| from multiprocessing import Pool |
|
|
| import mmcv |
| import numpy as np |
| from mmcv.utils import print_log |
| from terminaltables import AsciiTable |
|
|
| from .bbox_overlaps import bbox_overlaps |
| from .class_names import get_classes |
|
|
|
|
| def average_precision(recalls, precisions, mode='area'): |
| """Calculate average precision (for single or multiple scales). |
| |
| Args: |
| recalls (ndarray): shape (num_scales, num_dets) or (num_dets, ) |
| precisions (ndarray): shape (num_scales, num_dets) or (num_dets, ) |
| mode (str): 'area' or '11points', 'area' means calculating the area |
| under precision-recall curve, '11points' means calculating |
| the average precision of recalls at [0, 0.1, ..., 1] |
| |
| Returns: |
| float or ndarray: calculated average precision |
| """ |
| no_scale = False |
| if recalls.ndim == 1: |
| no_scale = True |
| recalls = recalls[np.newaxis, :] |
| precisions = precisions[np.newaxis, :] |
| assert recalls.shape == precisions.shape and recalls.ndim == 2 |
| num_scales = recalls.shape[0] |
| ap = np.zeros(num_scales, dtype=np.float32) |
| if mode == 'area': |
| zeros = np.zeros((num_scales, 1), dtype=recalls.dtype) |
| ones = np.ones((num_scales, 1), dtype=recalls.dtype) |
| mrec = np.hstack((zeros, recalls, ones)) |
| mpre = np.hstack((zeros, precisions, zeros)) |
| for i in range(mpre.shape[1] - 1, 0, -1): |
| mpre[:, i - 1] = np.maximum(mpre[:, i - 1], mpre[:, i]) |
| for i in range(num_scales): |
| ind = np.where(mrec[i, 1:] != mrec[i, :-1])[0] |
| ap[i] = np.sum( |
| (mrec[i, ind + 1] - mrec[i, ind]) * mpre[i, ind + 1]) |
| elif mode == '11points': |
| for i in range(num_scales): |
| for thr in np.arange(0, 1 + 1e-3, 0.1): |
| precs = precisions[i, recalls[i, :] >= thr] |
| prec = precs.max() if precs.size > 0 else 0 |
| ap[i] += prec |
| ap /= 11 |
| else: |
| raise ValueError( |
| 'Unrecognized mode, only "area" and "11points" are supported') |
| if no_scale: |
| ap = ap[0] |
| return ap |
|
|
|
|
| def tpfp_imagenet(det_bboxes, |
| gt_bboxes, |
| gt_bboxes_ignore=None, |
| default_iou_thr=0.5, |
| area_ranges=None): |
| """Check if detected bboxes are true positive or false positive. |
| |
| Args: |
| det_bbox (ndarray): Detected bboxes of this image, of shape (m, 5). |
| gt_bboxes (ndarray): GT bboxes of this image, of shape (n, 4). |
| gt_bboxes_ignore (ndarray): Ignored gt bboxes of this image, |
| of shape (k, 4). Default: None |
| default_iou_thr (float): IoU threshold to be considered as matched for |
| medium and large bboxes (small ones have special rules). |
| Default: 0.5. |
| area_ranges (list[tuple] | None): Range of bbox areas to be evaluated, |
| in the format [(min1, max1), (min2, max2), ...]. Default: None. |
| |
| Returns: |
| tuple[np.ndarray]: (tp, fp) whose elements are 0 and 1. The shape of |
| each array is (num_scales, m). |
| """ |
| |
| gt_ignore_inds = np.concatenate( |
| (np.zeros(gt_bboxes.shape[0], dtype=np.bool), |
| np.ones(gt_bboxes_ignore.shape[0], dtype=np.bool))) |
| |
| gt_bboxes = np.vstack((gt_bboxes, gt_bboxes_ignore)) |
|
|
| num_dets = det_bboxes.shape[0] |
| num_gts = gt_bboxes.shape[0] |
| if area_ranges is None: |
| area_ranges = [(None, None)] |
| num_scales = len(area_ranges) |
| |
| |
| tp = np.zeros((num_scales, num_dets), dtype=np.float32) |
| fp = np.zeros((num_scales, num_dets), dtype=np.float32) |
| if gt_bboxes.shape[0] == 0: |
| if area_ranges == [(None, None)]: |
| fp[...] = 1 |
| else: |
| det_areas = (det_bboxes[:, 2] - det_bboxes[:, 0]) * ( |
| det_bboxes[:, 3] - det_bboxes[:, 1]) |
| for i, (min_area, max_area) in enumerate(area_ranges): |
| fp[i, (det_areas >= min_area) & (det_areas < max_area)] = 1 |
| return tp, fp |
| ious = bbox_overlaps(det_bboxes, gt_bboxes - 1) |
| gt_w = gt_bboxes[:, 2] - gt_bboxes[:, 0] |
| gt_h = gt_bboxes[:, 3] - gt_bboxes[:, 1] |
| iou_thrs = np.minimum((gt_w * gt_h) / ((gt_w + 10.0) * (gt_h + 10.0)), |
| default_iou_thr) |
| |
| sort_inds = np.argsort(-det_bboxes[:, -1]) |
| for k, (min_area, max_area) in enumerate(area_ranges): |
| gt_covered = np.zeros(num_gts, dtype=bool) |
| |
| if min_area is None: |
| gt_area_ignore = np.zeros_like(gt_ignore_inds, dtype=bool) |
| else: |
| gt_areas = gt_w * gt_h |
| gt_area_ignore = (gt_areas < min_area) | (gt_areas >= max_area) |
| for i in sort_inds: |
| max_iou = -1 |
| matched_gt = -1 |
| |
| for j in range(num_gts): |
| |
| |
| if gt_covered[j]: |
| continue |
| elif ious[i, j] >= iou_thrs[j] and ious[i, j] > max_iou: |
| max_iou = ious[i, j] |
| matched_gt = j |
| |
| |
| |
| |
| |
| if matched_gt >= 0: |
| gt_covered[matched_gt] = 1 |
| if not (gt_ignore_inds[matched_gt] |
| or gt_area_ignore[matched_gt]): |
| tp[k, i] = 1 |
| elif min_area is None: |
| fp[k, i] = 1 |
| else: |
| bbox = det_bboxes[i, :4] |
| area = (bbox[2] - bbox[0]) * (bbox[3] - bbox[1]) |
| if area >= min_area and area < max_area: |
| fp[k, i] = 1 |
| return tp, fp |
|
|
|
|
| def tpfp_default(det_bboxes, |
| gt_bboxes, |
| gt_bboxes_ignore=None, |
| iou_thr=0.5, |
| area_ranges=None): |
| """Check if detected bboxes are true positive or false positive. |
| |
| Args: |
| det_bbox (ndarray): Detected bboxes of this image, of shape (m, 5). |
| gt_bboxes (ndarray): GT bboxes of this image, of shape (n, 4). |
| gt_bboxes_ignore (ndarray): Ignored gt bboxes of this image, |
| of shape (k, 4). Default: None |
| iou_thr (float): IoU threshold to be considered as matched. |
| Default: 0.5. |
| area_ranges (list[tuple] | None): Range of bbox areas to be evaluated, |
| in the format [(min1, max1), (min2, max2), ...]. Default: None. |
| |
| Returns: |
| tuple[np.ndarray]: (tp, fp) whose elements are 0 and 1. The shape of |
| each array is (num_scales, m). |
| """ |
| |
| gt_ignore_inds = np.concatenate( |
| (np.zeros(gt_bboxes.shape[0], dtype=np.bool), |
| np.ones(gt_bboxes_ignore.shape[0], dtype=np.bool))) |
| |
| gt_bboxes = np.vstack((gt_bboxes, gt_bboxes_ignore)) |
|
|
| num_dets = det_bboxes.shape[0] |
| num_gts = gt_bboxes.shape[0] |
| if area_ranges is None: |
| area_ranges = [(None, None)] |
| num_scales = len(area_ranges) |
| |
| |
| tp = np.zeros((num_scales, num_dets), dtype=np.float32) |
| fp = np.zeros((num_scales, num_dets), dtype=np.float32) |
|
|
| |
| |
| if gt_bboxes.shape[0] == 0: |
| if area_ranges == [(None, None)]: |
| fp[...] = 1 |
| else: |
| det_areas = (det_bboxes[:, 2] - det_bboxes[:, 0]) * ( |
| det_bboxes[:, 3] - det_bboxes[:, 1]) |
| for i, (min_area, max_area) in enumerate(area_ranges): |
| fp[i, (det_areas >= min_area) & (det_areas < max_area)] = 1 |
| return tp, fp |
|
|
| ious = bbox_overlaps(det_bboxes, gt_bboxes) |
| |
| ious_max = ious.max(axis=1) |
| |
| ious_argmax = ious.argmax(axis=1) |
| |
| sort_inds = np.argsort(-det_bboxes[:, -1]) |
| for k, (min_area, max_area) in enumerate(area_ranges): |
| gt_covered = np.zeros(num_gts, dtype=bool) |
| |
| if min_area is None: |
| gt_area_ignore = np.zeros_like(gt_ignore_inds, dtype=bool) |
| else: |
| gt_areas = (gt_bboxes[:, 2] - gt_bboxes[:, 0]) * ( |
| gt_bboxes[:, 3] - gt_bboxes[:, 1]) |
| gt_area_ignore = (gt_areas < min_area) | (gt_areas >= max_area) |
| for i in sort_inds: |
| if ious_max[i] >= iou_thr: |
| matched_gt = ious_argmax[i] |
| if not (gt_ignore_inds[matched_gt] |
| or gt_area_ignore[matched_gt]): |
| if not gt_covered[matched_gt]: |
| gt_covered[matched_gt] = True |
| tp[k, i] = 1 |
| else: |
| fp[k, i] = 1 |
| |
| elif min_area is None: |
| fp[k, i] = 1 |
| else: |
| bbox = det_bboxes[i, :4] |
| area = (bbox[2] - bbox[0]) * (bbox[3] - bbox[1]) |
| if area >= min_area and area < max_area: |
| fp[k, i] = 1 |
| return tp, fp |
|
|
|
|
| def get_cls_results(det_results, annotations, class_id): |
| """Get det results and gt information of a certain class. |
| |
| Args: |
| det_results (list[list]): Same as `eval_map()`. |
| annotations (list[dict]): Same as `eval_map()`. |
| class_id (int): ID of a specific class. |
| |
| Returns: |
| tuple[list[np.ndarray]]: detected bboxes, gt bboxes, ignored gt bboxes |
| """ |
| cls_dets = [img_res[class_id] for img_res in det_results] |
| cls_gts = [] |
| cls_gts_ignore = [] |
| for ann in annotations: |
| gt_inds = ann['labels'] == class_id |
| cls_gts.append(ann['bboxes'][gt_inds, :]) |
|
|
| if ann.get('labels_ignore', None) is not None: |
| ignore_inds = ann['labels_ignore'] == class_id |
| cls_gts_ignore.append(ann['bboxes_ignore'][ignore_inds, :]) |
| else: |
| cls_gts_ignore.append(np.empty((0, 4), dtype=np.float32)) |
|
|
| return cls_dets, cls_gts, cls_gts_ignore |
|
|
|
|
| def eval_map(det_results, |
| annotations, |
| scale_ranges=None, |
| iou_thr=0.5, |
| dataset=None, |
| logger=None, |
| tpfp_fn=None, |
| nproc=4): |
| """Evaluate mAP of a dataset. |
| |
| Args: |
| det_results (list[list]): [[cls1_det, cls2_det, ...], ...]. |
| The outer list indicates images, and the inner list indicates |
| per-class detected bboxes. |
| annotations (list[dict]): Ground truth annotations where each item of |
| the list indicates an image. Keys of annotations are: |
| |
| - `bboxes`: numpy array of shape (n, 4) |
| - `labels`: numpy array of shape (n, ) |
| - `bboxes_ignore` (optional): numpy array of shape (k, 4) |
| - `labels_ignore` (optional): numpy array of shape (k, ) |
| scale_ranges (list[tuple] | None): Range of scales to be evaluated, |
| in the format [(min1, max1), (min2, max2), ...]. A range of |
| (32, 64) means the area range between (32**2, 64**2). |
| Default: None. |
| iou_thr (float): IoU threshold to be considered as matched. |
| Default: 0.5. |
| dataset (list[str] | str | None): Dataset name or dataset classes, |
| there are minor differences in metrics for different datsets, e.g. |
| "voc07", "imagenet_det", etc. Default: None. |
| logger (logging.Logger | str | None): The way to print the mAP |
| summary. See `mmcv.utils.print_log()` for details. Default: None. |
| tpfp_fn (callable | None): The function used to determine true/ |
| false positives. If None, :func:`tpfp_default` is used as default |
| unless dataset is 'det' or 'vid' (:func:`tpfp_imagenet` in this |
| case). If it is given as a function, then this function is used |
| to evaluate tp & fp. Default None. |
| nproc (int): Processes used for computing TP and FP. |
| Default: 4. |
| |
| Returns: |
| tuple: (mAP, [dict, dict, ...]) |
| """ |
| assert len(det_results) == len(annotations) |
|
|
| num_imgs = len(det_results) |
| num_scales = len(scale_ranges) if scale_ranges is not None else 1 |
| num_classes = len(det_results[0]) |
| area_ranges = ([(rg[0]**2, rg[1]**2) for rg in scale_ranges] |
| if scale_ranges is not None else None) |
|
|
| pool = Pool(nproc) |
| eval_results = [] |
| for i in range(num_classes): |
| |
| cls_dets, cls_gts, cls_gts_ignore = get_cls_results( |
| det_results, annotations, i) |
| |
| if tpfp_fn is None: |
| if dataset in ['det', 'vid']: |
| tpfp_fn = tpfp_imagenet |
| else: |
| tpfp_fn = tpfp_default |
| if not callable(tpfp_fn): |
| raise ValueError( |
| f'tpfp_fn has to be a function or None, but got {tpfp_fn}') |
|
|
| |
| tpfp = pool.starmap( |
| tpfp_fn, |
| zip(cls_dets, cls_gts, cls_gts_ignore, |
| [iou_thr for _ in range(num_imgs)], |
| [area_ranges for _ in range(num_imgs)])) |
| tp, fp = tuple(zip(*tpfp)) |
| |
| |
| num_gts = np.zeros(num_scales, dtype=int) |
| for j, bbox in enumerate(cls_gts): |
| if area_ranges is None: |
| num_gts[0] += bbox.shape[0] |
| else: |
| gt_areas = (bbox[:, 2] - bbox[:, 0]) * ( |
| bbox[:, 3] - bbox[:, 1]) |
| for k, (min_area, max_area) in enumerate(area_ranges): |
| num_gts[k] += np.sum((gt_areas >= min_area) |
| & (gt_areas < max_area)) |
| |
| cls_dets = np.vstack(cls_dets) |
| num_dets = cls_dets.shape[0] |
| sort_inds = np.argsort(-cls_dets[:, -1]) |
| tp = np.hstack(tp)[:, sort_inds] |
| fp = np.hstack(fp)[:, sort_inds] |
| |
| tp = np.cumsum(tp, axis=1) |
| fp = np.cumsum(fp, axis=1) |
| eps = np.finfo(np.float32).eps |
| recalls = tp / np.maximum(num_gts[:, np.newaxis], eps) |
| precisions = tp / np.maximum((tp + fp), eps) |
| |
| if scale_ranges is None: |
| recalls = recalls[0, :] |
| precisions = precisions[0, :] |
| num_gts = num_gts.item() |
| mode = 'area' if dataset != 'voc07' else '11points' |
| ap = average_precision(recalls, precisions, mode) |
| eval_results.append({ |
| 'num_gts': num_gts, |
| 'num_dets': num_dets, |
| 'recall': recalls, |
| 'precision': precisions, |
| 'ap': ap |
| }) |
| pool.close() |
| if scale_ranges is not None: |
| |
| all_ap = np.vstack([cls_result['ap'] for cls_result in eval_results]) |
| all_num_gts = np.vstack( |
| [cls_result['num_gts'] for cls_result in eval_results]) |
| mean_ap = [] |
| for i in range(num_scales): |
| if np.any(all_num_gts[:, i] > 0): |
| mean_ap.append(all_ap[all_num_gts[:, i] > 0, i].mean()) |
| else: |
| mean_ap.append(0.0) |
| else: |
| aps = [] |
| for cls_result in eval_results: |
| if cls_result['num_gts'] > 0: |
| aps.append(cls_result['ap']) |
| mean_ap = np.array(aps).mean().item() if aps else 0.0 |
|
|
| print_map_summary( |
| mean_ap, eval_results, dataset, area_ranges, logger=logger) |
|
|
| return mean_ap, eval_results |
|
|
|
|
| def print_map_summary(mean_ap, |
| results, |
| dataset=None, |
| scale_ranges=None, |
| logger=None): |
| """Print mAP and results of each class. |
| |
| A table will be printed to show the gts/dets/recall/AP of each class and |
| the mAP. |
| |
| Args: |
| mean_ap (float): Calculated from `eval_map()`. |
| results (list[dict]): Calculated from `eval_map()`. |
| dataset (list[str] | str | None): Dataset name or dataset classes. |
| scale_ranges (list[tuple] | None): Range of scales to be evaluated. |
| logger (logging.Logger | str | None): The way to print the mAP |
| summary. See `mmcv.utils.print_log()` for details. Default: None. |
| """ |
|
|
| if logger == 'silent': |
| return |
|
|
| if isinstance(results[0]['ap'], np.ndarray): |
| num_scales = len(results[0]['ap']) |
| else: |
| num_scales = 1 |
|
|
| if scale_ranges is not None: |
| assert len(scale_ranges) == num_scales |
|
|
| num_classes = len(results) |
|
|
| recalls = np.zeros((num_scales, num_classes), dtype=np.float32) |
| aps = np.zeros((num_scales, num_classes), dtype=np.float32) |
| num_gts = np.zeros((num_scales, num_classes), dtype=int) |
| for i, cls_result in enumerate(results): |
| if cls_result['recall'].size > 0: |
| recalls[:, i] = np.array(cls_result['recall'], ndmin=2)[:, -1] |
| aps[:, i] = cls_result['ap'] |
| num_gts[:, i] = cls_result['num_gts'] |
|
|
| if dataset is None: |
| label_names = [str(i) for i in range(num_classes)] |
| elif mmcv.is_str(dataset): |
| label_names = get_classes(dataset) |
| else: |
| label_names = dataset |
|
|
| if not isinstance(mean_ap, list): |
| mean_ap = [mean_ap] |
|
|
| header = ['class', 'gts', 'dets', 'recall', 'ap'] |
| for i in range(num_scales): |
| if scale_ranges is not None: |
| print_log(f'Scale range {scale_ranges[i]}', logger=logger) |
| table_data = [header] |
| for j in range(num_classes): |
| row_data = [ |
| label_names[j], num_gts[i, j], results[j]['num_dets'], |
| f'{recalls[i, j]:.3f}', f'{aps[i, j]:.3f}' |
| ] |
| table_data.append(row_data) |
| table_data.append(['mAP', '', '', '', f'{mean_ap[i]:.3f}']) |
| table = AsciiTable(table_data) |
| table.inner_footing_row_border = True |
| print_log('\n' + table.table, logger=logger) |
|
|