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Sam Hq Vit Base

Developed by syscv-community
SAM-HQ is an enhanced version of Segment Anything Model, generating higher-quality object masks through input prompts like points or boxes
Downloads 5,316
Release Time : 2/18/2025

Model Overview

This model improves upon the original SAM, capable of producing more precise segmentation masks, especially adept at handling complex boundaries and thin-structured objects, suitable for scenarios like image editing and automated annotation

Model Features

High-quality mask generation
Through specially designed high-quality output tokens, significantly improves mask prediction quality, especially for complex boundaries and thin-structured objects
Global-local feature fusion
Combines early and final ViT features, integrating high-level semantics with low-level boundary information for more accurate segmentation
Efficient improvement
Adds less than 0.5% of parameters, with improvements completed in just 4 hours of training on 8 GPUs
Zero-shot generalization capability
Maintains the original SAM's zero-shot generalization ability while performing better on 10 downstream tasks

Model Capabilities

Prompt-based mask generation
Automatic mask generation
High-quality image segmentation
Zero-shot transfer learning

Use Cases

Image editing
Precise object segmentation
Used for accurate object selection and separation in image editing software
Generates finer object edges compared to the original SAM
Automated annotation
Data annotation assistance
Generates high-quality annotations for computer vision datasets
Reduces manual annotation workload and improves annotation accuracy
Medical image analysis
Organ segmentation
Used for segmenting organs or lesion areas in medical images
Capable of handling complex boundary structures in medical images
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