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Derivative Delay Embedding - Markov Geographic Model (DDE-MGM)

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Delay Embedding

Time series modeling and classification based on delay embedding.

Pre-requisites

Matlab (the code has been tested on Matlab 2015a)

Run the test

Run MAIN.m

>> MAIN

Preliminary Results

The running print on MSR Action 3D dataset is shown as follow

Processing the MSR_Action3D dataset 
Trained 50 / 284
Trained 100 / 284
Trained 150 / 284
Trained 200 / 284
Trained 250 / 284
tested 50 / 273
tested 100 / 273
tested 150 / 273
tested 200 / 273
tested 250 / 273
Training time: 2.670sec, 0.009sec per sample
Testing time: 16.898sec, 0.062sec per sample
Accuracy = 93.77%

Comparison to the state-of-the-art algorithms

Moving poselets (ICCV2015) dRNN (ICCV2015) HBRNN (CVPR2015) Actionlets & Poselets (CVPR2016) Our method
Accuracy 93.6% 92.03% 94.49%* 93.0% 93.77% / 94.52%*

Note: the * marker denotes the results from subsets, which is usually higher than that from the whole dataset

Folders and Files

  • DE implements Delay Embedding

    • delayEmbeding.m implements 1-D delay embedding
    • delayEmbedingND.m implements multi-dimensional delay embedding
  • MGM learns Markov Geographic Model

    • createGrid.m creates discretized embedding space.
    • add2Trans.m records learned transition
    • Trans_Prob.m computes transition probability
    • HDist.m calculates distance between a testing sample and learned model (transition probability)
  • data

  • utilities

    • confusionMatrix.m plots the confusion matrix
    • defaultColors.mat stores the default color map of Matlab
    • lowpassFilter.m performs low-pass filter to filter the raw data
  • paper includes the published paper and presentation

  • PPT presentation, 194MB

Citation

Zhifei Zhang, Yang Song, Wei Wang, and Hairong Qi. "Derivative Delay Embedding: Online Modeling of Streaming Time Series". The 25th ACM International Conference on Information and Knowledge Management (CIKM), 2016. (PDF)

#!latex

@inproceedings{zhang2016derivative,
  title={Derivative Delay Embedding: Online Modeling of Streaming Time Series},
  author={Zhang, Zhifei and Song, Yang and Wang, Wei and Qi, Hairong},
  booktitle={Proceedings of the 25th ACM International on Conference on Information and Knowledge Management},
  pages={969--978},
  year={2016},
  organization={ACM}
}

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