--- dataset_info: features: - name: image dtype: image - name: objects dtype: string - name: annotated_image dtype: image splits: - name: train num_bytes: 32518816505.639652 num_examples: 52557 download_size: 32487827237 dataset_size: 32518816505.639652 configs: - config_name: default data_files: - split: train path: data/train-* tags: - computer-vision - object-detection - vision - image - bounding-boxes - multimodal - detection - machine-learning - deep-learning - coco-format - open-vocabulary-detection - auto-annotation - vlm license: apache-2.0 task_categories: - object-detection language: - en size_categories: - 10K **52,557 rows (81 rows with null or empty `objects` were removed) from `prithivMLmods/OpenDetection-50K-Remastered`.** ## Dataset Statistics | Property | Value | |-----------|-------| | Number of Samples | 52,557 | | Image Format | RGB | | Annotation Format | JSON | | Visualization | Annotated Image | | Dataset Format | Optimized Parquet | ## Dataset Structure Each sample contains the following fields: | Column | Type | Description | |---------|------|-------------| | `image` | Image | Original input image | | `objects` | List | Object detection annotations containing labels, confidence scores, label IDs, and bounding boxes | | `annotated_image` | Image | Visualization of the image with rendered bounding boxes | Example: ```python sample = ds[0] print(sample.keys()) # dict_keys([ # "image", # "objects", # "annotated_image" # ]) ``` ## Loading the Dataset ```python from datasets import load_dataset ds = load_dataset( "prithivMLmods/OpenDetection-50K-Remastered-Cleaned", split="train" ) ``` ## Example Usage ```python from datasets import load_dataset import matplotlib.pyplot as plt ds = load_dataset( "prithivMLmods/OpenDetection-50K-Remastered-Cleaned", split="train" ) sample = ds[0] image = sample["image"] objects = sample["objects"] annotated = sample["annotated_image"] print("Detected Objects:") print(objects) fig, axes = plt.subplots(1, 2, figsize=(12, 6)) axes[0].imshow(image) axes[0].set_title("Image") axes[0].axis("off") axes[1].imshow(annotated) axes[1].set_title("Annotated Image") axes[1].axis("off") plt.show() ``` ## Dataset Features - Cleaned version of OpenDetection-50K-Remastered - All empty annotations removed - Every image contains at least one valid object - High-quality object detection annotations - Bounding box visualizations for every sample - Optimized Parquet format for efficient loading - Compatible with the Hugging Face Datasets library - Suitable for training, evaluation, benchmarking, and multimodal computer vision research ## License This dataset is released under the **Apache-2.0 License**.