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Upernet Convnext Xlarge

Developed by openmmlab
UperNet is a framework for semantic segmentation, utilizing ConvNeXt as the backbone network, capable of predicting semantic labels for each pixel.
Downloads 659
Release Time : 1/13/2023

Model Overview

UperNet is a semantic segmentation framework that includes a backbone network, Feature Pyramid Network (FPN), and Pyramid Pooling Module (PPM). This model incorporates the ConvNeXt xlarge architecture and is suitable for scene understanding tasks.

Model Features

Efficient Semantic Segmentation
Combines the ConvNeXt xlarge backbone network to provide efficient semantic segmentation capabilities.
Multi-component Architecture
Includes Feature Pyramid Network (FPN) and Pyramid Pooling Module (PPM) to enhance segmentation accuracy.
Scene Understanding
Suitable for scene understanding tasks, capable of predicting semantic labels for each pixel.

Model Capabilities

Image Segmentation
Scene Understanding
Pixel-level Semantic Prediction

Use Cases

Computer Vision
Autonomous Driving Scene Understanding
Used for road, vehicle, and pedestrian segmentation in autonomous driving.
Medical Image Analysis
Used for organ or lesion region segmentation in medical images.
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