,
default_argument_parser,
default_setup,
launch,
)
from detectron2.evaluation import (
CityscapesInstanceEvaluator,
CityscapesSemSegEvaluator,
COCOEvaluator,
COCOPanopticEvaluator,
DatasetEvaluators,
LVISEvaluator,
SemSegEvaluator,
verify_results,
DatasetEvaluator,
inference_on_dataset,
print_csv_format,
)
from detectron2.projects.deeplab import add_deeplab_config, build_lr_scheduler
from detectron2.solver.build import maybe_add_gradient_clipping
from detectron2.utils.logger import setup_logger
import pdb
from datasets.d2_p3aformer_dataset.d2_mot17_mixed_dataset import (
MOT17DatasetMapper,
configured_mot17_test_dataset_function,
mot17_mixed_dataset_function,
)
from detectron2.engine.defaults import *
from detectron2.engine import hooks
from detectron2.engine.train_loop import *
from detectron2.modeling import build_model
import weakref
from fvcore.nn.precise_bn import get_bn_modules
from datasets.d2_p3aformer_dataset.d2_mot15_val_dataset import MOT15_val
from datasets.d2_p3aformer_dataset.d2_mot17_val_dataset import MOT17_val
from tracker.d2_p3aformer.d2_p3aformer_tracker import (
P3AFormerTracker,
frame_first_to_id_first,
)
from util.image import get_affine_transform
from util.evaluation import Evaluator
import motmetrics as mm
import warnings
from detectron2.data import DatasetCatalog
warnings.filterwarnings("ignore", category=UserWarning)
class Trainer(TrainerBase):
"""
Extension of the Trainer class adapted to MaskFormer.
"""
def __init__(self, cfg):
"""
Args:
cfg (CfgNode):
"""
super().__init__()
logger = logging.getLogger("d2_p3aformer")
if not logger.isEnabledFor(logging.INFO): # setup_logger is not called for d2
setup_logger()
cfg = DefaultTrainer.auto_scale_workers(cfg, comm.get_world_size())
# Assume these objects must be constructed in this order.
model = self.build_model(cfg)
optimizer = self.build_optimizer(cfg, model)
data_loader = self.build_train_loader(cfg)
model = create_ddp_model(
model, broadcast_buffers=False, find_unused_parameters=True
)
self._trainer = (AMPTrainer if cfg.SOLVER.AMP.ENABLED else SimpleTrainer)(
model, data_loader, optimizer
)
self.optimizer = self._trainer.optimizer
self.scheduler = self.build_lr_scheduler(cfg, optimizer)
self.checkpointer = DetectionCheckpointer(
# Assume you want to save checkpoints together with logs/statistics
model,
cfg.OUTPUT_DIR,
trainer=weakref.proxy(self),
)
self.start_iter = 0
self.max_iter = cfg.SOLVER.MAX_ITER
self.cfg = cfg
self.register_hooks(self.build_hooks())
def resume_or_load(self, resume=True):
"""
If `resume==True` and `cfg.OUTPUT_DIR` contains the last checkpoint (defined by
a `last_checkpoint` file), resume from the file. Resuming means loading all
available states (eg. optimizer and scheduler) and update iteration counter
from the checkpoint. ``cfg.MODEL.WEIGHTS`` will not be used.
Otherwise, this is considered as an independent training. The method will load model
weights from the file `cfg.MODEL.WEIGHTS` (but will not load other states) and start
from iteration 0.
Args:
resume (bool): whether to do resume or not
"""
self.checkpointer.resume_or_load(self.cfg.MODEL.WEIGHTS, resume=resume)
if resume and self.checkpointer.has_checkpoint():
# The checkpoint stores the training iteration that just finished, thus we start
# at the next iteration
self.start_iter = self.iter + 1
def build_hooks(self):
"""
Build a list of default hooks, including timing, evaluation,
checkpointing, lr scheduling, precise BN, writing events.
Returns:
list[HookBase]:
"""
cfg = self.cfg.clone()
cfg.defrost()
cfg.DATALOADER.NUM_WORKERS = 0 # save some memory and time for PreciseBN
ret = [
hooks.IterationTimer(),
hooks.LRScheduler(),
hooks.PreciseBN(
# Run at the same freq as (but before) evaluation.
cfg.TEST.EVAL_PERIOD,
self.model,
# Build a new data loader to not affect training
self.build_train_loader(cfg),
cfg.TEST.PRECISE_BN.NUM_ITER,
)
if cfg.TEST.PRECISE_BN.ENABLED and get_bn_modules(self.model)
else None,
]
# Do PreciseBN before checkpointer, because it updates the model and need to
# be saved by checkpointer.
# This is not always the best: if checkpointing has a different frequency,
# some checkpoints may have more precise statistics than others.
if comm.is_main_process():
ret.append(
hooks.PeriodicCheckpointer(
self.checkpointer, cfg.SOLVER.CHECKPOINT_PERIOD
)
)
def test_and_save_results():
self._last_eval_results = self.test_track(self.cfg, self.model)
return self._last_eval_results
# Do evaluation after checkpointer, because then if it fails,
# we can use the saved checkpoint to debug.
ret.append(hooks.EvalHook(cfg.TEST.EVAL_PERIOD, test_and_save_results))
if comm.is_main_process():
# Here the default print/log frequency of each writer is used.
# run writers in the end, so that evaluation metrics are written
ret.append(hooks.PeriodicWriter(self.build_writers(), period=20))
return ret
def build_writers(self):
"""
Build a list of writers to be used using :func:`default_writers()`.
If you'd like a different list of writers, you can overwrite it in
your trainer.
Returns:
list[EventWriter]: a list of :class:`EventWriter` objects.
"""
return default_writers(self.cfg.OUTPUT_DIR, self.max_iter)
def train(self):
"""
Run training.
Returns:
OrderedDict of results, if evaluation is enabled. Otherwise None.
"""
super().train(self.start_iter, self.max_iter)
if len(self.cfg.TEST.EXPECTED_RESULTS) and comm.is_main_process():
assert hasattr(
self, "_last_eval_results"
), "No evaluation results obtained during training!"
verify_results(self.cfg, self._last_eval_results)
return self._last_eval_results
def run_step(self):
self._trainer.iter = self.iter
self._trainer.run_step()
def state_dict(self):
ret = super().state_dict()
ret["_trainer"] = self._trainer.state_dict()
return ret
def load_state_dict(self, state_dict):
super().load_state_dict(state_dict)
self._trainer.load_state_dict(state_dict["_trainer"])
@classmethod
def build_model(cls, cfg):
"""
Returns:
torch.nn.Module:
It now calls :func:`detectron2.modeling.build_model`.
Overwrite it if you'd like a different model.
"""
model = build_model(cfg)
logger = logging.getLogger(__name__)
logger.info("Model:\n{}".format(model))
return model
@classmethod
def build_optimizer(cls, cfg, model):
weight_decay_norm = cfg.SOLVER.WEIGHT_DECAY_NORM
weight_decay_embed = cfg.SOLVER.WEIGHT_DECAY_EMBED
defaults = {}
defaults["lr"] = cfg.SOLVER.BASE_LR
defaults["weight_decay"] = cfg.SOLVER.WEIGHT_DECAY
norm_module_types = (
torch.nn.BatchNorm1d,
torch.nn.BatchNorm2d,
torch.nn.BatchNorm3d,
torch.nn.SyncBatchNorm,
# NaiveSyncBatchNorm inherits from BatchNorm2d
torch.nn.GroupNorm,
torch.nn.InstanceNorm1d,
torch.nn.InstanceNorm2d,
torch.nn.InstanceNorm3d,
torch.nn.LayerNorm,
torch.nn.LocalResponseNorm,
)
params: List[Dict[str, Any]] = []
memo: Set[torch.nn.parameter.Parameter] = set()
for module_name, module in model.named_modules():
for module_param_name, value in module.named_parameters(recurse=False):
if not value.requires_grad:
continue
# Avoid duplicating parameters
if value in memo:
continue
memo.add(value)
hyperparams = copy.copy(defaults)
if "backbone" in module_name:
hyperparams["lr"] = (
hyperparams["lr"] * cfg.SOLVER.BACKBONE_MULTIPLIER
)
if (
"relative_position_bias_table" in module_param_name
or "absolute_pos_embed" in module_param_name
):
print(module_param_name)
hyperparams["weight_decay"] = 0.0
if isinstance(module, norm_module_types):
hyperparams["weight_decay"] = weight_decay_norm
if isinstance(module, torch.nn.Embedding):
hyperparams["weight_decay"] = weight_decay_embed
params.append({"params": [value], **hyperparams})
def maybe_add_full_model_gradient_clipping(optim):
# detectron2 doesn't have full model gradient clipping now
clip_norm_val = cfg.SOLVER.CLIP_GRADIENTS.CLIP_VALUE
enable = (
cfg.SOLVER.CLIP_GRADIENTS.ENABLED
and cfg.SOLVER.CLIP_GRADIENTS.CLIP_TYPE == "full_model"
and clip_norm_val > 0.0
)
class FullModelGradientClippingOptimizer(optim):
def step(self, closure=None):
all_params = itertools.chain(
*[x["params"] for x in self.param_groups]
)
torch.nn.utils.clip_grad_norm_(all_params, clip_norm_val)
super().step(closure=closure)
return FullModelGradientClippingOptimizer if enable else optim
optimizer_type = cfg.SOLVER.OPTIMIZER
if optimizer_type == "SGD":
optimizer = maybe_add_full_model_gradient_clipping(torch.optim.SGD)(
params, cfg.SOLVER.BASE_LR, momentum=cfg.SOLVER.MOMENTUM
)
elif optimizer_type == "ADAMW":
optimizer = maybe_add_full_model_gradient_clipping(torch.optim.AdamW)(
params, cfg.SOLVER.BASE_LR
)
else:
raise NotImplementedError(f"no optimizer type {optimizer_type}")
if not cfg.SOLVER.CLIP_GRADIENTS.CLIP_TYPE == "full_model":
optimizer = maybe_add_gradient_clipping(cfg, optimizer)
return optimizer
@classmethod
def build_lr_scheduler(cls, cfg, optimizer):
"""
It now calls :func:`detectron2.solver.build_lr_scheduler`.
Overwrite it if you'd like a different scheduler.
"""
return build_lr_scheduler(cfg, optimizer)
@classmethod
def build_evaluator(cls, cfg, dataset_name, output_folder=None):
"""
Create evaluator(s) for a given dataset.
This uses the special metadata "evaluator_type" associated with each
builtin dataset. For your own dataset, you can simply create an
evaluator manually in your script and do not have to worry about the
hacky if-else logic here.
"""
if output_folder is None:
output_folder = os.path.join(cfg.OUTPUT_DIR, "inference")
evaluator_list = []
evaluator_type = MetadataCatalog.get(dataset_name).evaluator_type
# used in MOT
MetadataCatalog.get(dataset_name).json_file = os.path.join(
cfg.INPUT.VAL_DATA_DIR, "annotations", "train.json"
)
# semantic segmentation
if evaluator_type in ["sem_seg", "ade20k_panoptic_seg"]:
evaluator_list.append(
SemSegEvaluator(
dataset_name,
distributed=True,
output_dir=output_folder,
)
)
# instance segmentation
if evaluator_type == "coco":
evaluator_list.append(COCOEvaluator(dataset_name, output_dir=output_folder))
# panoptic segmentation
if evaluator_type in [
"coco_panoptic_seg",
"ade20k_panoptic_seg",
"cityscapes_panoptic_seg",
"mapillary_vistas_panoptic_seg",
]:
if cfg.MODEL.MASK_FORMER.TEST.PANOPTIC_ON:
evaluator_list.append(
COCOPanopticEvaluator(dataset_name, output_folder)
)
# COCO
if (
evaluator_type == "coco_panoptic_seg"
and cfg.MODEL.MASK_FORMER.TEST.INSTANCE_ON
):
evaluator_list.append(COCOEvaluator(dataset_name, output_dir=output_folder))
if (
evaluator_type == "coco_panoptic_seg"
and cfg.MODEL.MASK_FORMER.TEST.SEMANTIC_ON
):
evaluator_list.append(
SemSegEvaluator(
dataset_name, distributed=True, output_dir=output_folder
)
)
# Mapillary Vistas
if (
evaluator_type == "mapillary_vistas_panoptic_seg"
and cfg.MODEL.MASK_FORMER.TEST.INSTANCE_ON
):
evaluator_list.append(
InstanceSegEvaluator(dataset_name, output_dir=output_folder)
)
if (
evaluator_type == "mapillary_vistas_panoptic_seg"
and cfg.MODEL.MASK_FORMER.TEST.SEMANTIC_ON
):
evaluator_list.append(
SemSegEvaluator(
dataset_name, distributed=True, output_dir=output_folder
)
)
# Cityscapes
if evaluator_type == "cityscapes_instance":
assert (
torch.cuda.device_count() > comm.get_rank()
), "CityscapesEvaluator currently do not work with multiple machines."
return CityscapesInstanceEvaluator(dataset_name)
if evaluator_type == "cityscapes_sem_seg":
assert (
torch.cuda.device_count() > comm.get_rank()
), "CityscapesEvaluator currently do not work with multiple machines."
return CityscapesSemSegEvaluator(dataset_name)
if evaluator_type == "cityscapes_panoptic_seg":
if cfg.MODEL.MASK_FORMER.TEST.SEMANTIC_ON:
assert (
torch.cuda.device_count() > comm.get_rank()
), "CityscapesEvaluator currently do not work with multiple machines."
evaluator_list.append(CityscapesSemSegEvaluator(dataset_name))
if cfg.MODEL.MASK_FORMER.TEST.INSTANCE_ON:
assert (
torch.cuda.device_count() > comm.get_rank()
), "CityscapesEvaluator currently do not work with multiple machines."
evaluator_list.append(CityscapesInstanceEvaluator(dataset_name))
# ADE20K
if (
evaluator_type == "ade20k_panoptic_seg"
and cfg.MODEL.MASK_FORMER.TEST.INSTANCE_ON
):
evaluator_list.append(
InstanceSegEvaluator(dataset_name, output_dir=output_folder)
)
# LVIS
if evaluator_type == "lvis":
return LVISEvaluator(dataset_name, output_dir=output_folder)
if len(evaluator_list) == 0:
raise NotImplementedError(
"no Evaluator for the dataset {} with the type {}".format(
dataset_name, evaluator_type
)
)
elif len(evaluator_list) == 1:
return evaluator_list[0]
return DatasetEvaluators(evaluator_list)
@classmethod
def build_train_loader(cls, cfg):
# Semantic segmentation dataset mapper
if cfg.INPUT.DATASET_MAPPER_NAME == "mask_former_semantic":
mapper = MaskFormerSemanticDatasetMapper(cfg, True)
return build_detection_train_loader(cfg, mapper=mapper)
# Panoptic segmentation dataset mapper
elif cfg.INPUT.DATASET_MAPPER_NAME == "mask_former_panoptic":
mapper = MaskFormerPanopticDatasetMapper(cfg, True)
return build_detection_train_loader(cfg, mapper=mapper)
# Instance segmentation dataset mapper
elif cfg.INPUT.DATASET_MAPPER_NAME == "mask_former_instance":
mapper = MaskFormerInstanceDatasetMapper(cfg, True)
return build_detection_train_loader(cfg, mapper=mapper)
# coco instance segmentation lsj new baseline
elif cfg.INPUT.DATASET_MAPPER_NAME == "coco_instance_lsj":
mapper = COCOInstanceNewBaselineDatasetMapper(cfg, True)
return build_detection_train_loader(cfg, mapper=mapper)
# coco panoptic segmentation lsj new baseline
elif cfg.INPUT.DATASET_MAPPER_NAME == "coco_panoptic_lsj":
mapper = COCOPanopticNewBaselineDatasetMapper(cfg, True)
return build_detection_train_loader(cfg, mapper=mapper)
elif cfg.INPUT.DATASET_MAPPER_NAME == "mot_mixed":
mapper = MOT17DatasetMapper(cfg, True)
mot_mixed_dataset = mot17_mixed_dataset_function(cfg)
return build_detection_train_loader(
cfg, dataset=mot_mixed_dataset, mapper=mapper
)
else:
mapper = None
return build_detection_train_loader(cfg, mapper=mapper)
def build_test_loader(self, cfg, dataset_name):
mapper = MOT17DatasetMapper(cfg, True)
mot_mixed_dataset = mot17_mixed_dataset_function(cfg)
dataset_name = "MOT17"
DatasetCatalog.register(
dataset_name, configured_mot17_test_dataset_function(cfg)
)
MetadataCatalog.get(dataset_name).evaluator_type = "coco"
return build_detection_test_loader(
cfg, dataset_name=dataset_name, dataset=mot_mixed_dataset, mapper=mapper
)
def test_detection(self, cfg, model):
logger = logging.getLogger(__name__)
results = OrderedDict()
for idx, dataset_name in enumerate(cfg.DATASETS.TEST):
data_loader = self.build_test_loader(cfg, dataset_name)
evaluator = self.build_evaluator(cfg, dataset_name)
results_i = inference_on_dataset(model, data_loader, evaluator)
results[dataset_name] = results_i
if comm.is_main_process():
assert isinstance(
results_i, dict
), "Evaluator must return a dict on the main process. Got {} instead.".format(
results_i
)
logger.info(
"Evaluation results for {} in csv format:".format(dataset_name)
)
print_csv_format(results_i)
if len(results) == 1:
results = list(results.values())[0]
return results
@classmethod
def test_track(self, cfg, model):
results = OrderedDict() # dummy results
for idx, dataset_name in enumerate(cfg.DATASETS.TEST):
dataset = self.build_tracking_loader(cfg, dataset_name)
tracker = P3AFormerTracker(cfg, p3aformer_model=model)
all_accs, all_seqs = [], []
for img_seq, seq_name in dataset:
tracker.reset()
for idx, frame_name in enumerate(img_seq):
print(f"Step frame: {idx} / {len(img_seq)}.", end="\r")
batch = dataset.load_data(
idx, img_seq[frame_name]["img_id"], tracker.visualizer
)
save_path = tracker.step(idx, seq_name, frame_name, batch)
train_dir = os.path.join(cfg.INPUT.VAL_DATA_DIR, "train")
evaluator = Evaluator(train_dir, seq_name)
accs = evaluator.eval_file(save_path)
all_accs.append(accs)
all_seqs.append(seq_name)
metrics = mm.metrics.motchallenge_metrics
mh = mm.metrics.create()
summary = Evaluator.get_summary(all_accs, all_seqs, metrics)
strsummary = mm.io.render_summary(
summary,
formatters=mh.formatters,
namemap=mm.io.motchallenge_metric_names,
)
print(strsummary)
return results
@classmethod
def build_tracking_loader(cls, cfg, dataset_name):
"""
Returns:
iterable
It now calls :func:`detectron2.data.build_detection_test_loader`.
Overwrite it if you'd like a different data loader.
"""
if dataset_name == "MOT15":
dataset = MOT15_val(cfg) # using MOT15 training split to test MOT17 models.
elif dataset_name == "MOT17":
dataset = MOT17_val(cfg)
else:
raise NotImplementedError(f"Not implemented dataset {dataset_name}.")
return dataset
def setup(args):
"""
Create configs and perform basic setups.
"""
cfg = get_cfg()
# for poly lr schedule
add_deeplab_config(cfg)
add_p3aformer_config(cfg, args)
cfg.merge_from_file(args.config_file)
cfg.merge_from_list(args.opts)
cfg.freeze()
default_setup(cfg, args)
# Setup logger for "mask_former" module
os.makedirs(cfg.OUTPUT_DIR, exist_ok=True)
setup_logger(
output=cfg.OUTPUT_DIR, distributed_rank=comm.get_rank(), name="p3aformer"
)
return cfg
def main(args):
cfg = setup(args)
if args.eval_only:
model = Trainer.build_model(cfg)
DetectionCheckpointer(model, save_dir=cfg.OUTPUT_DIR).resume_or_load(
cfg.MODEL.WEIGHTS, resume=args.resume
)
res = Trainer.test_track(cfg, model)
return res
else:
trainer = Trainer(cfg)
trainer.resume_or_load(resume=args.resume)
return trainer.train()
if __name__ == "__main__":
np.random.seed(2022)
torch.manual_seed(2022)
random.seed(2022)
args = default_argument_parser().parse_args()
print("Command Line Args:", args)
launch(
main,
args.num_gpus,
num_machines=args.num_machines,
machine_rank=args.machine_rank,
dist_url=args.dist_url,
args=(args,),
)