--- license: mit pretty_name: "Sports Cars" tags: ["image", "computer-vision", "cars", "sports-cars", "high-resolution"] task_categories: ["image-classification"] language: ["en"] configs: - config_name: train data_files: "train/**/*.arrow" features: - name: image dtype: image - name: unique_id dtype: string - name: width dtype: int32 - name: height dtype: int32 - name: original_file_format dtype: string - name: image_mode_on_disk dtype: string --- # Sports Cars High resolution image subset from the Aesthetic-Train-V2 dataset, contains a mix of modified street cars, high performance / super cars from various manufacturers. ## Dataset Details * **Curator:** Roscosmos * **Version:** 1.0.0 * **Total Images:** 600 * **Average Image Size (on disk):** ~5.1 MB compressed * **Primary Content:** Sports Cars * **Standardization:** All images are standardized to RGB mode and saved at 95% quality for consistency. ## Dataset Creation & Provenance ### 1. Original Master Dataset This dataset is a subset derived from: **`zhang0jhon/Aesthetic-Train-V2`** * **Link:** https://huggingface.co/datasets/zhang0jhon/Aesthetic-Train-V2 * **Providence:** Large-scale, high-resolution image dataset, refer to its original dataset card for full details. * **Original License:** MIT ### 2. Iterative Curation Methodology CLIP retrieval / manual curation. ## Dataset Structure & Content * **`train` split:** Contains the full, high-resolution image data and associated metadata. This is the recommended split for model training and full data analysis. Each example (row) in both splits contains the following fields: * `image`: The actual image data. In the `train` split, this is full-resolution. * `unique_id`: A unique identifier assigned to each image. * `width`: The width of the image in pixels (from the full-resolution image). * `height`: The height of the image in pixels (from the full-resolution image). ## Citation ```bibtex @inproceedings{zhang2025diffusion4k, title={Diffusion-4K: Ultra-High-Resolution Image Synthesis with Latent Diffusion Models}, author={Zhang, Jinjin and Huang, Qiuyu and Liu, Junjie and Guo, Xiefan and Huang, Di}, year={2025}, booktitle={IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)}, } @misc{zhang2025ultrahighresolutionimagesynthesis, title={Ultra-High-Resolution Image Synthesis: Data, Method and Evaluation}, author={Zhang, Jinjin and Huang, Qiuyu and Liu, Junjie and Guo, Xiefan and Huang, Di}, year={2025}, note={arXiv:2506.01331}, } ``` ## Disclaimer and Bias Considerations Please consider any inherent biases from the original dataset and those potentially introduced by the automated filtering (e.g., CLIP's biases) and manual curation process. ## Contact N/A