Segformer B2 Fashion
A fashion image segmentation model fine-tuned based on the SegFormer architecture, specifically designed for identifying and segmenting different apparel categories in clothing images
Downloads 154
Release Time : 4/12/2024
Model Overview
This model is fine-tuned on the fashion_segmentation dataset based on the MIT-B2 architecture, capable of accurately segmenting 46 different apparel categories in images, suitable for scenarios such as fashion e-commerce and virtual try-on
Model Features
Fine-grained Apparel Category Recognition
Supports precise segmentation of 46 apparel categories, including shirts, sweaters, pants, and various other clothing types
Transformer-based Architecture
Utilizes the advanced SegFormer architecture, combining the advantages of Transformer in visual tasks
Optimized for Fashion Domain
Specially fine-tuned for fashion image data, excelling in apparel segmentation tasks
Model Capabilities
Image Segmentation
Apparel Category Recognition
Clothing Component Localization
Use Cases
E-commerce
Virtual Try-on System
Supports virtual try-on and outfit previews by accurately segmenting clothing regions
Product Image Auto-tagging
Automatically identifies and tags apparel categories and attributes on e-commerce platforms
Fashion Analysis
Trend Analysis
Analyzes the distribution of apparel categories and fashion elements through large-scale image data
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