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| """object_detection_evaluation module. |
| |
| ObjectDetectionEvaluation is a class which manages ground truth information of a |
| object detection dataset, and computes frequently used detection metrics such as |
| Precision, Recall, CorLoc of the provided detection results. |
| It supports the following operations: |
| 1) Add ground truth information of images sequentially. |
| 2) Add detection result of images sequentially. |
| 3) Evaluate detection metrics on already inserted detection results. |
| 4) Write evaluation result into a pickle file for future processing or |
| visualization. |
| |
| Note: This module operates on numpy boxes and box lists. |
| """ |
|
|
| from abc import ABCMeta |
| from abc import abstractmethod |
| import collections |
| import logging |
| import unicodedata |
| import numpy as np |
| import tensorflow as tf |
|
|
| from object_detection.core import standard_fields |
| from object_detection.utils import label_map_util |
| from object_detection.utils import metrics |
| from object_detection.utils import per_image_evaluation |
|
|
|
|
| class DetectionEvaluator(object): |
| """Interface for object detection evalution classes. |
| |
| Example usage of the Evaluator: |
| ------------------------------ |
| evaluator = DetectionEvaluator(categories) |
| |
| # Detections and groundtruth for image 1. |
| evaluator.add_single_groundtruth_image_info(...) |
| evaluator.add_single_detected_image_info(...) |
| |
| # Detections and groundtruth for image 2. |
| evaluator.add_single_groundtruth_image_info(...) |
| evaluator.add_single_detected_image_info(...) |
| |
| metrics_dict = evaluator.evaluate() |
| """ |
| __metaclass__ = ABCMeta |
|
|
| def __init__(self, categories): |
| """Constructor. |
| |
| Args: |
| categories: A list of dicts, each of which has the following keys - |
| 'id': (required) an integer id uniquely identifying this category. |
| 'name': (required) string representing category name e.g., 'cat', 'dog'. |
| """ |
| self._categories = categories |
|
|
| @abstractmethod |
| def add_single_ground_truth_image_info(self, image_id, groundtruth_dict): |
| """Adds groundtruth for a single image to be used for evaluation. |
| |
| Args: |
| image_id: A unique string/integer identifier for the image. |
| groundtruth_dict: A dictionary of groundtruth numpy arrays required |
| for evaluations. |
| """ |
| pass |
|
|
| @abstractmethod |
| def add_single_detected_image_info(self, image_id, detections_dict): |
| """Adds detections for a single image to be used for evaluation. |
| |
| Args: |
| image_id: A unique string/integer identifier for the image. |
| detections_dict: A dictionary of detection numpy arrays required |
| for evaluation. |
| """ |
| pass |
|
|
| def get_estimator_eval_metric_ops(self, eval_dict): |
| """Returns dict of metrics to use with `tf.estimator.EstimatorSpec`. |
| |
| Note that this must only be implemented if performing evaluation with a |
| `tf.estimator.Estimator`. |
| |
| Args: |
| eval_dict: A dictionary that holds tensors for evaluating an object |
| detection model, returned from |
| eval_util.result_dict_for_single_example(). |
| |
| Returns: |
| A dictionary of metric names to tuple of value_op and update_op that can |
| be used as eval metric ops in `tf.estimator.EstimatorSpec`. |
| """ |
| pass |
|
|
| @abstractmethod |
| def evaluate(self): |
| """Evaluates detections and returns a dictionary of metrics.""" |
| pass |
|
|
| @abstractmethod |
| def clear(self): |
| """Clears the state to prepare for a fresh evaluation.""" |
| pass |
|
|
|
|
| class ObjectDetectionEvaluator(DetectionEvaluator): |
| """A class to evaluate detections.""" |
|
|
| def __init__(self, |
| categories, |
| matching_iou_threshold=0.5, |
| evaluate_corlocs=False, |
| evaluate_precision_recall=False, |
| metric_prefix=None, |
| use_weighted_mean_ap=False, |
| evaluate_masks=False, |
| group_of_weight=0.0): |
| """Constructor. |
| |
| Args: |
| categories: A list of dicts, each of which has the following keys - |
| 'id': (required) an integer id uniquely identifying this category. |
| 'name': (required) string representing category name e.g., 'cat', 'dog'. |
| matching_iou_threshold: IOU threshold to use for matching groundtruth |
| boxes to detection boxes. |
| evaluate_corlocs: (optional) boolean which determines if corloc scores |
| are to be returned or not. |
| evaluate_precision_recall: (optional) boolean which determines if |
| precision and recall values are to be returned or not. |
| metric_prefix: (optional) string prefix for metric name; if None, no |
| prefix is used. |
| use_weighted_mean_ap: (optional) boolean which determines if the mean |
| average precision is computed directly from the scores and tp_fp_labels |
| of all classes. |
| evaluate_masks: If False, evaluation will be performed based on boxes. |
| If True, mask evaluation will be performed instead. |
| group_of_weight: Weight of group-of boxes.If set to 0, detections of the |
| correct class within a group-of box are ignored. If weight is > 0, then |
| if at least one detection falls within a group-of box with |
| matching_iou_threshold, weight group_of_weight is added to true |
| positives. Consequently, if no detection falls within a group-of box, |
| weight group_of_weight is added to false negatives. |
| |
| Raises: |
| ValueError: If the category ids are not 1-indexed. |
| """ |
| super(ObjectDetectionEvaluator, self).__init__(categories) |
| self._num_classes = max([cat['id'] for cat in categories]) |
| if min(cat['id'] for cat in categories) < 1: |
| raise ValueError('Classes should be 1-indexed.') |
| self._matching_iou_threshold = matching_iou_threshold |
| self._use_weighted_mean_ap = use_weighted_mean_ap |
| self._label_id_offset = 1 |
| self._evaluate_masks = evaluate_masks |
| self._group_of_weight = group_of_weight |
| self._evaluation = ObjectDetectionEvaluation( |
| num_groundtruth_classes=self._num_classes, |
| matching_iou_threshold=self._matching_iou_threshold, |
| use_weighted_mean_ap=self._use_weighted_mean_ap, |
| label_id_offset=self._label_id_offset, |
| group_of_weight=self._group_of_weight) |
| self._image_ids = set([]) |
| self._evaluate_corlocs = evaluate_corlocs |
| self._evaluate_precision_recall = evaluate_precision_recall |
| self._metric_prefix = (metric_prefix + '_') if metric_prefix else '' |
| self._expected_keys = set([ |
| standard_fields.InputDataFields.key, |
| standard_fields.InputDataFields.groundtruth_boxes, |
| standard_fields.InputDataFields.groundtruth_classes, |
| standard_fields.InputDataFields.groundtruth_difficult, |
| standard_fields.InputDataFields.groundtruth_instance_masks, |
| standard_fields.DetectionResultFields.detection_boxes, |
| standard_fields.DetectionResultFields.detection_scores, |
| standard_fields.DetectionResultFields.detection_classes, |
| standard_fields.DetectionResultFields.detection_masks |
| ]) |
| self._build_metric_names() |
|
|
| def _build_metric_names(self): |
| """Builds a list with metric names.""" |
|
|
| self._metric_names = [ |
| self._metric_prefix + 'Precision/mAP@{}IOU'.format( |
| self._matching_iou_threshold) |
| ] |
| if self._evaluate_corlocs: |
| self._metric_names.append( |
| self._metric_prefix + |
| 'Precision/meanCorLoc@{}IOU'.format(self._matching_iou_threshold)) |
|
|
| category_index = label_map_util.create_category_index(self._categories) |
| for idx in range(self._num_classes): |
| if idx + self._label_id_offset in category_index: |
| category_name = category_index[idx + self._label_id_offset]['name'] |
| try: |
| category_name = unicode(category_name, 'utf-8') |
| except TypeError: |
| pass |
| category_name = unicodedata.normalize('NFKD', category_name).encode( |
| 'ascii', 'ignore') |
| self._metric_names.append( |
| self._metric_prefix + 'PerformanceByCategory/AP@{}IOU/{}'.format( |
| self._matching_iou_threshold, category_name)) |
| if self._evaluate_corlocs: |
| self._metric_names.append( |
| self._metric_prefix + 'PerformanceByCategory/CorLoc@{}IOU/{}' |
| .format(self._matching_iou_threshold, category_name)) |
|
|
| def add_single_ground_truth_image_info(self, image_id, groundtruth_dict): |
| """Adds groundtruth for a single image to be used for evaluation. |
| |
| Args: |
| image_id: A unique string/integer identifier for the image. |
| groundtruth_dict: A dictionary containing - |
| standard_fields.InputDataFields.groundtruth_boxes: float32 numpy array |
| of shape [num_boxes, 4] containing `num_boxes` groundtruth boxes of |
| the format [ymin, xmin, ymax, xmax] in absolute image coordinates. |
| standard_fields.InputDataFields.groundtruth_classes: integer numpy array |
| of shape [num_boxes] containing 1-indexed groundtruth classes for the |
| boxes. |
| standard_fields.InputDataFields.groundtruth_difficult: Optional length |
| M numpy boolean array denoting whether a ground truth box is a |
| difficult instance or not. This field is optional to support the case |
| that no boxes are difficult. |
| standard_fields.InputDataFields.groundtruth_instance_masks: Optional |
| numpy array of shape [num_boxes, height, width] with values in {0, 1}. |
| |
| Raises: |
| ValueError: On adding groundtruth for an image more than once. Will also |
| raise error if instance masks are not in groundtruth dictionary. |
| """ |
| if image_id in self._image_ids: |
| raise ValueError('Image with id {} already added.'.format(image_id)) |
|
|
| groundtruth_classes = ( |
| groundtruth_dict[standard_fields.InputDataFields.groundtruth_classes] - |
| self._label_id_offset) |
| |
| |
| |
| if (standard_fields.InputDataFields.groundtruth_difficult in |
| groundtruth_dict.keys() and |
| (groundtruth_dict[standard_fields.InputDataFields.groundtruth_difficult] |
| .size or not groundtruth_classes.size)): |
| groundtruth_difficult = groundtruth_dict[ |
| standard_fields.InputDataFields.groundtruth_difficult] |
| else: |
| groundtruth_difficult = None |
| if not len(self._image_ids) % 1000: |
| logging.warn( |
| 'image %s does not have groundtruth difficult flag specified', |
| image_id) |
| groundtruth_masks = None |
| if self._evaluate_masks: |
| if (standard_fields.InputDataFields.groundtruth_instance_masks not in |
| groundtruth_dict): |
| raise ValueError('Instance masks not in groundtruth dictionary.') |
| groundtruth_masks = groundtruth_dict[ |
| standard_fields.InputDataFields.groundtruth_instance_masks] |
| self._evaluation.add_single_ground_truth_image_info( |
| image_key=image_id, |
| groundtruth_boxes=groundtruth_dict[ |
| standard_fields.InputDataFields.groundtruth_boxes], |
| groundtruth_class_labels=groundtruth_classes, |
| groundtruth_is_difficult_list=groundtruth_difficult, |
| groundtruth_masks=groundtruth_masks) |
| self._image_ids.update([image_id]) |
|
|
| def add_single_detected_image_info(self, image_id, detections_dict): |
| """Adds detections for a single image to be used for evaluation. |
| |
| Args: |
| image_id: A unique string/integer identifier for the image. |
| detections_dict: A dictionary containing - |
| standard_fields.DetectionResultFields.detection_boxes: float32 numpy |
| array of shape [num_boxes, 4] containing `num_boxes` detection boxes |
| of the format [ymin, xmin, ymax, xmax] in absolute image coordinates. |
| standard_fields.DetectionResultFields.detection_scores: float32 numpy |
| array of shape [num_boxes] containing detection scores for the boxes. |
| standard_fields.DetectionResultFields.detection_classes: integer numpy |
| array of shape [num_boxes] containing 1-indexed detection classes for |
| the boxes. |
| standard_fields.DetectionResultFields.detection_masks: uint8 numpy |
| array of shape [num_boxes, height, width] containing `num_boxes` masks |
| of values ranging between 0 and 1. |
| |
| Raises: |
| ValueError: If detection masks are not in detections dictionary. |
| """ |
| detection_classes = ( |
| detections_dict[standard_fields.DetectionResultFields.detection_classes] |
| - self._label_id_offset) |
| detection_masks = None |
| if self._evaluate_masks: |
| if (standard_fields.DetectionResultFields.detection_masks not in |
| detections_dict): |
| raise ValueError('Detection masks not in detections dictionary.') |
| detection_masks = detections_dict[ |
| standard_fields.DetectionResultFields.detection_masks] |
| self._evaluation.add_single_detected_image_info( |
| image_key=image_id, |
| detected_boxes=detections_dict[ |
| standard_fields.DetectionResultFields.detection_boxes], |
| detected_scores=detections_dict[ |
| standard_fields.DetectionResultFields.detection_scores], |
| detected_class_labels=detection_classes, |
| detected_masks=detection_masks) |
|
|
| def evaluate(self): |
| """Compute evaluation result. |
| |
| Returns: |
| A dictionary of metrics with the following fields - |
| |
| 1. summary_metrics: |
| '<prefix if not empty>_Precision/mAP@<matching_iou_threshold>IOU': mean |
| average precision at the specified IOU threshold. |
| |
| 2. per_category_ap: category specific results with keys of the form |
| '<prefix if not empty>_PerformanceByCategory/ |
| mAP@<matching_iou_threshold>IOU/category'. |
| """ |
| (per_class_ap, mean_ap, per_class_precision, per_class_recall, |
| per_class_corloc, mean_corloc) = ( |
| self._evaluation.evaluate()) |
| pascal_metrics = {self._metric_names[0]: mean_ap} |
| if self._evaluate_corlocs: |
| pascal_metrics[self._metric_names[1]] = mean_corloc |
| category_index = label_map_util.create_category_index(self._categories) |
| for idx in range(per_class_ap.size): |
| if idx + self._label_id_offset in category_index: |
| category_name = category_index[idx + self._label_id_offset]['name'] |
| try: |
| category_name = unicode(category_name, 'utf-8') |
| except TypeError: |
| pass |
| category_name = unicodedata.normalize( |
| 'NFKD', category_name).encode('ascii', 'ignore') |
| display_name = ( |
| self._metric_prefix + 'PerformanceByCategory/AP@{}IOU/{}'.format( |
| self._matching_iou_threshold, category_name)) |
| pascal_metrics[display_name] = per_class_ap[idx] |
|
|
| |
| if self._evaluate_precision_recall: |
| display_name = ( |
| self._metric_prefix + |
| 'PerformanceByCategory/Precision@{}IOU/{}'.format( |
| self._matching_iou_threshold, category_name)) |
| pascal_metrics[display_name] = per_class_precision[idx] |
| display_name = ( |
| self._metric_prefix + |
| 'PerformanceByCategory/Recall@{}IOU/{}'.format( |
| self._matching_iou_threshold, category_name)) |
| pascal_metrics[display_name] = per_class_recall[idx] |
|
|
| |
| if self._evaluate_corlocs: |
| display_name = ( |
| self._metric_prefix + 'PerformanceByCategory/CorLoc@{}IOU/{}' |
| .format(self._matching_iou_threshold, category_name)) |
| pascal_metrics[display_name] = per_class_corloc[idx] |
|
|
| return pascal_metrics |
|
|
| def clear(self): |
| """Clears the state to prepare for a fresh evaluation.""" |
| self._evaluation = ObjectDetectionEvaluation( |
| num_groundtruth_classes=self._num_classes, |
| matching_iou_threshold=self._matching_iou_threshold, |
| use_weighted_mean_ap=self._use_weighted_mean_ap, |
| label_id_offset=self._label_id_offset) |
| self._image_ids.clear() |
|
|
| def get_estimator_eval_metric_ops(self, eval_dict): |
| """Returns dict of metrics to use with `tf.estimator.EstimatorSpec`. |
| |
| Note that this must only be implemented if performing evaluation with a |
| `tf.estimator.Estimator`. |
| |
| Args: |
| eval_dict: A dictionary that holds tensors for evaluating an object |
| detection model, returned from |
| eval_util.result_dict_for_single_example(). It must contain |
| standard_fields.InputDataFields.key. |
| |
| Returns: |
| A dictionary of metric names to tuple of value_op and update_op that can |
| be used as eval metric ops in `tf.estimator.EstimatorSpec`. |
| """ |
| |
| eval_dict_filtered = dict() |
| for key, value in eval_dict.items(): |
| if key in self._expected_keys: |
| eval_dict_filtered[key] = value |
|
|
| eval_dict_keys = eval_dict_filtered.keys() |
|
|
| def update_op(image_id, *eval_dict_batched_as_list): |
| """Update operation that adds batch of images to ObjectDetectionEvaluator. |
| |
| Args: |
| image_id: image id (single id or an array) |
| *eval_dict_batched_as_list: the values of the dictionary of tensors. |
| """ |
| if np.isscalar(image_id): |
| single_example_dict = dict( |
| zip(eval_dict_keys, eval_dict_batched_as_list)) |
| self.add_single_ground_truth_image_info(image_id, single_example_dict) |
| self.add_single_detected_image_info(image_id, single_example_dict) |
| else: |
| for unzipped_tuple in zip(*eval_dict_batched_as_list): |
| single_example_dict = dict(zip(eval_dict_keys, unzipped_tuple)) |
| image_id = single_example_dict[standard_fields.InputDataFields.key] |
| self.add_single_ground_truth_image_info(image_id, single_example_dict) |
| self.add_single_detected_image_info(image_id, single_example_dict) |
|
|
| args = [eval_dict_filtered[standard_fields.InputDataFields.key]] |
| args.extend(eval_dict_filtered.values()) |
| update_op = tf.py_func(update_op, args, []) |
|
|
| def first_value_func(): |
| self._metrics = self.evaluate() |
| self.clear() |
| return np.float32(self._metrics[self._metric_names[0]]) |
|
|
| def value_func_factory(metric_name): |
|
|
| def value_func(): |
| return np.float32(self._metrics[metric_name]) |
|
|
| return value_func |
|
|
| |
| first_value_op = tf.py_func(first_value_func, [], tf.float32) |
| eval_metric_ops = {self._metric_names[0]: (first_value_op, update_op)} |
| with tf.control_dependencies([first_value_op]): |
| for metric_name in self._metric_names[1:]: |
| eval_metric_ops[metric_name] = (tf.py_func( |
| value_func_factory(metric_name), [], np.float32), update_op) |
| return eval_metric_ops |
|
|
|
|
| class PascalDetectionEvaluator(ObjectDetectionEvaluator): |
| """A class to evaluate detections using PASCAL metrics.""" |
|
|
| def __init__(self, categories, matching_iou_threshold=0.5): |
| super(PascalDetectionEvaluator, self).__init__( |
| categories, |
| matching_iou_threshold=matching_iou_threshold, |
| evaluate_corlocs=False, |
| metric_prefix='PascalBoxes', |
| use_weighted_mean_ap=False) |
|
|
|
|
| class WeightedPascalDetectionEvaluator(ObjectDetectionEvaluator): |
| """A class to evaluate detections using weighted PASCAL metrics. |
| |
| Weighted PASCAL metrics computes the mean average precision as the average |
| precision given the scores and tp_fp_labels of all classes. In comparison, |
| PASCAL metrics computes the mean average precision as the mean of the |
| per-class average precisions. |
| |
| This definition is very similar to the mean of the per-class average |
| precisions weighted by class frequency. However, they are typically not the |
| same as the average precision is not a linear function of the scores and |
| tp_fp_labels. |
| """ |
|
|
| def __init__(self, categories, matching_iou_threshold=0.5): |
| super(WeightedPascalDetectionEvaluator, self).__init__( |
| categories, |
| matching_iou_threshold=matching_iou_threshold, |
| evaluate_corlocs=False, |
| metric_prefix='WeightedPascalBoxes', |
| use_weighted_mean_ap=True) |
|
|
|
|
| class PascalInstanceSegmentationEvaluator(ObjectDetectionEvaluator): |
| """A class to evaluate instance masks using PASCAL metrics.""" |
|
|
| def __init__(self, categories, matching_iou_threshold=0.5): |
| super(PascalInstanceSegmentationEvaluator, self).__init__( |
| categories, |
| matching_iou_threshold=matching_iou_threshold, |
| evaluate_corlocs=False, |
| metric_prefix='PascalMasks', |
| use_weighted_mean_ap=False, |
| evaluate_masks=True) |
|
|
|
|
| class WeightedPascalInstanceSegmentationEvaluator(ObjectDetectionEvaluator): |
| """A class to evaluate instance masks using weighted PASCAL metrics. |
| |
| Weighted PASCAL metrics computes the mean average precision as the average |
| precision given the scores and tp_fp_labels of all classes. In comparison, |
| PASCAL metrics computes the mean average precision as the mean of the |
| per-class average precisions. |
| |
| This definition is very similar to the mean of the per-class average |
| precisions weighted by class frequency. However, they are typically not the |
| same as the average precision is not a linear function of the scores and |
| tp_fp_labels. |
| """ |
|
|
| def __init__(self, categories, matching_iou_threshold=0.5): |
| super(WeightedPascalInstanceSegmentationEvaluator, self).__init__( |
| categories, |
| matching_iou_threshold=matching_iou_threshold, |
| evaluate_corlocs=False, |
| metric_prefix='WeightedPascalMasks', |
| use_weighted_mean_ap=True, |
| evaluate_masks=True) |
|
|
|
|
| class OpenImagesDetectionEvaluator(ObjectDetectionEvaluator): |
| """A class to evaluate detections using Open Images V2 metrics. |
| |
| Open Images V2 introduce group_of type of bounding boxes and this metric |
| handles those boxes appropriately. |
| """ |
|
|
| def __init__(self, |
| categories, |
| matching_iou_threshold=0.5, |
| evaluate_corlocs=False, |
| metric_prefix='OpenImagesV2', |
| group_of_weight=0.0): |
| """Constructor. |
| |
| Args: |
| categories: A list of dicts, each of which has the following keys - |
| 'id': (required) an integer id uniquely identifying this category. |
| 'name': (required) string representing category name e.g., 'cat', 'dog'. |
| matching_iou_threshold: IOU threshold to use for matching groundtruth |
| boxes to detection boxes. |
| evaluate_corlocs: if True, additionally evaluates and returns CorLoc. |
| metric_prefix: Prefix name of the metric. |
| group_of_weight: Weight of the group-of bounding box. If set to 0 (default |
| for Open Images V2 detection protocol), detections of the correct class |
| within a group-of box are ignored. If weight is > 0, then if at least |
| one detection falls within a group-of box with matching_iou_threshold, |
| weight group_of_weight is added to true positives. Consequently, if no |
| detection falls within a group-of box, weight group_of_weight is added |
| to false negatives. |
| """ |
| super(OpenImagesDetectionEvaluator, self).__init__( |
| categories, |
| matching_iou_threshold, |
| evaluate_corlocs, |
| metric_prefix=metric_prefix, |
| group_of_weight=group_of_weight) |
| self._expected_keys = set([ |
| standard_fields.InputDataFields.key, |
| standard_fields.InputDataFields.groundtruth_boxes, |
| standard_fields.InputDataFields.groundtruth_classes, |
| standard_fields.InputDataFields.groundtruth_group_of, |
| standard_fields.DetectionResultFields.detection_boxes, |
| standard_fields.DetectionResultFields.detection_scores, |
| standard_fields.DetectionResultFields.detection_classes, |
| ]) |
|
|
| def add_single_ground_truth_image_info(self, image_id, groundtruth_dict): |
| """Adds groundtruth for a single image to be used for evaluation. |
| |
| Args: |
| image_id: A unique string/integer identifier for the image. |
| groundtruth_dict: A dictionary containing - |
| standard_fields.InputDataFields.groundtruth_boxes: float32 numpy array |
| of shape [num_boxes, 4] containing `num_boxes` groundtruth boxes of |
| the format [ymin, xmin, ymax, xmax] in absolute image coordinates. |
| standard_fields.InputDataFields.groundtruth_classes: integer numpy array |
| of shape [num_boxes] containing 1-indexed groundtruth classes for the |
| boxes. |
| standard_fields.InputDataFields.groundtruth_group_of: Optional length |
| M numpy boolean array denoting whether a groundtruth box contains a |
| group of instances. |
| |
| Raises: |
| ValueError: On adding groundtruth for an image more than once. |
| """ |
| if image_id in self._image_ids: |
| raise ValueError('Image with id {} already added.'.format(image_id)) |
|
|
| groundtruth_classes = ( |
| groundtruth_dict[standard_fields.InputDataFields.groundtruth_classes] - |
| self._label_id_offset) |
| |
| |
| |
| if (standard_fields.InputDataFields.groundtruth_group_of in |
| groundtruth_dict.keys() and |
| (groundtruth_dict[standard_fields.InputDataFields.groundtruth_group_of] |
| .size or not groundtruth_classes.size)): |
| groundtruth_group_of = groundtruth_dict[ |
| standard_fields.InputDataFields.groundtruth_group_of] |
| else: |
| groundtruth_group_of = None |
| if not len(self._image_ids) % 1000: |
| logging.warn( |
| 'image %s does not have groundtruth group_of flag specified', |
| image_id) |
| self._evaluation.add_single_ground_truth_image_info( |
| image_id, |
| groundtruth_dict[standard_fields.InputDataFields.groundtruth_boxes], |
| groundtruth_classes, |
| groundtruth_is_difficult_list=None, |
| groundtruth_is_group_of_list=groundtruth_group_of) |
| self._image_ids.update([image_id]) |
|
|
|
|
| class OpenImagesDetectionChallengeEvaluator(OpenImagesDetectionEvaluator): |
| """A class implements Open Images Challenge Detection metrics. |
| |
| Open Images Challenge Detection metric has two major changes in comparison |
| with Open Images V2 detection metric: |
| - a custom weight might be specified for detecting an object contained in |
| a group-of box. |
| - verified image-level labels should be explicitelly provided for |
| evaluation: in case in image has neither positive nor negative image level |
| label of class c, all detections of this class on this image will be |
| ignored. |
| """ |
|
|
| def __init__(self, |
| categories, |
| matching_iou_threshold=0.5, |
| evaluate_corlocs=False, |
| group_of_weight=1.0): |
| """Constructor. |
| |
| Args: |
| categories: A list of dicts, each of which has the following keys - |
| 'id': (required) an integer id uniquely identifying this category. |
| 'name': (required) string representing category name e.g., 'cat', 'dog'. |
| matching_iou_threshold: IOU threshold to use for matching groundtruth |
| boxes to detection boxes. |
| evaluate_corlocs: if True, additionally evaluates and returns CorLoc. |
| group_of_weight: weight of a group-of box. If set to 0, detections of the |
| correct class within a group-of box are ignored. If weight is > 0 |
| (default for Open Images Detection Challenge 2018), then if at least one |
| detection falls within a group-of box with matching_iou_threshold, |
| weight group_of_weight is added to true positives. Consequently, if no |
| detection falls within a group-of box, weight group_of_weight is added |
| to false negatives. |
| """ |
| super(OpenImagesDetectionChallengeEvaluator, self).__init__( |
| categories, |
| matching_iou_threshold, |
| evaluate_corlocs, |
| metric_prefix='OpenImagesChallenge2018', |
| group_of_weight=group_of_weight) |
|
|
| self._evaluatable_labels = {} |
| self._expected_keys = set([ |
| standard_fields.InputDataFields.key, |
| standard_fields.InputDataFields.groundtruth_boxes, |
| standard_fields.InputDataFields.groundtruth_classes, |
| standard_fields.InputDataFields.groundtruth_group_of, |
| standard_fields.InputDataFields.groundtruth_image_classes, |
| standard_fields.DetectionResultFields.detection_boxes, |
| standard_fields.DetectionResultFields.detection_scores, |
| standard_fields.DetectionResultFields.detection_classes, |
| ]) |
|
|
| def add_single_ground_truth_image_info(self, image_id, groundtruth_dict): |
| """Adds groundtruth for a single image to be used for evaluation. |
| |
| Args: |
| image_id: A unique string/integer identifier for the image. |
| groundtruth_dict: A dictionary containing - |
| standard_fields.InputDataFields.groundtruth_boxes: float32 numpy array |
| of shape [num_boxes, 4] containing `num_boxes` groundtruth boxes of |
| the format [ymin, xmin, ymax, xmax] in absolute image coordinates. |
| standard_fields.InputDataFields.groundtruth_classes: integer numpy array |
| of shape [num_boxes] containing 1-indexed groundtruth classes for the |
| boxes. |
| standard_fields.InputDataFields.groundtruth_image_classes: integer 1D |
| numpy array containing all classes for which labels are verified. |
| standard_fields.InputDataFields.groundtruth_group_of: Optional length |
| M numpy boolean array denoting whether a groundtruth box contains a |
| group of instances. |
| |
| Raises: |
| ValueError: On adding groundtruth for an image more than once. |
| """ |
| super(OpenImagesDetectionChallengeEvaluator, |
| self).add_single_ground_truth_image_info(image_id, groundtruth_dict) |
| groundtruth_classes = ( |
| groundtruth_dict[standard_fields.InputDataFields.groundtruth_classes] - |
| self._label_id_offset) |
| self._evaluatable_labels[image_id] = np.unique( |
| np.concatenate(((groundtruth_dict.get( |
| standard_fields.InputDataFields.groundtruth_image_classes, |
| np.array([], dtype=int)) - self._label_id_offset), |
| groundtruth_classes))) |
|
|
| def add_single_detected_image_info(self, image_id, detections_dict): |
| """Adds detections for a single image to be used for evaluation. |
| |
| Args: |
| image_id: A unique string/integer identifier for the image. |
| detections_dict: A dictionary containing - |
| standard_fields.DetectionResultFields.detection_boxes: float32 numpy |
| array of shape [num_boxes, 4] containing `num_boxes` detection boxes |
| of the format [ymin, xmin, ymax, xmax] in absolute image coordinates. |
| standard_fields.DetectionResultFields.detection_scores: float32 numpy |
| array of shape [num_boxes] containing detection scores for the boxes. |
| standard_fields.DetectionResultFields.detection_classes: integer numpy |
| array of shape [num_boxes] containing 1-indexed detection classes for |
| the boxes. |
| |
| Raises: |
| ValueError: If detection masks are not in detections dictionary. |
| """ |
| if image_id not in self._image_ids: |
| |
| |
| self._image_ids.update([image_id]) |
| self._evaluatable_labels[image_id] = np.array([]) |
|
|
| detection_classes = ( |
| detections_dict[standard_fields.DetectionResultFields.detection_classes] |
| - self._label_id_offset) |
| allowed_classes = np.where( |
| np.isin(detection_classes, self._evaluatable_labels[image_id])) |
| detection_classes = detection_classes[allowed_classes] |
| detected_boxes = detections_dict[ |
| standard_fields.DetectionResultFields.detection_boxes][allowed_classes] |
| detected_scores = detections_dict[ |
| standard_fields.DetectionResultFields.detection_scores][allowed_classes] |
|
|
| self._evaluation.add_single_detected_image_info( |
| image_key=image_id, |
| detected_boxes=detected_boxes, |
| detected_scores=detected_scores, |
| detected_class_labels=detection_classes) |
|
|
| def clear(self): |
| """Clears stored data.""" |
|
|
| super(OpenImagesDetectionChallengeEvaluator, self).clear() |
| self._evaluatable_labels.clear() |
|
|
|
|
| ObjectDetectionEvalMetrics = collections.namedtuple( |
| 'ObjectDetectionEvalMetrics', [ |
| 'average_precisions', 'mean_ap', 'precisions', 'recalls', 'corlocs', |
| 'mean_corloc' |
| ]) |
|
|
|
|
| class ObjectDetectionEvaluation(object): |
| """Internal implementation of Pascal object detection metrics.""" |
|
|
| def __init__(self, |
| num_groundtruth_classes, |
| matching_iou_threshold=0.5, |
| nms_iou_threshold=1.0, |
| nms_max_output_boxes=10000, |
| use_weighted_mean_ap=False, |
| label_id_offset=0, |
| group_of_weight=0.0, |
| per_image_eval_class=per_image_evaluation.PerImageEvaluation): |
| """Constructor. |
| |
| Args: |
| num_groundtruth_classes: Number of ground-truth classes. |
| matching_iou_threshold: IOU threshold used for matching detected boxes |
| to ground-truth boxes. |
| nms_iou_threshold: IOU threshold used for non-maximum suppression. |
| nms_max_output_boxes: Maximum number of boxes returned by non-maximum |
| suppression. |
| use_weighted_mean_ap: (optional) boolean which determines if the mean |
| average precision is computed directly from the scores and tp_fp_labels |
| of all classes. |
| label_id_offset: The label id offset. |
| group_of_weight: Weight of group-of boxes.If set to 0, detections of the |
| correct class within a group-of box are ignored. If weight is > 0, then |
| if at least one detection falls within a group-of box with |
| matching_iou_threshold, weight group_of_weight is added to true |
| positives. Consequently, if no detection falls within a group-of box, |
| weight group_of_weight is added to false negatives. |
| per_image_eval_class: The class that contains functions for computing |
| per image metrics. |
| |
| Raises: |
| ValueError: if num_groundtruth_classes is smaller than 1. |
| """ |
| if num_groundtruth_classes < 1: |
| raise ValueError('Need at least 1 groundtruth class for evaluation.') |
|
|
| self.per_image_eval = per_image_eval_class( |
| num_groundtruth_classes=num_groundtruth_classes, |
| matching_iou_threshold=matching_iou_threshold, |
| nms_iou_threshold=nms_iou_threshold, |
| nms_max_output_boxes=nms_max_output_boxes, |
| group_of_weight=group_of_weight) |
| self.group_of_weight = group_of_weight |
| self.num_class = num_groundtruth_classes |
| self.use_weighted_mean_ap = use_weighted_mean_ap |
| self.label_id_offset = label_id_offset |
|
|
| self.groundtruth_boxes = {} |
| self.groundtruth_class_labels = {} |
| self.groundtruth_masks = {} |
| self.groundtruth_is_difficult_list = {} |
| self.groundtruth_is_group_of_list = {} |
| self.num_gt_instances_per_class = np.zeros(self.num_class, dtype=float) |
| self.num_gt_imgs_per_class = np.zeros(self.num_class, dtype=int) |
|
|
| self._initialize_detections() |
|
|
| def _initialize_detections(self): |
| """Initializes internal data structures.""" |
| self.detection_keys = set() |
| self.scores_per_class = [[] for _ in range(self.num_class)] |
| self.tp_fp_labels_per_class = [[] for _ in range(self.num_class)] |
| self.num_images_correctly_detected_per_class = np.zeros(self.num_class) |
| self.average_precision_per_class = np.empty(self.num_class, dtype=float) |
| self.average_precision_per_class.fill(np.nan) |
| self.precisions_per_class = [np.nan] * self.num_class |
| self.recalls_per_class = [np.nan] * self.num_class |
|
|
| self.corloc_per_class = np.ones(self.num_class, dtype=float) |
|
|
| def clear_detections(self): |
| self._initialize_detections() |
|
|
| def add_single_ground_truth_image_info(self, |
| image_key, |
| groundtruth_boxes, |
| groundtruth_class_labels, |
| groundtruth_is_difficult_list=None, |
| groundtruth_is_group_of_list=None, |
| groundtruth_masks=None): |
| """Adds groundtruth for a single image to be used for evaluation. |
| |
| Args: |
| image_key: A unique string/integer identifier for the image. |
| groundtruth_boxes: float32 numpy array of shape [num_boxes, 4] |
| containing `num_boxes` groundtruth boxes of the format |
| [ymin, xmin, ymax, xmax] in absolute image coordinates. |
| groundtruth_class_labels: integer numpy array of shape [num_boxes] |
| containing 0-indexed groundtruth classes for the boxes. |
| groundtruth_is_difficult_list: A length M numpy boolean array denoting |
| whether a ground truth box is a difficult instance or not. To support |
| the case that no boxes are difficult, it is by default set as None. |
| groundtruth_is_group_of_list: A length M numpy boolean array denoting |
| whether a ground truth box is a group-of box or not. To support |
| the case that no boxes are groups-of, it is by default set as None. |
| groundtruth_masks: uint8 numpy array of shape |
| [num_boxes, height, width] containing `num_boxes` groundtruth masks. |
| The mask values range from 0 to 1. |
| """ |
| if image_key in self.groundtruth_boxes: |
| logging.warn( |
| 'image %s has already been added to the ground truth database.', |
| image_key) |
| return |
|
|
| self.groundtruth_boxes[image_key] = groundtruth_boxes |
| self.groundtruth_class_labels[image_key] = groundtruth_class_labels |
| self.groundtruth_masks[image_key] = groundtruth_masks |
| if groundtruth_is_difficult_list is None: |
| num_boxes = groundtruth_boxes.shape[0] |
| groundtruth_is_difficult_list = np.zeros(num_boxes, dtype=bool) |
| self.groundtruth_is_difficult_list[ |
| image_key] = groundtruth_is_difficult_list.astype(dtype=bool) |
| if groundtruth_is_group_of_list is None: |
| num_boxes = groundtruth_boxes.shape[0] |
| groundtruth_is_group_of_list = np.zeros(num_boxes, dtype=bool) |
| self.groundtruth_is_group_of_list[ |
| image_key] = groundtruth_is_group_of_list.astype(dtype=bool) |
|
|
| self._update_ground_truth_statistics( |
| groundtruth_class_labels, |
| groundtruth_is_difficult_list.astype(dtype=bool), |
| groundtruth_is_group_of_list.astype(dtype=bool)) |
|
|
| def add_single_detected_image_info(self, image_key, detected_boxes, |
| detected_scores, detected_class_labels, |
| detected_masks=None): |
| """Adds detections for a single image to be used for evaluation. |
| |
| Args: |
| image_key: A unique string/integer identifier for the image. |
| detected_boxes: float32 numpy array of shape [num_boxes, 4] |
| containing `num_boxes` detection boxes of the format |
| [ymin, xmin, ymax, xmax] in absolute image coordinates. |
| detected_scores: float32 numpy array of shape [num_boxes] containing |
| detection scores for the boxes. |
| detected_class_labels: integer numpy array of shape [num_boxes] containing |
| 0-indexed detection classes for the boxes. |
| detected_masks: np.uint8 numpy array of shape [num_boxes, height, width] |
| containing `num_boxes` detection masks with values ranging |
| between 0 and 1. |
| |
| Raises: |
| ValueError: if the number of boxes, scores and class labels differ in |
| length. |
| """ |
| if (len(detected_boxes) != len(detected_scores) or |
| len(detected_boxes) != len(detected_class_labels)): |
| raise ValueError('detected_boxes, detected_scores and ' |
| 'detected_class_labels should all have same lengths. Got' |
| '[%d, %d, %d]' % len(detected_boxes), |
| len(detected_scores), len(detected_class_labels)) |
|
|
| if image_key in self.detection_keys: |
| logging.warn( |
| 'image %s has already been added to the detection result database', |
| image_key) |
| return |
|
|
| self.detection_keys.add(image_key) |
| if image_key in self.groundtruth_boxes: |
| groundtruth_boxes = self.groundtruth_boxes[image_key] |
| groundtruth_class_labels = self.groundtruth_class_labels[image_key] |
| |
| |
| groundtruth_masks = self.groundtruth_masks.pop( |
| image_key) |
| groundtruth_is_difficult_list = self.groundtruth_is_difficult_list[ |
| image_key] |
| groundtruth_is_group_of_list = self.groundtruth_is_group_of_list[ |
| image_key] |
| else: |
| groundtruth_boxes = np.empty(shape=[0, 4], dtype=float) |
| groundtruth_class_labels = np.array([], dtype=int) |
| if detected_masks is None: |
| groundtruth_masks = None |
| else: |
| groundtruth_masks = np.empty(shape=[0, 1, 1], dtype=float) |
| groundtruth_is_difficult_list = np.array([], dtype=bool) |
| groundtruth_is_group_of_list = np.array([], dtype=bool) |
| scores, tp_fp_labels, is_class_correctly_detected_in_image = ( |
| self.per_image_eval.compute_object_detection_metrics( |
| detected_boxes=detected_boxes, |
| detected_scores=detected_scores, |
| detected_class_labels=detected_class_labels, |
| groundtruth_boxes=groundtruth_boxes, |
| groundtruth_class_labels=groundtruth_class_labels, |
| groundtruth_is_difficult_list=groundtruth_is_difficult_list, |
| groundtruth_is_group_of_list=groundtruth_is_group_of_list, |
| detected_masks=detected_masks, |
| groundtruth_masks=groundtruth_masks)) |
|
|
| for i in range(self.num_class): |
| if scores[i].shape[0] > 0: |
| self.scores_per_class[i].append(scores[i]) |
| self.tp_fp_labels_per_class[i].append(tp_fp_labels[i]) |
| (self.num_images_correctly_detected_per_class |
| ) += is_class_correctly_detected_in_image |
|
|
| def _update_ground_truth_statistics(self, groundtruth_class_labels, |
| groundtruth_is_difficult_list, |
| groundtruth_is_group_of_list): |
| """Update grouth truth statitistics. |
| |
| 1. Difficult boxes are ignored when counting the number of ground truth |
| instances as done in Pascal VOC devkit. |
| 2. Difficult boxes are treated as normal boxes when computing CorLoc related |
| statitistics. |
| |
| Args: |
| groundtruth_class_labels: An integer numpy array of length M, |
| representing M class labels of object instances in ground truth |
| groundtruth_is_difficult_list: A boolean numpy array of length M denoting |
| whether a ground truth box is a difficult instance or not |
| groundtruth_is_group_of_list: A boolean numpy array of length M denoting |
| whether a ground truth box is a group-of box or not |
| """ |
| for class_index in range(self.num_class): |
| num_gt_instances = np.sum(groundtruth_class_labels[ |
| ~groundtruth_is_difficult_list |
| & ~groundtruth_is_group_of_list] == class_index) |
| num_groupof_gt_instances = self.group_of_weight * np.sum( |
| groundtruth_class_labels[groundtruth_is_group_of_list] == class_index) |
| self.num_gt_instances_per_class[ |
| class_index] += num_gt_instances + num_groupof_gt_instances |
| if np.any(groundtruth_class_labels == class_index): |
| self.num_gt_imgs_per_class[class_index] += 1 |
|
|
| def evaluate(self): |
| """Compute evaluation result. |
| |
| Returns: |
| A named tuple with the following fields - |
| average_precision: float numpy array of average precision for |
| each class. |
| mean_ap: mean average precision of all classes, float scalar |
| precisions: List of precisions, each precision is a float numpy |
| array |
| recalls: List of recalls, each recall is a float numpy array |
| corloc: numpy float array |
| mean_corloc: Mean CorLoc score for each class, float scalar |
| """ |
| if (self.num_gt_instances_per_class == 0).any(): |
| logging.warn( |
| 'The following classes have no ground truth examples: %s', |
| np.squeeze(np.argwhere(self.num_gt_instances_per_class == 0)) + |
| self.label_id_offset) |
|
|
| if self.use_weighted_mean_ap: |
| all_scores = np.array([], dtype=float) |
| all_tp_fp_labels = np.array([], dtype=bool) |
| for class_index in range(self.num_class): |
| if self.num_gt_instances_per_class[class_index] == 0: |
| continue |
| if not self.scores_per_class[class_index]: |
| scores = np.array([], dtype=float) |
| tp_fp_labels = np.array([], dtype=float) |
| else: |
| scores = np.concatenate(self.scores_per_class[class_index]) |
| tp_fp_labels = np.concatenate(self.tp_fp_labels_per_class[class_index]) |
| if self.use_weighted_mean_ap: |
| all_scores = np.append(all_scores, scores) |
| all_tp_fp_labels = np.append(all_tp_fp_labels, tp_fp_labels) |
| precision, recall = metrics.compute_precision_recall( |
| scores, tp_fp_labels, self.num_gt_instances_per_class[class_index]) |
|
|
| self.precisions_per_class[class_index] = precision |
| self.recalls_per_class[class_index] = recall |
| average_precision = metrics.compute_average_precision(precision, recall) |
| self.average_precision_per_class[class_index] = average_precision |
| logging.info('average_precision: %f', average_precision) |
|
|
| self.corloc_per_class = metrics.compute_cor_loc( |
| self.num_gt_imgs_per_class, |
| self.num_images_correctly_detected_per_class) |
|
|
| if self.use_weighted_mean_ap: |
| num_gt_instances = np.sum(self.num_gt_instances_per_class) |
| precision, recall = metrics.compute_precision_recall( |
| all_scores, all_tp_fp_labels, num_gt_instances) |
| mean_ap = metrics.compute_average_precision(precision, recall) |
| else: |
| mean_ap = np.nanmean(self.average_precision_per_class) |
| mean_corloc = np.nanmean(self.corloc_per_class) |
| return ObjectDetectionEvalMetrics( |
| self.average_precision_per_class, mean_ap, self.precisions_per_class, |
| self.recalls_per_class, self.corloc_per_class, mean_corloc) |
|
|