Skip to content

Hemanth-TS/project

Repository files navigation

Object Detection with MobileNetSSDv2 and Faster R-CNN and the TensorFlow Object Detection API

Thannks to https://github.com/Tony607/object_detection_demo for the intial demo!

What is contained in this repo

  • A tutorial to train and use MobileNetSSDv2 with the TensorFlow Object Detection API
  • A tutorial to train and use Faster R-CNN with the TensorFlow Object Detection API

What you will learn (MobileNetSSDv2)

  • How to load your custom image detection from Roboflow (here we use a public blood cell dataset with tfrecord)
  • Download base MobileNetSSDv2 model
  • Set up training environment
  • Configure training pipeline and train the model
  • Export the trained model's .pb inference graph
  • Use the saved model for inference

What you will learn (Faster R-CNN)

  • How to load your custom image data from Roboflow (here we use a public blood cell dataset with tfrecord)
  • Download base pretrained Faster R-CNN model
  • Set up training environment
  • Configure training pipeline and train model
  • Export the trained model's .pb inference graph
  • Use the saved model for inference

Resources available

  • This blog post for MobileNetSSDv2 walks through the tutorial
  • This blog post for Faster R-CNN walks through the tutorial
  • For the MobileNetSSDv2 model tutorial Open In Colab
  • For the Faster R-CNN model tutorial Open In Colab
  • For reading purposes, for MobileNetSSDv2, the notebook is saved here as Tutorial_Mobilenet.ipynb
  • For reading purposes, for Faster R-CNN, the notebook is also saved here as Tutorial_Faster_RCNN.ipynb

About Roboflow for Data Management

Roboflow makes managing, preprocessing, augmenting, and versioning datasets for computer vision seamless. Developers reduce 50% of their code when using Roboflow's workflow, automate annotation quality assurance, save training time, and increase model reproducibility.

alt text

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Packages

No packages published