Long story short:

How to prepare data for lstm object detection retraining of the tensorflow master github implementation.

Long story:

Hi all, I recently found implementation a lstm object detection algorithm based on this paper: http://openaccess.thecvf.com/content_cvpr_2018/papers/Liu_Mobile_Video_Object_CVPR_2018_paper.pdf

at the tensorflow model master github repository (https://github.com/tensorflow/models/tree/master/research/lstm_object_detection)

I would like to retrain this implementation on my own dataset to evaluate the lstm improvement to other algorithms like SSD. But I keep struggling on how to prepare the data for the training. I've tried the config file of the authors and tried to prepare the data similar to the object-detection-api and also tried to use the same procedure as the inputs/seq_dataset_builder_test.py or inputs/tf_sequence_example_decoder_test.py does. Sadly the github Readme does not provide any information. Someone else created an issue with a similar question on the github repo (https://github.com/tensorflow/models/issues/5869) but the authors did not provide a helpful answer yet. I tried to contact the authors via email a month ago, but didn't got a response. I've also searched the internet but found no solution. Therefore I desperately write to you!

Is anybody out there who can explain how to prepare the data for the retraining and how to actually run the retraining.

Thank you for reading, any help is really appreciated!

  • The more I search for information about this model, the more frustrated I get. The algorithm and the idea are cool, but the support to the code is non existent and their code is broken, undocumented and unusable... – GPhilo Jul 31 '19 at 15:56

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