Upernet Convnext Small
UperNet is a framework for semantic segmentation that uses ConvNeXt as its backbone network, enabling pixel-level semantic label prediction.
Downloads 43.31k
Release Time : 1/13/2023
Model Overview
UperNet is a semantic segmentation framework that includes core components such as a backbone network, Feature Pyramid Network (FPN), and Pyramid Pooling Module (PPM), supporting adaptation to any visual backbone network.
Model Features
Efficient Backbone Network
Utilizes the ConvNeXt small backbone network, combining modern convolutional network design principles to provide efficient feature extraction capabilities.
Modular Design
Includes Feature Pyramid Network (FPN) and Pyramid Pooling Module (PPM), supporting flexible adaptation to different visual backbone networks.
Pixel-level Prediction
Capable of fine-grained pixel-level semantic label prediction, suitable for complex scene understanding tasks.
Model Capabilities
Image Segmentation
Scene Understanding
Pixel-level Semantic Analysis
Use Cases
Computer Vision
Autonomous Driving Scene Understanding
Used for semantic segmentation of road scenes in autonomous vehicles, identifying elements such as roads, pedestrians, and vehicles.
Medical Image Analysis
Applied to segment organs or lesion areas in medical imaging, aiding in diagnosis and treatment planning.
Featured Recommended AI Models
Š 2025AIbase