4.6 Article

A Class Incremental Extreme Learning Machine for Activity Recognition

Journal

COGNITIVE COMPUTATION
Volume 6, Issue 3, Pages 423-431

Publisher

SPRINGER
DOI: 10.1007/s12559-014-9259-y

Keywords

Extreme learning machine; Incremental learning; Activity recognition; Mobile device

Funding

  1. Natural Science Foundation of China [61070110, 90820303]
  2. Beijing Natural Science Foundation [4112056, 4144085]
  3. Beijing Key Laboratory of Mobile Computing and Pervasive Device
  4. National Science and Technology Major Project [2012ZX07205-005]
  5. Scientific and Technological Project of He'nan Province [132102310258]

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Automatic activity recognition is an important problem in cognitive systems. Mobile phone-based activity recognition is an attractive research topic because it is unobtrusive. There are many activity recognition models that can infer a user's activity from sensor data. However, most of them lack class incremental learning abilities. That is, the trained models can only recognize activities that were included in the training phase, and new activities cannot be added in a follow-up phase. We propose a class incremental extreme learning machine (CIELM). It (1) builds an activity recognition model from labeled samples using an extreme learning machine algorithm without iterations; (2) adds new output nodes that correspond to new activities; and (3) only requires labeled samples of new activities and not previously used training data. We have tested the method using activity data. Our results demonstrated that the CIELM algorithm is stable and can achieve a similar recognition accuracy to the batch learning method.

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