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Birefnet HR Matting

Developed by ZhengPeng7
BiRefNet is a high-resolution binary image segmentation model based on bilateral reference, specifically designed for high-resolution transparent image matting.
Downloads 141.30k
Release Time : 2/12/2025

Model Overview

BiRefNet is a model focused on high-resolution image segmentation, particularly suitable for transparent image matting tasks. It achieves efficient background removal and mask generation through a bilateral reference mechanism.

Model Features

High-resolution processing
Supports 2048x2048 resolution image processing, suitable for high-precision matting needs
Bilateral reference mechanism
Adopts a bilateral reference architecture to enhance segmentation accuracy
Multi-task support
Simultaneously supports various tasks such as background removal, mask generation, and salient object detection
Efficient inference
Supports FP16 mode to improve inference efficiency

Model Capabilities

High-resolution image segmentation
Transparent image matting
Background removal
Mask generation
Salient object detection
Camouflaged object detection

Use Cases

Image editing
Product image background removal
Used for automated background removal of e-commerce product images
Generates product images with transparent backgrounds
Portrait matting
Achieves high-precision portrait segmentation and background replacement
Generates high-quality transparent portraits
Visual effects
Film special effects production
Used for object separation in film post-production
Achieves precise object segmentation and compositing
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