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Birefnet Dynamic

Developed by ZhengPeng7
BiRefNet is an advanced model for high-resolution binary image segmentation, particularly adept at background removal and mask generation tasks.
Downloads 431
Release Time : 3/31/2025

Model Overview

BiRefNet is a bilateral reference-based high-resolution binary image segmentation model that can efficiently and accurately perform tasks such as background removal, mask generation, camouflaged object detection, and salient object detection.

Model Features

High-resolution processing capability
Capable of processing high-resolution images while maintaining detail accuracy
Bilateral reference mechanism
Adopts a bilateral reference architecture to improve segmentation accuracy
Multi-task support
Supports various image segmentation tasks, including background removal and mask generation

Model Capabilities

Background removal
Mask generation
Binary image segmentation
Camouflaged object detection
Salient object detection

Use Cases

Image editing
Background removal for product images
Used for background removal and replacement of e-commerce product images
Generates precise product contour masks
Computer vision
Preprocessing for object detection
Serves as a preprocessing step for object detection systems
Improves the accuracy of subsequent object detection
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