/Custom-Object-Detection

Custom Object Detection with TensorFlow

Primary LanguagePythonMIT LicenseMIT

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Custom Object Detection with TensorFlow

Object detection allows for the recognition, detection, and localization of multiple objects within an image. It provides us a much better understanding of an image as a whole as apposed to just visual recognition.

Why Object Detection?

Installation

First, with python and pip installed, install the scripts requirements:

pip install -r requirements.txt

Then you must compile the Protobuf libraries:

protoc object_detection/protos/*.proto --python_out=.

Add models and models/slim to your PYTHONPATH:

export PYTHONPATH=$PYTHONPATH:`pwd`:`pwd`/slim

Note: This must be ran every time you open terminal, or added to your ~/.bashrc file.

Usage

1) Create the TensorFlow Records

Run the script:

python object_detection/create_tf_record.py

Once the script finishes running, you will end up with a train.record and a val.record file. This is what we will use to train the model.

2) Download a Base Model

Training an object detector from scratch can take days, even when using multiple GPUs! In order to speed up training, we’ll take an object detector trained on a different dataset, and reuse some of it’s parameters to initialize our new model.

You can find models to download from this model zoo. Each model varies in accuracy and speed. I used faster_rcnn_resnet101_coco for the demo.

Extract the files and move all the model.ckpt to our models directory.

Note: If you don't use faster_rcnn_resnet101_coco, replace faster_rcnn_resnet101.config with the corresponding config file.

3) Train the Model

Run the following script to train the model:

python object_detection/train.py \
        --logtostderr \
        --train_dir=train \
        --pipeline_config_path=faster_rcnn_resnet101.config

4) Export the Inference Graph

The training time is dependent on the amount of training data. My model was pretty solid at ~4.5k steps. The loss reached a minimum at ~20k steps. I let it train for 200k steps, but there wasn't much improvement.

Note: If training takes way to long, read this.

I recommend testing your model every ~5k steps to make sure you’re on the right path.

You can find checkpoints for your model in Custom-Object-Detection/train.

Move the model.ckpt files with the highest number to the root of the repo:

  • model.ckpt-STEP_NUMBER.data-00000-of-00001
  • model.ckpt-STEP_NUMBER.index
  • model.ckpt-STEP_NUMBER.meta

In order to use the model, you first need to convert the checkpoint files (model.ckpt-STEP_NUMBER.*) into a frozen inference graph by running this command:

python object_detection/export_inference_graph.py \
        --input_type image_tensor \
        --pipeline_config_path faster_rcnn_resnet101.config \
        --trained_checkpoint_prefix model.ckpt-STEP_NUMBER \
        --output_directory output_inference_graph

You should see a new output_inference_graph directory with a frozen_inference_graph.pb file.

5) Test the Model

Just run the following command:

python object_detection/object_detection_runner.py

It will run your object detection model found at output_inference_graph/frozen_inference_graph.pb on all the images in the test_images directory and output the results in the output/test_images directory.

Results

Here’s what I got from running my model over all the frames in this clip from Star Wars: The Force Awakens.

Watch the video

License

MIT