02-29-2024 03:54 AM
The first version of our object detection model package - YoloDarknet for the G environment has just been released!
Model available in this pack : Tiny YoloV7, Tiny Yolo V3, Yolo V4.
Install Darknet environment 👉🏼 https://graiphic.io/setup-darknet-environnement/
Train Yolo Darknet 👉🏼https://graiphic.io/training-darknet-yolo-procedure/
LabVIEW compatibility versions
LabVIEW64 2020SP1, LabVIEW64 2024Q1 are supported with this release.
Hardware compatibility driver
CUDA 12.3 & Cudnn 8.9.0
Use GIM our unified installation platform to make this pack working properly with Cuda (do not install cuda by yourselve our tool is here to simplify your life !!).
👉🏼 Visit us now
www.graiphic.io
👉🏼 𝐓𝐈𝐆𝐑 website
https://tigr.graiphic.io/
👉🏼 Download GIM and try 𝐓𝐈𝐆𝐑 𝗟𝗮𝗯𝗩𝗜𝗘𝗪 𝐯𝐢𝐬𝐢𝐨𝐧 𝐭𝐨𝐨𝐥𝐤𝐢𝐭
https://graiphic.io/download/
👉🏼 Get started with TIGR, LabVIEW computer vision toolkit
https://tigr.graiphic.io/documentation/introduction/
👉🏼 Get started with HAIBAL, LabVIEW deep learning toolkit
https://haibal.com/documentation/introduction/
👉🏼 Get started with PERRINE, LabVIEW GPU toolkit
https://perrine.graiphic.io/documentation/introduction/
Youssef Menjour
Graiphic
LabVIEW architect passionate about robotics and deep learning.
Follow us on LinkedIn
linkedin.com/company/graiphic
Follow us on YouTube
youtube.com/@graiphic
02-29-2024 04:20 AM
Interesting, thank you. Currently I playing with YOLO in attempts to train x-ray defects and some objects with own data set. One question — are you supporting Oriented Bounding Boxes (OBB), introduced in YOLO 8.1 few weeks ago? YOLO 9 seems to be not supported this, the only YOLO 8.1. Something like that:
?
02-29-2024 04:26 AM
Hi Andrey,
Possible, what framework are you using for your YOLO (Keras, Pytorch or Tensorflow) ?
Could you share to me a model ?
Youssef Menjour
Graiphic
LabVIEW architect passionate about robotics and deep learning.
Follow us on LinkedIn
linkedin.com/company/graiphic
Follow us on YouTube
youtube.com/@graiphic