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Deepsense: a unified deep learning framework for time-series mobile sensing data processing.

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DeepSense

Tensorflow 1.1 implementation for the paper:

Yao, Shuochao, et al. "Deepsense: A unified deep learning framework for time-series mobile sensing data processing." Proceedings of the 26th International Conference on World Wide Web. International World Wide Web Conferences Steering Committee, 2017.

The preprocessed dataset of HHAR task

https://www.dropbox.com/s/z7zpnwh2ndthd2n/sepHARData_a.tar.gz?dl=0


Updated by zhezh(2017-09-07):

This modified version boosts training speed over 10 times by using a tfrecord file (stored in SSD partition) instead of seperate files.

Changes:

  • Changed data input pipeline to use tfrecord instead of seperate files. This saves storage and improve IO effiency.

Data preprocessing:

  • Download the dataset provided by original developer and unzip the archive file.
  • Modify lines tagged 'todo' to your data folder path
  • Run 'har_tfrecord_util.py' to generate tfrecord
  • Run 'deepSense_HHAR_tf.py' to train

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