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import argparse
import contextlib
import copy
import io
import itertools
import json
import logging
import os
import os.path as osp
import pickle as pkl
from collections import OrderedDict
from utils.arg_parser import get_argparser
import numpy as np
import torch
from detectron2.evaluation.evaluator import DatasetEvaluator
from detectron2.evaluation.fast_eval_api import COCOeval_opt as COCOeval
from detectron2.structures import BoxMode
from detectron2.utils.logger import create_small_table
from fvcore.common.file_io import PathManager
from pycocotools.coco import COCO
from tabulate import tabulate
from torchvision.ops import box_iou
class COCOEvaluator(DatasetEvaluator):
"""
Evaluate AR for object proposals, AP for instance detection/segmentation, AP
for keypoint detection outputs using COCO's metrics.
See http://cocodataset.org/#detection-eval and
http://cocodataset.org/#keypoints-eval to understand its metrics.
In addition to COCO, this evaluator is able to support any bounding box detection,
instance segmentation, or keypoint detection dataset.
"""
def __init__(
self,
gt_json_file,
pred_json_file,
counting_gt_json_path,
split="val",
image_set=None,
visualize_res=True,
output_dir=None,
):
"""
Args:
dataset_name (str): name of the dataset to be evaluated.
It must have either the following corresponding metadata:
"json_file": the path to the COCO format annotation
Or it must be in detectron2's standard dataset format
so it can be converted to COCO format automatically.
cfg (CfgNode): config instance
distributed (True): if True, will collect results from all ranks and run evaluation
in the main process.
Otherwise, will evaluate the results in the current process.
output_dir (str): optional, an output directory to dump all
results predicted on the dataset. The dump contains two files:
1. "instance_predictions.pth" a file in torch serialization
format that contains all the raw original predictions.
2. "coco_instances_results.json" a json file in COCO's result
format.
"""
self._tasks = [
"bbox",
]
self._output_dir = output_dir
self.counting_gt_json_path = counting_gt_json_path
self._cpu_device = torch.device("cpu")
# replace fewx with d2
self._logger = logging.getLogger(__name__)
gt_json_file = PathManager.get_local_path(gt_json_file)
with contextlib.redirect_stdout(io.StringIO()):
self._coco_api = COCO(gt_json_file)
pred_json_file = PathManager.get_local_path(pred_json_file)
with contextlib.redirect_stdout(io.StringIO()):
self.pred_coco_api = COCO(pred_json_file)
with open(gt_json_file) as f:
tmp_gt = json.load(f)
info_images = tmp_gt["images"]
self.map_id_2_name = dict()
self.map_name_2_id = dict()
for info_image in info_images:
img_id = info_image["id"]
img_name = info_image["file_name"]
self.map_id_2_name[img_id] = img_name
self.map_name_2_id[img_name] = img_id
with open(counting_gt_json_path) as f:
self.point_annos = json.load(f)
# Test set json files do not contain annotations (evaluation must be
# performed using the COCO evaluation server).
self._do_evaluation = "annotations" in self._coco_api.dataset
self.counting_dict = dict()
self._predictions = []
self._image_set = image_set
self.visualize_res = visualize_res
self._vis_dir = osp.join(self._output_dir, "vis_res")
os.makedirs(self._vis_dir, exist_ok=True)
self.aps = []
self.split = split
self.relative_error = []
def _tasks_from_config(self, cfg):
"""
Returns:
tuple[str]: tasks that can be evaluated under the given configuration.
"""
tasks = ("bbox",)
if cfg.MODEL.MASK_ON:
tasks = tasks + ("segm",)
return tasks
def process(self):
"""
Args:
inputs: the inputs to a COCO model (e.g., GeneralizedRCNN).
It is a list of dict. Each dict corresponds to an image and
contains keys like "height", "width", "file_name", "image_id".
outputs: the outputs of a COCO model. It is a list of dicts with key
"instances" that contains :class:`Instances`.
"""
if self._image_set is None:
img_ids = self.pred_coco_api.getImgIds()
else:
img_ids = self._image_set
print("number of images", len(img_ids))
for img_id in img_ids:
img_name = self.map_id_2_name[img_id]
anno_ids = self.pred_coco_api.getAnnIds([img_id])
point_anno = self.point_annos[img_name]["points"]
pred_annos = self.pred_coco_api.loadAnns(anno_ids)
img_info = self.pred_coco_api.loadImgs([img_id])
prediction = {"image_id": img_id}
results = []
num_pred = len(pred_annos)
for anno in pred_annos:
box = anno["bbox"]
x_cen, y_cen, w, h = box
new_box = [x_cen, y_cen, w, h]
result = {
"image_id": anno["image_id"],
"category_id": anno["category_id"],
"bbox": new_box,
"score": anno["score"],
}
results.append(result)
num_pred = len(results)
gt_anno_ids = self._coco_api.getAnnIds([img_id])
gt_annos = self._coco_api.loadAnns(gt_anno_ids)
ap = 0
if self.visualize_res:
import cv2
img = cv2.imread(osp.join(os.path.dirname(self.counting_gt_json_path), 'images_384_VarV2', img_name))
height, width, channels = img.shape
height = 25 * len(pred_annos) + 10
score_img = np.zeros((height, width, 3), np.uint8)
score_img[:] = 255
for idx, pred_anno in enumerate(pred_annos):
pred_box = pred_anno["bbox"]
x_cen, y_cen, w, h = pred_box
pred_box = [int(x_cen), int(y_cen), int(w), int(h)]
pred_x, pred_y, pred_w, pred_h = pred_box
pred_x, pred_y, pred_w, pred_h = int(pred_x), int(pred_y), int(pred_w), int(pred_h)
img = cv2.rectangle(img, (pred_x, pred_y), (pred_x + pred_w, pred_y + pred_h), (0, 165, 255), 2)
vis_img_path = os.path.join(self._vis_dir, str(len(pred_annos)-len(gt_annos))+"_"+ img_name[:-4] + "_"+str(len(pred_annos))+".jpg")
cv2.imwrite(vis_img_path, img)
info = {
"img_name": img_name,
"img_id": img_id,
"ap": ap,
"count_gt": len(point_anno),
"count_pred": num_pred,
}
self.aps.append(info)
prediction["instances"] = results
self._predictions.append(prediction)
self.counting_dict[img_id] = {"gt": len(point_anno), "pred": num_pred}
rel_err = abs(len(point_anno) - num_pred) / len(point_anno)
self.relative_error.append(rel_err)
def evaluate(self):
predictions = self._predictions
if len(predictions) == 0:
self._logger.warning("[COCOEvaluator] Did not receive valid predictions.")
return {}
self._results = OrderedDict()
self._eval_predictions(set(self._tasks), predictions)
# Copy so the caller can do whatever with results
cnt = 0
SAE = 0 # sum of absolute errors
SSE = 0 # sum of square errors
NAE = 0
SRE = 0
preds = []
gts = []
for ii, (img_id, anno) in enumerate(self.counting_dict.items()):
gt_cnt = anno["gt"]
pred_cnt = anno["pred"]
cnt = cnt + 1
err = abs(gt_cnt - pred_cnt)
preds.append(pred_cnt)
gts.append(gt_cnt)
SAE += err
SSE += err ** 2
NAE += err / gt_cnt
SRE += err ** 2 / gt_cnt
# print("Pred cnts ", preds)
# print("gts ", gts)
# print(max(gts))
print("number of images: {}".format(cnt))
print("MAE: {:.2f}".format(SAE / cnt))
print("RMSE: {:.2f}".format((SSE / cnt) ** 0.5))
print("NAE: {:.4f}".format(NAE / cnt))
print("SRE: {:.2f}".format((SRE / cnt) ** 0.5))
print("Detect results")
print(self._results)
output_path = osp.join(self._output_dir, "each_img_infor"+self.split+".pkl")
print("save to {}".format(output_path))
with open(output_path, "wb") as handle:
pkl.dump(self.aps, handle, protocol=pkl.HIGHEST_PROTOCOL)
print(10 * "**")
return copy.deepcopy(self._results)
def _eval_predictions(self, tasks, predictions):
"""
Evaluate predictions on the given tasks.
Fill self._results with the metrics of the tasks.
"""
self._logger.info("Preparing results for COCO format ...")
coco_results = list(itertools.chain(*[x["instances"] for x in predictions]))
if not self._do_evaluation:
self._logger.info("Annotations are not available for evaluation.")
return
self._logger.info("Evaluating predictions ...")
for task in sorted(tasks):
if self._image_set is not None:
coco_eval = (
_evaluate_predictions_on_coco(self._coco_api, coco_results, task, self._image_set)
if len(coco_results) > 0
else None # cocoapi does not handle empty results very well
)
else:
coco_eval = (
_evaluate_predictions_on_coco(self._coco_api, coco_results, task,)
if len(coco_results) > 0
else None # cocoapi does not handle empty results very well
)
res = self._derive_coco_results(
# coco_eval, task, class_names=self._metadata.get("thing_classes")
coco_eval,
task,
class_names=["fg",],
)
self._results[task] = res
def _derive_coco_results(self, coco_eval, iou_type, class_names=None):
"""
Derive the desired score numbers from summarized COCOeval.
Args:
coco_eval (None or COCOEval): None represents no predictions from model.
iou_type (str):
class_names (None or list[str]): if provided, will use it to predict
per-category AP.
Returns:
a dict of {metric name: score}
"""
metrics = {"bbox": ["AP", "AP50", "AP75", "APs", "APm", "APl"],}[iou_type]
if coco_eval is None:
self._logger.warn("No predictions from the model!")
return {metric: float("nan") for metric in metrics}
# the standard metrics
results = {
metric: float(coco_eval.stats[idx] * 100 if coco_eval.stats[idx] >= 0 else "nan")
for idx, metric in enumerate(metrics)
}
self._logger.info("Evaluation results for {}: \n".format(iou_type) + create_small_table(results))
if not np.isfinite(sum(results.values())):
self._logger.info("Some metrics cannot be computed and is shown as NaN.")
if class_names is None or len(class_names) <= 1:
return results
# Compute per-category AP
# from https://github.com/facebookresearch/Detectron/blob/a6a835f5b8208c45d0dce217ce9bbda915f44df7/detectron/datasets/json_dataset_evaluator.py#L222-L252 # noqa
precisions = coco_eval.eval["precision"]
# precision has dims (iou, recall, cls, area range, max dets)
assert len(class_names) == precisions.shape[2]
results_per_category = []
for idx, name in enumerate(class_names):
# area range index 0: all area ranges
# max dets index -1: typically 100 per image
precision = precisions[:, :, idx, 0, -1]
precision = precision[precision > -1]
ap = np.mean(precision) if precision.size else float("nan")
results_per_category.append(("{}".format(name), float(ap * 100)))
# tabulate it
N_COLS = min(6, len(results_per_category) * 2)
results_flatten = list(itertools.chain(*results_per_category))
results_2d = itertools.zip_longest(*[results_flatten[i::N_COLS] for i in range(N_COLS)])
table = tabulate(
results_2d, tablefmt="pipe", floatfmt=".3f", headers=["category", "AP"] * (N_COLS // 2), numalign="left",
)
self._logger.info("Per-category {} AP: \n".format(iou_type) + table)
results.update({"AP-" + name: ap for name, ap in results_per_category})
return results
def instances_to_coco_json(instances, img_id):
"""
Dump an "Instances" object to a COCO-format json that's used for evaluation.
Args:
instances (Instances):
img_id (int): the image id
Returns:
list[dict]: list of json annotations in COCO format.
"""
num_instance = len(instances)
if num_instance == 0:
return []
boxes = instances.pred_boxes.tensor.numpy()
boxes = BoxMode.convert(boxes, BoxMode.XYXY_ABS, BoxMode.XYWH_ABS)
boxes = boxes.tolist()
scores = instances.scores.tolist()
classes = instances.pred_classes.tolist()
results = []
for k in range(num_instance):
result = {
"image_id": img_id,
"category_id": classes[k],
"bbox": boxes[k],
"score": scores[k],
}
results.append(result)
return results
class COCOevalMaxDets(COCOeval):
"""
Modified version of COCOeval for evaluating AP with a custom
maxDets (by default for COCO, maxDets is 100)
"""
def summarize(self):
"""
Compute and display summary metrics for evaluation results given
a custom value for max_dets_per_image
"""
def _summarize(ap=1, iouThr=None, areaRng="all", maxDets=100000):
p = self.params
iStr = " {:<18} {} @[ IoU={:<9} | area={:>6s} | maxDets={:>3d} ] = {:0.3f}"
titleStr = "Average Precision" if ap == 1 else "Average Recall"
typeStr = "(AP)" if ap == 1 else "(AR)"
iouStr = (
"{:0.2f}:{:0.2f}".format(p.iouThrs[0], p.iouThrs[-1]) if iouThr is None else "{:0.2f}".format(iouThr)
)
aind = [i for i, aRng in enumerate(p.areaRngLbl) if aRng == areaRng]
mind = [i for i, mDet in enumerate(p.maxDets) if mDet == maxDets]
if ap == 1:
# dimension of precision: [TxRxKxAxM]
s = self.eval["precision"]
# IoU
if iouThr is not None:
t = np.where(iouThr == p.iouThrs)[0]
s = s[t]
s = s[:, :, :, aind, mind]
else:
# dimension of recall: [TxKxAxM]
s = self.eval["recall"]
if iouThr is not None:
t = np.where(iouThr == p.iouThrs)[0]
s = s[t]
s = s[:, :, aind, mind]
if len(s[s > -1]) == 0:
mean_s = -1
else:
mean_s = np.mean(s[s > -1])
print(iStr.format(titleStr, typeStr, iouStr, areaRng, maxDets, mean_s))
return mean_s
def _summarizeDets():
stats = np.zeros((12,))
# Evaluate AP using the custom limit on maximum detections per image
stats[0] = _summarize(1, maxDets=self.params.maxDets[2])
stats[1] = _summarize(1, iouThr=0.5, maxDets=self.params.maxDets[2])
stats[2] = _summarize(1, iouThr=0.75, maxDets=self.params.maxDets[2])
stats[3] = _summarize(1, areaRng="small", maxDets=self.params.maxDets[2])
stats[4] = _summarize(1, areaRng="medium", maxDets=self.params.maxDets[2])
stats[5] = _summarize(1, areaRng="large", maxDets=self.params.maxDets[2])
stats[6] = _summarize(0, maxDets=self.params.maxDets[0])
stats[7] = _summarize(0, maxDets=self.params.maxDets[1])
stats[8] = _summarize(0, maxDets=self.params.maxDets[2])
stats[9] = _summarize(0, areaRng="small", maxDets=self.params.maxDets[2])
stats[10] = _summarize(0, areaRng="medium", maxDets=self.params.maxDets[2])
stats[11] = _summarize(0, areaRng="large", maxDets=self.params.maxDets[2])
return stats
def _summarizeKps():
stats = np.zeros((10,))
stats[0] = _summarize(1, maxDets=3000)
stats[1] = _summarize(1, maxDets=3000, iouThr=0.5)
stats[2] = _summarize(1, maxDets=3000, iouThr=0.75)
stats[3] = _summarize(1, maxDets=3000, areaRng="medium")
stats[4] = _summarize(1, maxDets=3000, areaRng="large")
stats[5] = _summarize(0, maxDets=3000)
stats[6] = _summarize(0, maxDets=3000, iouThr=0.5)
stats[7] = _summarize(0, maxDets=3000, iouThr=0.75)
stats[8] = _summarize(0, maxDets=3000, areaRng="medium")
stats[9] = _summarize(0, maxDets=3000, areaRng="large")
return stats
if not self.eval:
raise Exception("Please run accumulate() first")
iouType = self.params.iouType
if iouType == "segm" or iouType == "bbox":
summarize = _summarizeDets
elif iouType == "keypoints":
summarize = _summarizeKps
self.stats = summarize()
def __str__(self):
self.summarize()
def _evaluate_predictions_on_coco(
coco_gt, coco_results, iou_type, img_ids=None, max_dets_per_image=None, kpt_oks_sigmas=None
):
"""
Evaluate the coco results using COCOEval API.
"""
assert len(coco_results) > 0
coco_dt = coco_gt.loadRes(coco_results)
# coco_eval = COCOeval(coco_gt, coco_dt, iou_type)
coco_eval = COCOevalMaxDets(coco_gt, coco_dt, iou_type)
if iou_type == "segm":
coco_results = copy.deepcopy(coco_results)
# When evaluating mask AP, if the results contain bbox, cocoapi will
# use the box area as the area of the instance, instead of the mask area.
# This leads to a different definition of small/medium/large.
# We remove the bbox field to let mask AP use mask area.
for c in coco_results:
c.pop("bbox", None)
# For COCO, the default max_dets_per_image is [1, 10, 100].
if max_dets_per_image is None:
max_dets_per_image = [10000, 10000, 10000]
else:
assert (
len(max_dets_per_image) >= 3
), "COCOeval requires maxDets (and max_dets_per_image) to have length at least 3"
# In the case that user supplies a custom input for max_dets_per_image,
# apply COCOevalMaxDets to evaluate AP with the custom input.
if max_dets_per_image[2] != 100:
coco_eval = COCOevalMaxDets(coco_gt, coco_dt, iou_type)
if iou_type != "keypoints":
coco_eval.params.maxDets = max_dets_per_image
if img_ids is not None:
coco_eval.params.imgIds = img_ids
coco_eval.evaluate()
coco_eval.accumulate()
coco_eval.summarize()
return coco_eval
def get_args_parser():
parser = argparse.ArgumentParser("GECO2", add_help=False)
parser.add_argument("--input_folder", required=True, type=str)
args = parser.parse_args()
return args
if __name__ == '__main__':
parser = argparse.ArgumentParser('GeCo', parents=[get_argparser()])
args = parser.parse_args()
input_folder = ''
dataset_folder = args.data_path
print("Evaluating on validation set")
gt_json_path = dataset_folder+"/annotations/instances_val.json"
pred_json_path = 'geco2_val.json'
counting_json_path = dataset_folder+"/annotation_FSC147_384.json"
output_dir = input_folder
coco_evaluator = COCOEvaluator(
gt_json_file=gt_json_path,
pred_json_file=pred_json_path,
counting_gt_json_path=counting_json_path,
output_dir=output_dir,
visualize_res=False,
split="val",
)
coco_evaluator.process()
coco_evaluator.evaluate()
print("Evaluating on test set")
gt_json_path = dataset_folder+"/annotations/instances_test.json"
pred_json_path = 'geco2_test.json'
counting_json_path = dataset_folder+"/annotation_FSC147_384.json"
output_dir = input_folder
coco_evaluator = COCOEvaluator(
gt_json_file=gt_json_path,
pred_json_file=pred_json_path,
counting_gt_json_path=counting_json_path,
output_dir=output_dir,
visualize_res=False,
split="test",
)
coco_evaluator.process()
coco_evaluator.evaluate() |