# Copyright 2017 The TensorFlow Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # ============================================================================== """Functions for computing metrics like precision, recall, CorLoc and etc.""" from __future__ import division import numpy as np def compute_precision_recall(scores, labels, num_gt): """Compute precision and recall. Args: scores: A float numpy array representing detection score labels: A float numpy array representing weighted true/false positive labels num_gt: Number of ground truth instances Raises: ValueError: if the input is not of the correct format Returns: precision: Fraction of positive instances over detected ones. This value is None if no ground truth labels are present. recall: Fraction of detected positive instance over all positive instances. This value is None if no ground truth labels are present. """ if not isinstance(labels, np.ndarray) or len(labels.shape) != 1: raise ValueError("labels must be single dimension numpy array") if labels.dtype != np.float and labels.dtype != np.bool: raise ValueError("labels type must be either bool or float") if not isinstance(scores, np.ndarray) or len(scores.shape) != 1: raise ValueError("scores must be single dimension numpy array") if num_gt < np.sum(labels): raise ValueError("Number of true positives must be smaller than num_gt.") if len(scores) != len(labels): raise ValueError("scores and labels must be of the same size.") if num_gt == 0: return None, None sorted_indices = np.argsort(scores) sorted_indices = sorted_indices[::-1] true_positive_labels = labels[sorted_indices] false_positive_labels = (true_positive_labels <= 0).astype(float) cum_true_positives = np.cumsum(true_positive_labels) cum_false_positives = np.cumsum(false_positive_labels) precision = cum_true_positives.astype(float) / ( cum_true_positives + cum_false_positives) recall = cum_true_positives.astype(float) / num_gt return precision, recall def compute_average_precision(precision, recall): """Compute Average Precision according to the definition in VOCdevkit. Precision is modified to ensure that it does not decrease as recall decrease. Args: precision: A float [N, 1] numpy array of precisions recall: A float [N, 1] numpy array of recalls Raises: ValueError: if the input is not of the correct format Returns: average_precison: The area under the precision recall curve. NaN if precision and recall are None. """ if precision is None: if recall is not None: raise ValueError("If precision is None, recall must also be None") return np.NAN if not isinstance(precision, np.ndarray) or not isinstance( recall, np.ndarray): raise ValueError("precision and recall must be numpy array") if precision.dtype != np.float or recall.dtype != np.float: raise ValueError("input must be float numpy array.") if len(precision) != len(recall): raise ValueError("precision and recall must be of the same size.") if not precision.size: return 0.0 if np.amin(precision) < 0 or np.amax(precision) > 1: raise ValueError("Precision must be in the range of [0, 1].") if np.amin(recall) < 0 or np.amax(recall) > 1: raise ValueError("recall must be in the range of [0, 1].") if not all(recall[i] <= recall[i + 1] for i in range(len(recall) - 1)): raise ValueError("recall must be a non-decreasing array") recall = np.concatenate([[0], recall, [1]]) precision = np.concatenate([[0], precision, [0]]) # Preprocess precision to be a non-decreasing array for i in range(len(precision) - 2, -1, -1): precision[i] = np.maximum(precision[i], precision[i + 1]) indices = np.where(recall[1:] != recall[:-1])[0] + 1 average_precision = np.sum( (recall[indices] - recall[indices - 1]) * precision[indices]) return average_precision def compute_cor_loc(num_gt_imgs_per_class, num_images_correctly_detected_per_class): """Compute CorLoc according to the definition in the following paper. https://www.robots.ox.ac.uk/~vgg/rg/papers/deselaers-eccv10.pdf Returns nans if there are no ground truth images for a class. Args: num_gt_imgs_per_class: 1D array, representing number of images containing at least one object instance of a particular class num_images_correctly_detected_per_class: 1D array, representing number of images that are correctly detected at least one object instance of a particular class Returns: corloc_per_class: A float numpy array represents the corloc score of each class """ return np.where( num_gt_imgs_per_class == 0, np.nan, num_images_correctly_detected_per_class / num_gt_imgs_per_class) def compute_median_rank_at_k(tp_fp_list, k): """Computes MedianRank@k, where k is the top-scoring labels. Args: tp_fp_list: a list of numpy arrays; each numpy array corresponds to the all detection on a single image, where the detections are sorted by score in descending order. Further, each numpy array element can have boolean or float values. True positive elements have either value >0.0 or True; any other value is considered false positive. k: number of top-scoring proposals to take. Returns: median_rank: median rank of all true positive proposals among top k by score. """ ranks = [] for i in range(len(tp_fp_list)): ranks.append( np.where(tp_fp_list[i][0:min(k, tp_fp_list[i].shape[0])] > 0)[0]) concatenated_ranks = np.concatenate(ranks) return np.median(concatenated_ranks) def compute_recall_at_k(tp_fp_list, num_gt, k): """Computes Recall@k, MedianRank@k, where k is the top-scoring labels. Args: tp_fp_list: a list of numpy arrays; each numpy array corresponds to the all detection on a single image, where the detections are sorted by score in descending order. Further, each numpy array element can have boolean or float values. True positive elements have either value >0.0 or True; any other value is considered false positive. num_gt: number of groundtruth anotations. k: number of top-scoring proposals to take. Returns: recall: recall evaluated on the top k by score detections. """ tp_fp_eval = [] for i in range(len(tp_fp_list)): tp_fp_eval.append(tp_fp_list[i][0:min(k, tp_fp_list[i].shape[0])]) tp_fp_eval = np.concatenate(tp_fp_eval) return np.sum(tp_fp_eval) / num_gt