from .two_stage import TwoStageDetector from ..registry import DETECTORS @DETECTORS.register_module class FastRCNN(TwoStageDetector): def __init__(self, backbone, neck, bbox_roi_extractor, bbox_head, train_cfg, test_cfg, mask_roi_extractor=None, mask_head=None, pretrained=None): super(FastRCNN, self).__init__( backbone=backbone, neck=neck, bbox_roi_extractor=bbox_roi_extractor, bbox_head=bbox_head, train_cfg=train_cfg, test_cfg=test_cfg, mask_roi_extractor=mask_roi_extractor, mask_head=mask_head, pretrained=pretrained) def forward_test(self, imgs, img_metas, proposals, **kwargs): for var, name in [(imgs, 'imgs'), (img_metas, 'img_metas')]: if not isinstance(var, list): raise TypeError('{} must be a list, but got {}'.format( name, type(var))) num_augs = len(imgs) if num_augs != len(img_metas): raise ValueError( 'num of augmentations ({}) != num of image meta ({})'.format( len(imgs), len(img_metas))) # TODO: remove the restriction of imgs_per_gpu == 1 when prepared imgs_per_gpu = imgs[0].size(0) assert imgs_per_gpu == 1 if num_augs == 1: return self.simple_test(imgs[0], img_metas[0], proposals[0], **kwargs) else: return self.aug_test(imgs, img_metas, proposals, **kwargs)