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from pathlib import Path |
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import torch |
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from evaluator.build import EVALUATOR_REGISTRY, BaseEvaluator |
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@EVALUATOR_REGISTRY.register() |
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class ScanReferEval(BaseEvaluator): |
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def __init__(self, cfg, accelerator, **kwargs): |
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self.target_metric = 'og_acc_iou25' |
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self.save_dir = Path(cfg.exp_dir) / "eval_results" / self.__class__.__name__ |
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super().__init__(cfg, accelerator, **kwargs) |
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def batch_metrics(self, data_dict, include_count=False): |
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if len(data_dict['tgt_object_id_iou25'].shape) == 3: |
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data_dict['tgt_object_id_iou25'] = data_dict['tgt_object_id_iou25'].flatten(0, 1) |
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data_dict['tgt_object_id_iou50'] = data_dict['tgt_object_id_iou50'].flatten(0, 1) |
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data_dict['tgt_object_id'] = data_dict['tgt_object_id'].flatten(0, 1).unsqueeze(1) |
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data_dict['is_multiple'] = data_dict['is_multiple'].flatten(0, 1) |
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data_dict['og3d_logits'] = data_dict['og3d_logits'].flatten(0, 1) |
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metrics = {} |
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og_pred = torch.argmax(data_dict['og3d_logits'], dim=-1) |
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total_count = len(og_pred) |
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multiple_count = data_dict['is_multiple'].sum().item() |
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unique_count = total_count - multiple_count |
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iou25_correct_mask = data_dict['tgt_object_id_iou25'][torch.arange(len(og_pred)), og_pred].to(bool) |
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iou50_correct_mask = data_dict['tgt_object_id_iou50'][torch.arange(len(og_pred)), og_pred].to(bool) |
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iou25_correct = iou25_correct_mask.sum().item() |
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iou50_correct = iou50_correct_mask.sum().item() |
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iou25_multiple_correct = (iou25_correct_mask & data_dict['is_multiple']).sum().item() |
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iou25_unique_correct = iou25_correct - iou25_multiple_correct |
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iou50_multiple_correct = (iou50_correct_mask & data_dict['is_multiple']).sum().item() |
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iou50_unique_correct = iou50_correct - iou50_multiple_correct |
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metrics['og_acc_iou25'] = iou25_correct |
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metrics['og_acc_iou50'] = iou50_correct |
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metrics['og_acc_iou25_unique'] = iou25_unique_correct |
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metrics['og_acc_iou50_unique'] = iou50_unique_correct |
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metrics['og_acc_iou25_multiple'] = iou25_multiple_correct |
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metrics['og_acc_iou50_multiple'] = iou50_multiple_correct |
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metrics['og_acc'] = (og_pred == data_dict['tgt_object_id'].squeeze(1)).sum().item() |
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if 'txt_cls_logits' in data_dict: |
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metrics['txt_acc'] = (torch.argmax(data_dict['txt_cls_logits'], dim=1) == data_dict["tgt_object_label"].squeeze(1)).sum().item() |
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gt = data_dict['obj_labels'] |
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mask = data_dict['obj_masks'] |
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for key in data_dict.keys(): |
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if key.endswith('logits') and data_dict[key].ndim == 3 and data_dict[key].shape[:2] == data_dict['obj_labels'].shape: |
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new_key = key.replace('logits', 'acc') |
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pred = torch.argmax(data_dict[key], dim=2) |
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metrics[new_key] = ((pred[mask] == gt[mask]).sum().item(), mask.sum().item()) |
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for key in metrics: |
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if isinstance(metrics[key], tuple): |
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continue |
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if 'unique' in key: |
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metrics[key] = (metrics[key], unique_count) |
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elif 'multiple' in key: |
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metrics[key] = (metrics[key], multiple_count) |
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else: |
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metrics[key] = (metrics[key], total_count) |
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if self.save: |
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item_ids = data_dict['data_idx'] |
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for i in range(len(item_ids)): |
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self.eval_results.append({ |
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"scene_id": item_ids[i], |
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"bbox": data_dict['obj_boxes'][i][og_pred[i]].cpu().numpy().tolist(), |
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"correct": og_pred[i].item() == data_dict['tgt_object_id'][i].item() |
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}) |
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if not include_count: |
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for key, v in metrics.items(): |
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metrics[key] = v[0] / max(v[1], 1) |
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return metrics |
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