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Codatta/Fashion-1K

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Hugging Face2025-11-28 更新2026-01-03 收录
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https://hf-mirror.com/datasets/Codatta/Fashion-1K
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--- license: openrail tags: - fashion - clothing - virtual-try-on - e-commerce - flatlay - image-generation pretty_name: Fashion 1K size_categories: - 1K<n<10K task_categories: - object-detection language: - en --- # Fashion 1K ## Dataset Summary **Fashion 1K** is a curated collection of 1,000 high-quality fashion images, focusing on apparel and outfit compositions without human models. Unlike typical street-style datasets (like DeepFashion) that include human poses and complex backgrounds, this dataset provides **clean, human-free** images. The images primarily feature **Flat Lay** (clothing arranged on a flat surface) or **Ghost Mannequin** styles, making them ideal for tasks that require a clear view of the garment's structure, texture, and color without occlusion. **Key Features:** * **Human-Free:** No faces, limbs, or skin tones—strictly focused on the garments. * **Outfit-Centric:** Many images showcase complete looks (e.g., Top + Bottom + Shoes) to aid in compatibility learning. * **Clean Backgrounds:** Minimized background noise to facilitate easier segmentation and feature extraction. ## Supported Tasks This dataset is particularly suitable for: * **Virtual Try-On (VTON):** Serving as the "garment" reference image (`g_img`) for 2D try-on pipelines. * **Fashion Compatibility Learning:** Learning which items (e.g., shirt and trousers) go well together based on the curated outfits. * **Generative AI Training:** Training LoRAs or ControlNets for specific clothing styles without the bias of human figures. * **E-commerce Tagging:** Automated classification of clothing categories and attributes. ## Dataset Structure ### Data Fields * **`image`** (image): The high-resolution image of the clothing item or outfit. ## Usage Example ```python from datasets import load_dataset # Load the dataset ds = load_dataset("Codatta/Fashion-1K", split="train") # Display the first image sample = ds[0] sample['image'].show()
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