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A SAM model with GroundingDINO model for feet segmentation

Project description

DiagAssistAI

GitHub License Static Badge PyPI - Version

modelo

Installation

GSamNetwork requires python==3.10.12, as well as torch==2.4.0.

Installing PyTorch

Make sure to check the version of Python that is compatible with your CUDA version at the following link: Installing torch locally.

In this project, CUDA 12.1 was used. You can install PyTorch with support for CUDA 12.1 using the following command:

pip3 install torch torchvision torchaudio --index-url https://download.pytorch.org/whl/cu121

Installing Package

To install the package, use:

pip install groundino-samnet

Version 0.5.3

Fixed

Fixed: Error in the implementation of Efficientvit for MobileSAM

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