Upernet Swin Small
UperNet is a framework for semantic segmentation, utilizing Swin Transformer as the backbone network to achieve pixel-level semantic label prediction.
Downloads 1,467
Release Time : 1/13/2023
Model Overview
UperNet is a semantic segmentation framework that includes core components such as the backbone network, Feature Pyramid Network (FPN), and Pyramid Pooling Module (PPM), supporting compatibility with any visual backbone network.
Model Features
Swin Transformer-Based Backbone Network
Utilizes Swin Transformer as the backbone network, offering efficient hierarchical feature extraction capabilities.
Flexible Architecture Design
Supports compatibility with any visual backbone network, facilitating extension and customization.
Multi-Component Integration
Includes Feature Pyramid Network (FPN) and Pyramid Pooling Module (PPM) to enhance semantic segmentation performance.
Model Capabilities
Image Segmentation
Pixel-Level Semantic Label Prediction
Use Cases
Computer Vision
Scene Understanding
Used for object recognition and region segmentation in scene images.
Autonomous Driving
Used for semantic segmentation of roads and obstacles, assisting autonomous driving systems.
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