| |
| import contextlib |
| import copy |
| import io |
| import itertools |
| import json |
| import logging |
| import numpy as np |
| import os |
| import pickle |
| from collections import OrderedDict |
| import pycocotools.mask as mask_util |
| import torch |
| from pycocotools.coco import COCO |
| from pycocotools.cocoeval import COCOeval |
| from tabulate import tabulate |
|
|
| import detectron2.utils.comm as comm |
| from detectron2.config import CfgNode |
| from detectron2.data import MetadataCatalog |
| from detectron2.data.datasets.coco import convert_to_coco_json |
| from detectron2.structures import Boxes, BoxMode, pairwise_iou |
| from detectron2.utils.file_io import PathManager |
| from detectron2.utils.logger import create_small_table |
|
|
| from .evaluator import DatasetEvaluator |
|
|
| try: |
| from detectron2.evaluation.fast_eval_api import COCOeval_opt |
| except ImportError: |
| COCOeval_opt = COCOeval |
|
|
|
|
| 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. |
| The metrics range from 0 to 100 (instead of 0 to 1), where a -1 or NaN means |
| the metric cannot be computed (e.g. due to no predictions made). |
| |
| In addition to COCO, this evaluator is able to support any bounding box detection, |
| instance segmentation, or keypoint detection dataset. |
| """ |
|
|
| def __init__( |
| self, |
| dataset_name, |
| tasks=None, |
| distributed=True, |
| output_dir=None, |
| *, |
| max_dets_per_image=None, |
| use_fast_impl=True, |
| kpt_oks_sigmas=(), |
| allow_cached_coco=True, |
| ): |
| """ |
| 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. |
| tasks (tuple[str]): tasks that can be evaluated under the given |
| configuration. A task is one of "bbox", "segm", "keypoints". |
| By default, will infer this automatically from predictions. |
| distributed (True): if True, will collect results from all ranks and run evaluation |
| in the main process. |
| Otherwise, will only 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. "instances_predictions.pth" a file that can be loaded with `torch.load` and |
| contains all the results in the format they are produced by the model. |
| 2. "coco_instances_results.json" a json file in COCO's result format. |
| max_dets_per_image (int): limit on the maximum number of detections per image. |
| By default in COCO, this limit is to 100, but this can be customized |
| to be greater, as is needed in evaluation metrics AP fixed and AP pool |
| (see https://arxiv.org/pdf/2102.01066.pdf) |
| This doesn't affect keypoint evaluation. |
| use_fast_impl (bool): use a fast but **unofficial** implementation to compute AP. |
| Although the results should be very close to the official implementation in COCO |
| API, it is still recommended to compute results with the official API for use in |
| papers. The faster implementation also uses more RAM. |
| kpt_oks_sigmas (list[float]): The sigmas used to calculate keypoint OKS. |
| See http://cocodataset.org/#keypoints-eval |
| When empty, it will use the defaults in COCO. |
| Otherwise it should be the same length as ROI_KEYPOINT_HEAD.NUM_KEYPOINTS. |
| allow_cached_coco (bool): Whether to use cached coco json from previous validation |
| runs. You should set this to False if you need to use different validation data. |
| Defaults to True. |
| """ |
| self._logger = logging.getLogger(__name__) |
| self._distributed = distributed |
| self._output_dir = output_dir |
|
|
| if use_fast_impl and (COCOeval_opt is COCOeval): |
| self._logger.info("Fast COCO eval is not built. Falling back to official COCO eval.") |
| use_fast_impl = False |
| self._use_fast_impl = use_fast_impl |
|
|
| |
| |
| |
| |
| |
| if max_dets_per_image is None: |
| max_dets_per_image = [1, 10, 100] |
| else: |
| max_dets_per_image = [1, 10, max_dets_per_image] |
| self._max_dets_per_image = max_dets_per_image |
|
|
| if tasks is not None and isinstance(tasks, CfgNode): |
| kpt_oks_sigmas = ( |
| tasks.TEST.KEYPOINT_OKS_SIGMAS if not kpt_oks_sigmas else kpt_oks_sigmas |
| ) |
| self._logger.warn( |
| "COCO Evaluator instantiated using config, this is deprecated behavior." |
| " Please pass in explicit arguments instead." |
| ) |
| self._tasks = None |
| else: |
| self._tasks = tasks |
|
|
| self._cpu_device = torch.device("cpu") |
|
|
| self._metadata = MetadataCatalog.get(dataset_name) |
| if not hasattr(self._metadata, "json_file"): |
| if output_dir is None: |
| raise ValueError( |
| "output_dir must be provided to COCOEvaluator " |
| "for datasets not in COCO format." |
| ) |
| self._logger.info(f"Trying to convert '{dataset_name}' to COCO format ...") |
|
|
| cache_path = os.path.join(output_dir, f"{dataset_name}_coco_format.json") |
| self._metadata.json_file = cache_path |
| convert_to_coco_json(dataset_name, cache_path, allow_cached=allow_cached_coco) |
|
|
| json_file = PathManager.get_local_path(self._metadata.json_file) |
| with contextlib.redirect_stdout(io.StringIO()): |
| self._coco_api = COCO(json_file) |
|
|
| |
| |
| self._do_evaluation = "annotations" in self._coco_api.dataset |
| if self._do_evaluation: |
| self._kpt_oks_sigmas = kpt_oks_sigmas |
|
|
| def reset(self): |
| self._predictions = [] |
|
|
| def process(self, inputs, outputs): |
| """ |
| 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`. |
| """ |
| for input, output in zip(inputs, outputs): |
| prediction = {"image_id": input["image_id"]} |
|
|
| if "instances" in output: |
| instances = output["instances"].to(self._cpu_device) |
| prediction["instances"] = instances_to_coco_json(instances, input["image_id"]) |
| if "proposals" in output: |
| prediction["proposals"] = output["proposals"].to(self._cpu_device) |
| if len(prediction) > 1: |
| self._predictions.append(prediction) |
|
|
| def evaluate(self, img_ids=None): |
| """ |
| Args: |
| img_ids: a list of image IDs to evaluate on. Default to None for the whole dataset |
| """ |
| if self._distributed: |
| comm.synchronize() |
| predictions = comm.gather(self._predictions, dst=0) |
| predictions = list(itertools.chain(*predictions)) |
|
|
| if not comm.is_main_process(): |
| return {} |
| else: |
| predictions = self._predictions |
|
|
| if len(predictions) == 0: |
| self._logger.warning("[COCOEvaluator] Did not receive valid predictions.") |
| return {} |
|
|
| if self._output_dir: |
| PathManager.mkdirs(self._output_dir) |
| file_path = os.path.join(self._output_dir, "instances_predictions.pth") |
| with PathManager.open(file_path, "wb") as f: |
| torch.save(predictions, f) |
|
|
| self._results = OrderedDict() |
| if "proposals" in predictions[0]: |
| self._eval_box_proposals(predictions) |
| if "instances" in predictions[0]: |
| self._eval_predictions(predictions, img_ids=img_ids) |
| |
| return copy.deepcopy(self._results) |
|
|
| def _tasks_from_predictions(self, predictions): |
| """ |
| Get COCO API "tasks" (i.e. iou_type) from COCO-format predictions. |
| """ |
| tasks = {"bbox"} |
| for pred in predictions: |
| if "segmentation" in pred: |
| tasks.add("segm") |
| if "keypoints" in pred: |
| tasks.add("keypoints") |
| return sorted(tasks) |
|
|
| def _eval_predictions(self, predictions, img_ids=None): |
| """ |
| Evaluate predictions. 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])) |
| tasks = self._tasks or self._tasks_from_predictions(coco_results) |
|
|
| |
| if hasattr(self._metadata, "thing_dataset_id_to_contiguous_id"): |
| dataset_id_to_contiguous_id = self._metadata.thing_dataset_id_to_contiguous_id |
| all_contiguous_ids = list(dataset_id_to_contiguous_id.values()) |
| num_classes = len(all_contiguous_ids) |
| assert min(all_contiguous_ids) == 0 and max(all_contiguous_ids) == num_classes - 1 |
|
|
| reverse_id_mapping = {v: k for k, v in dataset_id_to_contiguous_id.items()} |
| for result in coco_results: |
| category_id = result["category_id"] |
| assert category_id < num_classes, ( |
| f"A prediction has class={category_id}, " |
| f"but the dataset only has {num_classes} classes and " |
| f"predicted class id should be in [0, {num_classes - 1}]." |
| ) |
| result["category_id"] = reverse_id_mapping[category_id] |
|
|
| if self._output_dir: |
| file_path = os.path.join(self._output_dir, "coco_instances_results.json") |
| self._logger.info("Saving results to {}".format(file_path)) |
| with PathManager.open(file_path, "w") as f: |
| f.write(json.dumps(coco_results)) |
| f.flush() |
|
|
| if not self._do_evaluation: |
| self._logger.info("Annotations are not available for evaluation.") |
| return |
|
|
| self._logger.info( |
| "Evaluating predictions with {} COCO API...".format( |
| "unofficial" if self._use_fast_impl else "official" |
| ) |
| ) |
| for task in sorted(tasks): |
| assert task in {"bbox", "segm", "keypoints"}, f"Got unknown task: {task}!" |
| coco_eval = ( |
| _evaluate_predictions_on_coco( |
| self._coco_api, |
| coco_results, |
| task, |
| kpt_oks_sigmas=self._kpt_oks_sigmas, |
| cocoeval_fn=COCOeval_opt if self._use_fast_impl else COCOeval, |
| img_ids=img_ids, |
| max_dets_per_image=self._max_dets_per_image, |
| ) |
| if len(coco_results) > 0 |
| else None |
| ) |
|
|
| res = self._derive_coco_results( |
| coco_eval, task, class_names=self._metadata.get("thing_classes") |
| ) |
| self._results[task] = res |
|
|
| def _eval_box_proposals(self, predictions): |
| """ |
| Evaluate the box proposals in predictions. |
| Fill self._results with the metrics for "box_proposals" task. |
| """ |
| if self._output_dir: |
| |
| |
| bbox_mode = BoxMode.XYXY_ABS.value |
| ids, boxes, objectness_logits = [], [], [] |
| for prediction in predictions: |
| ids.append(prediction["image_id"]) |
| boxes.append(prediction["proposals"].proposal_boxes.tensor.numpy()) |
| objectness_logits.append(prediction["proposals"].objectness_logits.numpy()) |
|
|
| proposal_data = { |
| "boxes": boxes, |
| "objectness_logits": objectness_logits, |
| "ids": ids, |
| "bbox_mode": bbox_mode, |
| } |
| with PathManager.open(os.path.join(self._output_dir, "box_proposals.pkl"), "wb") as f: |
| pickle.dump(proposal_data, f) |
|
|
| if not self._do_evaluation: |
| self._logger.info("Annotations are not available for evaluation.") |
| return |
|
|
| self._logger.info("Evaluating bbox proposals ...") |
| res = {} |
| areas = {"all": "", "small": "s", "medium": "m", "large": "l"} |
| for limit in [100, 1000]: |
| for area, suffix in areas.items(): |
| stats = _evaluate_box_proposals(predictions, self._coco_api, area=area, limit=limit) |
| key = "AR{}@{:d}".format(suffix, limit) |
| res[key] = float(stats["ar"].item() * 100) |
| self._logger.info("Proposal metrics: \n" + create_small_table(res)) |
| self._results["box_proposals"] = 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"], |
| "segm": ["AP", "AP50", "AP75", "APs", "APm", "APl"], |
| "keypoints": ["AP", "AP50", "AP75", "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} |
|
|
| |
| 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 |
| |
| |
| precisions = coco_eval.eval["precision"] |
| |
| assert len(class_names) == precisions.shape[2] |
|
|
| results_per_category = [] |
| for idx, name in enumerate(class_names): |
| |
| |
| 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))) |
|
|
| |
| 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() |
|
|
| has_mask = instances.has("pred_masks") |
| if has_mask: |
| |
| |
| rles = [ |
| mask_util.encode(np.array(mask[:, :, None], order="F", dtype="uint8"))[0] |
| for mask in instances.pred_masks |
| ] |
| for rle in rles: |
| |
| |
| |
| |
| rle["counts"] = rle["counts"].decode("utf-8") |
|
|
| has_keypoints = instances.has("pred_keypoints") |
| if has_keypoints: |
| keypoints = instances.pred_keypoints |
|
|
| results = [] |
| for k in range(num_instance): |
| result = { |
| "image_id": img_id, |
| "category_id": classes[k], |
| "bbox": boxes[k], |
| "score": scores[k], |
| } |
| if has_mask: |
| result["segmentation"] = rles[k] |
| if has_keypoints: |
| |
| |
| |
| |
| |
| keypoints[k][:, :2] -= 0.5 |
| result["keypoints"] = keypoints[k].flatten().tolist() |
| results.append(result) |
| return results |
|
|
|
|
| |
| |
| def _evaluate_box_proposals(dataset_predictions, coco_api, thresholds=None, area="all", limit=None): |
| """ |
| Evaluate detection proposal recall metrics. This function is a much |
| faster alternative to the official COCO API recall evaluation code. However, |
| it produces slightly different results. |
| """ |
| |
| |
| areas = { |
| "all": 0, |
| "small": 1, |
| "medium": 2, |
| "large": 3, |
| "96-128": 4, |
| "128-256": 5, |
| "256-512": 6, |
| "512-inf": 7, |
| } |
| area_ranges = [ |
| [0**2, 1e5**2], |
| [0**2, 32**2], |
| [32**2, 96**2], |
| [96**2, 1e5**2], |
| [96**2, 128**2], |
| [128**2, 256**2], |
| [256**2, 512**2], |
| [512**2, 1e5**2], |
| ] |
| assert area in areas, "Unknown area range: {}".format(area) |
| area_range = area_ranges[areas[area]] |
| gt_overlaps = [] |
| num_pos = 0 |
|
|
| for prediction_dict in dataset_predictions: |
| predictions = prediction_dict["proposals"] |
|
|
| |
| |
| inds = predictions.objectness_logits.sort(descending=True)[1] |
| predictions = predictions[inds] |
|
|
| ann_ids = coco_api.getAnnIds(imgIds=prediction_dict["image_id"]) |
| anno = coco_api.loadAnns(ann_ids) |
| gt_boxes = [ |
| BoxMode.convert(obj["bbox"], BoxMode.XYWH_ABS, BoxMode.XYXY_ABS) |
| for obj in anno |
| if obj["iscrowd"] == 0 |
| ] |
| gt_boxes = torch.as_tensor(gt_boxes).reshape(-1, 4) |
| gt_boxes = Boxes(gt_boxes) |
| gt_areas = torch.as_tensor([obj["area"] for obj in anno if obj["iscrowd"] == 0]) |
|
|
| if len(gt_boxes) == 0 or len(predictions) == 0: |
| continue |
|
|
| valid_gt_inds = (gt_areas >= area_range[0]) & (gt_areas <= area_range[1]) |
| gt_boxes = gt_boxes[valid_gt_inds] |
|
|
| num_pos += len(gt_boxes) |
|
|
| if len(gt_boxes) == 0: |
| continue |
|
|
| if limit is not None and len(predictions) > limit: |
| predictions = predictions[:limit] |
|
|
| overlaps = pairwise_iou(predictions.proposal_boxes, gt_boxes) |
|
|
| _gt_overlaps = torch.zeros(len(gt_boxes)) |
| for j in range(min(len(predictions), len(gt_boxes))): |
| |
| |
| max_overlaps, argmax_overlaps = overlaps.max(dim=0) |
|
|
| |
| gt_ovr, gt_ind = max_overlaps.max(dim=0) |
| assert gt_ovr >= 0 |
| |
| box_ind = argmax_overlaps[gt_ind] |
| |
| _gt_overlaps[j] = overlaps[box_ind, gt_ind] |
| assert _gt_overlaps[j] == gt_ovr |
| |
| overlaps[box_ind, :] = -1 |
| overlaps[:, gt_ind] = -1 |
|
|
| |
| gt_overlaps.append(_gt_overlaps) |
| gt_overlaps = ( |
| torch.cat(gt_overlaps, dim=0) if len(gt_overlaps) else torch.zeros(0, dtype=torch.float32) |
| ) |
| gt_overlaps, _ = torch.sort(gt_overlaps) |
|
|
| if thresholds is None: |
| step = 0.05 |
| thresholds = torch.arange(0.5, 0.95 + 1e-5, step, dtype=torch.float32) |
| recalls = torch.zeros_like(thresholds) |
| |
| for i, t in enumerate(thresholds): |
| recalls[i] = (gt_overlaps >= t).float().sum() / float(num_pos) |
| |
| ar = recalls.mean() |
| return { |
| "ar": ar, |
| "recalls": recalls, |
| "thresholds": thresholds, |
| "gt_overlaps": gt_overlaps, |
| "num_pos": num_pos, |
| } |
|
|
|
|
| def _evaluate_predictions_on_coco( |
| coco_gt, |
| coco_results, |
| iou_type, |
| kpt_oks_sigmas=None, |
| cocoeval_fn=COCOeval_opt, |
| img_ids=None, |
| max_dets_per_image=None, |
| ): |
| """ |
| Evaluate the coco results using COCOEval API. |
| """ |
| assert len(coco_results) > 0 |
|
|
| if iou_type == "segm": |
| coco_results = copy.deepcopy(coco_results) |
| |
| |
| |
| |
| for c in coco_results: |
| c.pop("bbox", None) |
|
|
| coco_dt = coco_gt.loadRes(coco_results) |
| coco_eval = cocoeval_fn(coco_gt, coco_dt, iou_type) |
| |
| if max_dets_per_image is None: |
| max_dets_per_image = [1, 10, 100] |
| else: |
| assert ( |
| len(max_dets_per_image) >= 3 |
| ), "COCOeval requires maxDets (and max_dets_per_image) to have length at least 3" |
| |
| |
| 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 |
|
|
| if iou_type == "keypoints": |
| |
| if kpt_oks_sigmas: |
| assert hasattr(coco_eval.params, "kpt_oks_sigmas"), "pycocotools is too old!" |
| coco_eval.params.kpt_oks_sigmas = np.array(kpt_oks_sigmas) |
| |
| |
| num_keypoints_dt = len(coco_results[0]["keypoints"]) // 3 |
| num_keypoints_gt = len(next(iter(coco_gt.anns.values()))["keypoints"]) // 3 |
| num_keypoints_oks = len(coco_eval.params.kpt_oks_sigmas) |
| assert num_keypoints_oks == num_keypoints_dt == num_keypoints_gt, ( |
| f"[COCOEvaluator] Prediction contain {num_keypoints_dt} keypoints. " |
| f"Ground truth contains {num_keypoints_gt} keypoints. " |
| f"The length of cfg.TEST.KEYPOINT_OKS_SIGMAS is {num_keypoints_oks}. " |
| "They have to agree with each other. For meaning of OKS, please refer to " |
| "http://cocodataset.org/#keypoints-eval." |
| ) |
|
|
| coco_eval.evaluate() |
| coco_eval.accumulate() |
| coco_eval.summarize() |
|
|
| return coco_eval |
|
|
|
|
| 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=100): |
| 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: |
| |
| s = self.eval["precision"] |
| |
| if iouThr is not None: |
| t = np.where(iouThr == p.iouThrs)[0] |
| s = s[t] |
| s = s[:, :, :, aind, mind] |
| else: |
| |
| 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,)) |
| |
| 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=20) |
| stats[1] = _summarize(1, maxDets=20, iouThr=0.5) |
| stats[2] = _summarize(1, maxDets=20, iouThr=0.75) |
| stats[3] = _summarize(1, maxDets=20, areaRng="medium") |
| stats[4] = _summarize(1, maxDets=20, areaRng="large") |
| stats[5] = _summarize(0, maxDets=20) |
| stats[6] = _summarize(0, maxDets=20, iouThr=0.5) |
| stats[7] = _summarize(0, maxDets=20, iouThr=0.75) |
| stats[8] = _summarize(0, maxDets=20, areaRng="medium") |
| stats[9] = _summarize(0, maxDets=20, 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() |
|
|