3

I am trying to combine two frozen models (protobuffs) for object detection. The issue is one of the models is my own dataset and the other is the prebuilt model for coco dataset (just include more classes to the dataset itself). Is this possible? or is there a better approach to perform this? As training all the classes from scratch will probably take weeks. Thanks for the help in advance.

0

The issue is one of the models is my own dataset and the other is the prebuilt model for coco dataset (just include more classes to the dataset itself). Is this possible?

Of course, it's possible. But you need to train the model again. When you train the model using your data like this,

python object_detection/train.py \
    --logtostderr \
    --pipeline_config_path=${PATH_TO_YOUR_PIPELINE_CONFIG} \
    --train_dir=${PATH_TO_TRAIN_DIR}

Here the ${PATH_TO_YOUR_PIPELINE_CONFIG} is your config file and you need to specify the pre-trained model path as below,

fine_tune_checkpoint: "PATH_TO_BE_CONFIGURED/model.ckpt"

So doing this will help your training to converge faster, because instead of starting from scratch now your network will start from coco dataset's training weights.

You need to download the coco model from here which you want to use. Then specify the model file path on the config file demonstrated above.

1
  • This doesn't add the new classes to the old ones, yes I understand about fast convergence and less time to train.. but I needed to combine both classes from an existing dataset with a new custom one – TheWiz May 3 '19 at 22:44

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.