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Finegrain Box Segmenter

Developed by finegrain
Finegrain Box Segmenter is a high-definition (1024x1024) object matting model based on MVANet architecture, generating pixel-level precision masks through box prompts.
Downloads 6,095
Release Time : 8/29/2024

Model Overview

This model is specifically designed for e-commerce scenarios, capable of producing high-quality matting masks based on user-provided bounding boxes, suitable for various object processing tasks.

Model Features

High-definition pixel-level quality
Generates high-quality masks at 1024x1024 resolution, far superior to traditional 256x256 resolution models
Box-prompt control
Users can precisely control the object to be segmented through bounding boxes
End-to-end matting
Directly outputs alpha channel masks without post-processing or trimap
E-commerce optimization
Specially trained and optimized for product images

Model Capabilities

Image segmentation
Object matting
Background removal
Salient object detection

Use Cases

E-commerce
Product background removal
Remove backgrounds for product images on e-commerce platforms
Generate clean product images with transparent backgrounds
Object recoloring
Change product colors without affecting the background
Achieve product color variant displays
Product replacement
Replace specific products in scenes
Create product displays in different environments
Image editing
Object erasure
Precisely remove unwanted objects from images
Clean image editing effects
Background replacement
Add new backgrounds to objects
Create images in different scenes
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