diff --git a/utils/wandb_logging/wandb_utils.py b/utils/wandb_logging/wandb_utils.py index d8fbd1ef42aa..928f577fd460 100644 --- a/utils/wandb_logging/wandb_utils.py +++ b/utils/wandb_logging/wandb_utils.py @@ -196,9 +196,9 @@ def log_dataset_artifact(self, data_file, single_cls, project, overwrite_config= nc, names = (1, ['item']) if single_cls else (int(data['nc']), data['names']) names = {k: v for k, v in enumerate(names)} # to index dictionary self.train_artifact = self.create_dataset_table(LoadImagesAndLabels( - data['train']), names, name='train') if data.get('train') else None + data['train'], rect=True, batch_size=1), names, name='train') if data.get('train') else None self.val_artifact = self.create_dataset_table(LoadImagesAndLabels( - data['val']), names, name='val') if data.get('val') else None + data['val'], rect=True, batch_size=1), names, name='val') if data.get('val') else None if data.get('train'): data['train'] = WANDB_ARTIFACT_PREFIX + str(Path(project) / 'train') if data.get('val'): @@ -243,16 +243,12 @@ def create_dataset_table(self, dataset, class_to_id, name='dataset'): table = wandb.Table(columns=["id", "train_image", "Classes", "name"]) class_set = wandb.Classes([{'id': id, 'name': name} for id, name in class_to_id.items()]) for si, (img, labels, paths, shapes) in enumerate(tqdm(dataset)): - height, width = shapes[0] - labels[:, 2:] = (xywh2xyxy(labels[:, 2:].view(-1, 4))) * torch.Tensor([width, height, width, height]) box_data, img_classes = [], {} - for cls, *xyxy in labels[:, 1:].tolist(): + for cls, *xywh in labels[:, 1:].tolist(): cls = int(cls) - box_data.append({"position": {"minX": xyxy[0], "minY": xyxy[1], "maxX": xyxy[2], "maxY": xyxy[3]}, + box_data.append({"position": {"middle": [xywh[0], xywh[1]], "width": xywh[2], "height": xywh[3]}, "class_id": cls, - "box_caption": "%s" % (class_to_id[cls]), - "scores": {"acc": 1}, - "domain": "pixel"}) + "box_caption": "%s" % (class_to_id[cls])}) img_classes[cls] = class_to_id[cls] boxes = {"ground_truth": {"box_data": box_data, "class_labels": class_to_id}} # inference-space table.add_data(si, wandb.Image(paths, classes=class_set, boxes=boxes), json.dumps(img_classes),