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Birefnet Lite

Developed by ZhengPeng7
BiRefNet is a high-resolution binary image segmentation model that employs a bilateral reference framework and delivers excellent performance across multiple image segmentation tasks.
Downloads 15.93k
Release Time : 8/2/2024

Model Overview

BiRefNet is a deep learning model specifically designed for high-resolution binary image segmentation, primarily used for tasks such as background removal, mask generation, and salient object detection.

Model Features

High-resolution processing capability
Optimized specifically for high-resolution images, capable of handling images with resolutions of 1024x1024 and above
Multi-task adaptability
Achieves state-of-the-art performance on multiple image segmentation tasks including DIS, HRSOD, and COD
Efficient inference
Supports half-precision inference, optimizing computational efficiency

Model Capabilities

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

Use Cases

Image editing
Product image background removal
Automatically separates product subjects from backgrounds
Generates product images with transparent backgrounds
Portrait segmentation
Precisely extracts people from complex backgrounds
Can be used for ID photo production, virtual background replacement, etc.
Computer vision
Salient object detection
Identifies the most eye-catching objects in an image
Provides support for visual attention analysis
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