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eval_utils.py
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eval_utils.py
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# -*- coding: utf-8 -*-
# File: eval.py
import itertools
import random
import sys
import os
import json
import PIL
import numpy as np
import glob
from collections import namedtuple
from concurrent.futures import ThreadPoolExecutor
from contextlib import ExitStack
import cv2
import pycocotools.mask as cocomask
import tqdm
import tensorflow as tf
import xmltodict
from tensorpack.callbacks import Callback
from tensorpack.tfutils.common import get_tf_version_tuple
from tensorpack.utils import logger
from tensorpack.utils.utils import get_tqdm
from common import CustomResize, clip_boxes, box_to_point8, point8_to_box
from data import get_eval_dataflow
from dataset import DetectionDataset
from config import config as cfg
try:
import horovod.tensorflow as hvd
except ImportError:
pass
DetectionResult = namedtuple(
'DetectionResult',
['box', 'score', 'class_id', 'mask'])
"""
box: 4 float
score: float
class_id: int, 1~NUM_CLASS
mask: None, or a binary image of the original image shape
"""
def _paste_mask(box, mask, shape):
"""
Args:
box: 4 float
mask: MxM floats
shape: h,w
Returns:
A uint8 binary image of hxw.
"""
# int() is floor
# box fpcoor=0.0 -> intcoor=0.0
x0, y0 = list(map(int, box[:2] + 0.5))
# box fpcoor=h -> intcoor=h-1, inclusive
x1, y1 = list(map(int, box[2:] - 0.5)) # inclusive
x1 = max(x0, x1) # require at least 1x1
y1 = max(y0, y1)
w = x1 + 1 - x0
h = y1 + 1 - y0
# rounding errors could happen here, because masks were not originally computed for this shape.
# but it's hard to do better, because the network does not know the "original" scale
mask = (cv2.resize(mask, (w, h)) > 0.5).astype('uint8')
ret = np.zeros(shape, dtype='uint8')
ret[y0:y1 + 1, x0:x1 + 1] = mask
return ret
def predict_image(img, model_func):
"""
Run detection on one image, using the TF callable.
This function should handle the preprocessing internally.
Args:
img: an image
model_func: a callable from the TF model.
It takes image and returns (boxes, probs, labels, [masks])
Returns:
[DetectionResult]
"""
orig_shape = img.shape[:2]
resizer = CustomResize(cfg.PREPROC.TEST_SHORT_EDGE_SIZE, cfg.PREPROC.MAX_SIZE)
resized_img = resizer.augment(img)
scale = np.sqrt(resized_img.shape[0] * 1.0 / img.shape[0] * resized_img.shape[1] / img.shape[1])
boxes, probs, labels, *masks = model_func(resized_img)
boxes = boxes / scale
# boxes are already clipped inside the graph, but after the floating point scaling, this may not be true any more.
boxes = clip_boxes(boxes, orig_shape)
if masks:
# has mask
full_masks = [_paste_mask(box, mask, orig_shape)
for box, mask in zip(boxes, masks[0])]
masks = full_masks
else:
# fill with none
masks = [None] * len(boxes)
results = [DetectionResult(*args) for args in zip(boxes, probs, labels, masks)]
return results
def predict_image_track_with_precomputed_ref_features(img, ref_features, model_func):
orig_shape = img.shape[:2]
resizer = CustomResize(cfg.PREPROC.TEST_SHORT_EDGE_SIZE, cfg.PREPROC.MAX_SIZE)
resized_img = resizer.augment(img)
scale = np.sqrt(resized_img.shape[0] * 1.0 / img.shape[0] * resized_img.shape[1] / img.shape[1])
boxes, probs, labels, *masks = model_func(resized_img, ref_features)
boxes = boxes / scale
# boxes are already clipped inside the graph, but after the floating point scaling, this may not be true any more.
boxes = clip_boxes(boxes, orig_shape)
if masks:
# has mask
full_masks = [_paste_mask(box, mask, orig_shape)
for box, mask in zip(boxes, masks[0])]
masks = full_masks
else:
# fill with none
masks = [None] * len(boxes)
results = [DetectionResult(*args) for args in zip(boxes, probs, labels, masks)]
return results
def predict_image_track(img, ref_img, ref_bbox, model_func):
"""
Run detection on one image, using the TF callable.
This function should handle the preprocessing internally.
Args:
img: an image
model_func: a callable from the TF model.
It takes image and returns (boxes, probs, labels, [masks])
Returns:
[DetectionResult]
"""
orig_shape = img.shape[:2]
resizer = CustomResize(cfg.PREPROC.TEST_SHORT_EDGE_SIZE, cfg.PREPROC.MAX_SIZE)
resized_img = resizer.augment(img)
resized_ref_img, params = resizer.augment_return_params(ref_img)
ref_points = box_to_point8(ref_bbox[np.newaxis])
ref_points = resizer.augment_coords(ref_points, params)
resized_ref_boxes = point8_to_box(ref_points)
resized_ref_bbox = resized_ref_boxes[0]
scale = np.sqrt(resized_img.shape[0] * 1.0 / img.shape[0] * resized_img.shape[1] / img.shape[1])
boxes, probs, labels, *masks = model_func(resized_img, resized_ref_img, resized_ref_bbox)
boxes = boxes / scale
# boxes are already clipped inside the graph, but after the floating point scaling, this may not be true any more.
boxes = clip_boxes(boxes, orig_shape)
if masks:
# has mask
full_masks = [_paste_mask(box, mask, orig_shape)
for box, mask in zip(boxes, masks[0])]
masks = full_masks
else:
# fill with none
masks = [None] * len(boxes)
results = [DetectionResult(*args) for args in zip(boxes, probs, labels, masks)]
return results
def predict_dataflow(df, model_func, tqdm_bar=None):
"""
Args:
df: a DataFlow which produces (image, image_id)
model_func: a callable from the TF model.
It takes image and returns (boxes, probs, labels, [masks])
tqdm_bar: a tqdm object to be shared among multiple evaluation instances. If None,
will create a new one.
Returns:
list of dict, in the format used by
`DetectionDataset.eval_or_save_inference_results`
"""
df.reset_state()
all_results = []
with ExitStack() as stack:
# tqdm is not quite thread-safe: https://github.com/tqdm/tqdm/issues/323
if tqdm_bar is None:
tqdm_bar = stack.enter_context(get_tqdm(total=df.size()))
for ref_img, ref_bbox, target_img, target_bbox, gt_file in df:
results = predict_image_track(target_img, ref_img, ref_bbox, model_func)
all_results.append((gt_file, results, target_bbox))
tqdm_bar.update(1)
return all_results
def multithread_predict_dataflow(dataflows, model_funcs):
"""
Running multiple `predict_dataflow` in multiple threads, and aggregate the results.
Args:
dataflows: a list of DataFlow to be used in :func:`predict_dataflow`
model_funcs: a list of callable to be used in :func:`predict_dataflow`
Returns:
list of dict, in the format used by
`DetectionDataset.eval_or_save_inference_results`
"""
num_worker = len(model_funcs)
assert len(dataflows) == num_worker
if num_worker == 1:
return predict_dataflow(dataflows[0], model_funcs[0])
kwargs = {'thread_name_prefix': 'EvalWorker'} if sys.version_info.minor >= 6 else {}
with ThreadPoolExecutor(max_workers=num_worker, **kwargs) as executor, \
tqdm.tqdm(total=sum([df.size() for df in dataflows])) as pbar:
futures = []
for dataflow, pred in zip(dataflows, model_funcs):
futures.append(executor.submit(predict_dataflow, dataflow, pred, pbar))
all_results = list(itertools.chain(*[fut.result() for fut in futures]))
return all_results
class EvalCallback(Callback):
"""
A callback that runs evaluation once a while.
It supports multi-gpu evaluation.
"""
_chief_only = False
def __init__(self, eval_dataset, in_names, out_names, output_dir):
self._eval_dataset = eval_dataset
self._in_names, self._out_names = in_names, out_names
self._output_dir = output_dir
def _setup_graph(self):
num_gpu = cfg.TRAIN.NUM_GPUS
if cfg.TRAINER == 'replicated':
# TF bug in version 1.11, 1.12: https://github.com/tensorflow/tensorflow/issues/22750
buggy_tf = get_tf_version_tuple() in [(1, 11), (1, 12)]
# Use two predictor threads per GPU to get better throughput
self.num_predictor = num_gpu if buggy_tf else num_gpu * 2
self.predictors = [self._build_predictor(k % num_gpu) for k in range(self.num_predictor)]
self.dataflows = [get_eval_dataflow(self._eval_dataset,
shard=k, num_shards=self.num_predictor)
for k in range(self.num_predictor)]
else:
# Only eval on the first machine.
# Alternatively, can eval on all ranks and use allgather, but allgather sometimes hangs
self._horovod_run_eval = hvd.rank() == hvd.local_rank()
if self._horovod_run_eval:
self.predictor = self._build_predictor(0)
self.dataflow = get_eval_dataflow(self._eval_dataset,
shard=hvd.local_rank(), num_shards=hvd.local_size())
self.barrier = hvd.allreduce(tf.random_normal(shape=[1]))
def _build_predictor(self, idx):
return self.trainer.get_predictor(self._in_names, self._out_names, device=idx)
def _before_train(self):
eval_period = cfg.TRAIN.EVAL_PERIOD
self.epochs_to_eval = set()
for k in itertools.count(1):
if k * eval_period > self.trainer.max_epoch:
break
self.epochs_to_eval.add(k * eval_period)
self.epochs_to_eval.add(self.trainer.max_epoch)
logger.info("[EvalCallback] Will evaluate every {} epochs".format(eval_period))
def _eval(self):
logdir = self._output_dir
if cfg.TRAINER == 'replicated':
all_results = multithread_predict_dataflow(self.dataflows, self.predictors)
else:
filenames = [os.path.join(
logdir, 'outputs{}-part{}.json'.format(self.global_step, rank)
) for rank in range(hvd.local_size())]
if self._horovod_run_eval:
local_results = predict_dataflow(self.dataflow, self.predictor)
fname = filenames[hvd.local_rank()]
with open(fname, 'w') as f:
json.dump(local_results, f)
self.barrier.eval()
if hvd.rank() > 0:
return
all_results = []
for fname in filenames:
with open(fname, 'r') as f:
obj = json.load(f)
all_results.extend(obj)
os.unlink(fname)
output_file = os.path.join(
logdir, '{}-outputs{}.json'.format(self._eval_dataset, self.global_step))
scores = DetectionDataset().eval_or_save_inference_results(
all_results, self._eval_dataset, output_file)
for k, v in scores.items():
self.trainer.monitors.put_scalar(k, v)
def _trigger_epoch(self):
if self.epoch_num in self.epochs_to_eval:
logger.info("Running evaluation ...")
self._eval()