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- ---
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- license: mit
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- pretty_name: "Classic Cars"
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- tags: ["image", "computer-vision", "cars", "classic-cars", "high-resolution", "europe", "us"]
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- task_categories: ["image-classification"]
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- language: ["en"]
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- configs:
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- - config_name: default
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- data_files: "preview/**/*.arrow"
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- features:
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- - name: image
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- dtype: image
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- - name: unique_id
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- dtype: string
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- - name: width
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- dtype: int32
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- - name: height
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- dtype: int32
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- - name: original_file_format
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- dtype: string
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- - name: image_mode_on_disk
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- dtype: string
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- - config_name: train
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- data_files: "train/**/*.arrow"
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- features:
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- - name: image
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- dtype: image
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- - name: unique_id
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- dtype: string
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- - name: width
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- dtype: int32
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- - name: height
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- dtype: int32
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- - name: image_mode_on_disk
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- dtype: string
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- - name: original_file_format
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- dtype: string
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- ---
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-
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- # Classic Cars
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-
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- High resolution image subset from the Aesthetic-Train-V2 dataset, contains both classic and older generation cars mostly from the US and Europe.
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-
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- ## Dataset Details
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-
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- * **Curator:** Roscosmos
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- * **Version:** 1.0.0
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- * **Total Images:** 660
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- * **Average Image Size (on disk):** ~5.7 MB compressed
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- * **Primary Content:** Classic cars.
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- * **Standardization:** All images are standardized to RGB mode and saved at 95% quality for consistency.
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-
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- ## Dataset Creation & Provenance
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-
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- ### 1. Original Master Dataset
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- This dataset is a subset derived from:
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- **`zhang0jhon/Aesthetic-Train-V2`**
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- * **Link:** https://huggingface.co/datasets/zhang0jhon/Aesthetic-Train-V2
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- * **Providence:** Large-scale, high-resolution image dataset, refer to its original dataset card for full details.
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- * **Original License:** MIT
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-
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- ### 2. Iterative Curation Methodology
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-
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- CLIP retrieval / manual curation.
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-
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- ### Who are the source data producers?
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- * Original Dataset Creators: Refer to the original dataset card.
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- * Curator and Refiner: Roscosmos
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-
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- ## Dataset Structure & Content
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-
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- This dataset is organized into two primary splits:
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-
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- * **`train` split:** Contains the full, high-resolution image data and associated metadata. This is the recommended split for model training and full data analysis.
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- * **`preview` split:** Contains a small, random subset of images from the `train` split. The images in this split are downsampled and re-compressed to be **viewer-compatible** on the Hugging Face Hub. This split is intended for quick browsing and previewing directly in your web browser.
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-
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- Each example (row) in both splits contains the following fields:
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-
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- * `image`: The actual image data. In the `train` split, this is full-resolution. In the `preview` split, this is a viewer-compatible version.
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- * `unique_id`: A unique identifier assigned to each image.
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- * `width`: The width of the image in pixels (from the full-resolution image).
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- * `height`: The height of the image in pixels (from the full-resolution image).
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-
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- ## Usage
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-
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- To download and load this dataset from the Hugging Face Hub:
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-
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- ```python
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- from datasets import load_dataset
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-
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- # To load the full, high-resolution dataset (recommended for training):
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- dataset_full = load_dataset("ROSCOSMOS/Classic_Cars", split="train")
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-
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- # To load the smaller, viewer-compatible preview dataset for quick browsing:
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- dataset_preview = load_dataset("ROSCOSMOS/Classic_Cars", split="preview")
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-
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- print("Full Dataset (train split):", dataset_full)
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- print("Preview Dataset (preview split):", dataset_preview)
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-
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- # You can then access individual examples, e.g., dataset_full[0]
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- # The 'image' column will contain PIL Image objects.
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- ```
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-
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- ## Citation
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-
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-
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-
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- ```bibtex
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- @inproceedings{zhang2025diffusion4k,
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- title={Diffusion-4K: Ultra-High-Resolution Image Synthesis with Latent Diffusion Models},
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- author={Zhang, Jinjin and Huang, Qiuyu and Liu, Junjie and Guo, Xiefan and Huang, Di},
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- year={2025},
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- booktitle={IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
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- }
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- @misc{zhang2025ultrahighresolutionimagesynthesis,
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- title={Ultra-High-Resolution Image Synthesis: Data, Method and Evaluation},
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- author={Zhang, Jinjin and Huang, Qiuyu and Liu, Junjie and Guo, Xiefan and Huang, Di},
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- year={2025},
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- note={arXiv:2506.01331},
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- }
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- ```
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-
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- ## Disclaimer and Bias Considerations
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-
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- 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.
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-
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- ## Contact
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-
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- N/A
 
1
+ ---
2
+ license: mit
3
+ pretty_name: "Classic Cars"
4
+ tags: ["image", "computer-vision", "cars", "classic-cars", "high-resolution", "europe", "us"]
5
+ task_categories: ["image-classification"]
6
+ language: ["en"]
7
+ configs:
8
+ - config_name: default
9
+ data_files: "preview/**/*.arrow"
10
+ features:
11
+ - name: image
12
+ dtype: image
13
+ - name: unique_id
14
+ dtype: string
15
+ - name: width
16
+ dtype: int32
17
+ - name: height
18
+ dtype: int32
19
+ - name: original_file_format
20
+ dtype: string
21
+ - name: image_mode_on_disk
22
+ dtype: string
23
+ - config_name: train
24
+ data_files: "train/**/*.arrow"
25
+ features:
26
+ - name: image
27
+ dtype: image
28
+ - name: unique_id
29
+ dtype: string
30
+ - name: width
31
+ dtype: int32
32
+ - name: height
33
+ dtype: int32
34
+ - name: image_mode_on_disk
35
+ dtype: string
36
+ - name: original_file_format
37
+ dtype: string
38
+ ---
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+
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+ # Classic Cars
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+
42
+ High resolution image subset from the Aesthetic-Train-V2 dataset, contains both classic and older generation cars mostly from the US and Europe.
43
+
44
+ ## Dataset Details
45
+
46
+ * **Curator:** Roscosmos
47
+ * **Version:** 1.0.0
48
+ * **Total Images:** 660
49
+ * **Average Image Size (on disk):** ~5.7 MB compressed
50
+ * **Primary Content:** Classic cars.
51
+ * **Standardization:** All images are standardized to RGB mode and saved at 95% quality for consistency.
52
+
53
+ ## Dataset Creation & Provenance
54
+
55
+ ### 1. Original Master Dataset
56
+ This dataset is a subset derived from:
57
+ **`zhang0jhon/Aesthetic-Train-V2`**
58
+ * **Link:** https://huggingface.co/datasets/zhang0jhon/Aesthetic-Train-V2
59
+ * **Providence:** Large-scale, high-resolution image dataset, refer to its original dataset card for full details.
60
+ * **Original License:** MIT
61
+
62
+ ### 2. Iterative Curation Methodology
63
+
64
+ CLIP retrieval / manual curation.
65
+
66
+ ## Dataset Structure & Content
67
+
68
+ This dataset is organized into two primary splits:
69
+
70
+ * **`train` split:** Contains the full, high-resolution image data and associated metadata. This is the recommended split for model training and full data analysis.
71
+ * **`preview` split:** Contains a small, random subset of images from the `train` split. The images in this split are downsampled and re-compressed to be **viewer-compatible** on the Hugging Face Hub. This split is intended for quick browsing and previewing directly in your web browser.
72
+
73
+ Each example (row) in both splits contains the following fields:
74
+
75
+ * `image`: The actual image data. In the `train` split, this is full-resolution. In the `preview` split, this is a viewer-compatible version.
76
+ * `unique_id`: A unique identifier assigned to each image.
77
+ * `width`: The width of the image in pixels (from the full-resolution image).
78
+ * `height`: The height of the image in pixels (from the full-resolution image).
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+
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+ ## Usage
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+
82
+ To download and load this dataset from the Hugging Face Hub:
83
+
84
+ ```python
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+ from datasets import load_dataset
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+
87
+ # To load the full, high-resolution dataset (recommended for training):
88
+ dataset_full = load_dataset("ROSCOSMOS/Classic_Cars", split="train")
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+
90
+ # To load the smaller, viewer-compatible preview dataset for quick browsing:
91
+ dataset_preview = load_dataset("ROSCOSMOS/Classic_Cars", split="preview")
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+
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+ print("Full Dataset (train split):", dataset_full)
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+ print("Preview Dataset (preview split):", dataset_preview)
95
+
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+ # You can then access individual examples, e.g., dataset_full[0]
97
+ # The 'image' column will contain PIL Image objects.
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+ ```
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+
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+ ## Citation
101
+
102
+
103
+
104
+ ```bibtex
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+ @inproceedings{zhang2025diffusion4k,
106
+ title={Diffusion-4K: Ultra-High-Resolution Image Synthesis with Latent Diffusion Models},
107
+ author={Zhang, Jinjin and Huang, Qiuyu and Liu, Junjie and Guo, Xiefan and Huang, Di},
108
+ year={2025},
109
+ booktitle={IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
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+ }
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+ @misc{zhang2025ultrahighresolutionimagesynthesis,
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+ title={Ultra-High-Resolution Image Synthesis: Data, Method and Evaluation},
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+ author={Zhang, Jinjin and Huang, Qiuyu and Liu, Junjie and Guo, Xiefan and Huang, Di},
114
+ year={2025},
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+ note={arXiv:2506.01331},
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+ }
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+ ```
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+
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+ ## Disclaimer and Bias Considerations
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+
121
+ 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.
122
+
123
+ ## Contact
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+
125
+ N/A