| --- |
| dataset_info: |
| features: |
| - name: images |
| sequence: image |
| - name: problem |
| dtype: string |
| - name: answer |
| dtype: string |
| splits: |
| - name: train |
| num_bytes: 32158573685 |
| num_examples: 192980 |
| download_size: 0 |
| dataset_size: 32158573685 |
| configs: |
| - config_name: default |
| data_files: |
| - split: train |
| path: data/train-* |
| --- |
| |
| # StepCountQA-RL-Dense-Plus Dataset |
|
|
| ## Dataset Description |
|
|
| StepCountQA-RL-Dense-Plus is a carefully filtered subset of StepCountQA-RL, containing **complete reasoning chains** where the final count is between 11 and 50. |
|
|
| **Key Feature**: Each sequence includes **ALL reasoning steps** from count=1 to the final count (11-50), making it ideal for training models on dense counting scenarios with complete reasoning processes. |
|
|
| ## Dataset Statistics |
|
|
| - **Training Samples**: 192,980 |
| - **Sequences**: ~7,800 complete reasoning chains |
| - **Count Range**: 11-50 (final count) |
| - **Average Steps per Sequence**: ~24 steps |
|
|
| ## Data Structure |
|
|
| ### Complete Reasoning Chain Format |
|
|
| Each counting task contains a full reasoning chain from the first to the last point: |
|
|
| ``` |
| image.jpg -> count=1, {"point_2d": [x1, y1], "label": "object", "count_number": 1} |
| image_1.jpg -> count=2, {"point_2d": [x2, y2], "label": "object", "count_number": 2} |
| image_2.jpg -> count=3, {"point_2d": [x3, y3], "label": "object", "count_number": 3} |
| ... |
| image_N.jpg -> count=N+1 (where N+1 is between 11-50) |
| ``` |
|
|
| ### Data Fields |
|
|
| - `images`: A sequence of images (typically one image per sample) |
| - `problem`: Question text with reasoning instructions (`<image>\nHow many [objects] are in the image?\n...`) |
| - `answer`: |
| - During reasoning steps: JSON format `{"point_2d": [x, y], "label": "...", "count_number": N}` |
| - Final answer: Simple number string `"N"` |
|
|
| ## Dataset Characteristics |
|
|
| ### 1. Complete Reasoning Chains |
| - Every sequence starts from count=1 |
| - Includes all intermediate steps |
| - Ends with final count between 11-50 |
|
|
| ### 2. Dense Counting Scenarios |
| - Focus on moderately dense object counts (11-50 objects) |
| - Suitable for training on challenging counting tasks |
| - Balances complexity and tractability |
|
|
| ### 3. Diverse Object Types |
| - People, vehicles, everyday objects |
| - Fine-grained object parts (hands, heads, etc.) |
| - Various scenes and contexts |
|
|
| ## Usage Example |
|
|
| ```python |
| from datasets import load_dataset |
| |
| # Load the dataset |
| dataset = load_dataset("MING-ZCH/StepCountQA-RL-Dense-Plus") |
| |
| # Access training data |
| train_data = dataset["train"] |
| |
| # View a sample |
| sample = train_data[0] |
| print(sample['problem']) |
| print(sample['answer']) |
| # The answer may be JSON (intermediate step) or a number (final answer) |
| ``` |
|
|
| ## Training Recommendations |
|
|
| This dataset is particularly useful for: |
| - **Incremental counting models**: Learn to count step-by-step |
| - **Dense object detection**: Train on moderately crowded scenes |
| - **Reasoning consistency**: Ensure models maintain coherent reasoning chains |
| - **Point-based annotation**: Learn precise spatial localization |
|
|
| ## Citation |
|
|
| If you use this dataset, please cite the original StepCountQA-RL dataset. |
|
|
| ## License |
|
|
| Follows the same license as the original StepCountQA-RL dataset. |
|
|