<p><span lang="EN-US" style="font-size: 11.0pt; font-family: 'Calibri',sans-serif; mso-bidi-font-family: 'Times New Roman'; color: #1f497d;">This book focuses on the development of multisensor fusion algorithms for wearable devices that are useful in ambulatory health monitoring using signal-processing and deep learning-based methods. The algorithms described account for the signal quality prior to fusion, in order to enable reliable inferences without contributing to additional computational overhead. The content discussed is beneficial in the broad application of multisensor fusion, as the algorithms developed or discussed in the final chapters are generalized cases of the methods developed in the initial chapters, offering relevance to the broader multisensor fusion community.</span></p><div class="td td-borders align-column-left" tabindex="0" role="gridcell" data-position="0,0"><ul><li class="td-custom-content"><span class="mx-text mx-name-text_AdddedUsp">Provides a single-source reference to the development of fusion methods and analysis of fusion algorithms</span></li><li class="td-custom-content"><span class="mx-text mx-name-text_AdddedUsp">Treats fusion as a signal-processing-based problem, applied to a wide variety of fusion applications</span></li><li class="td-custom-content"><span class="mx-text mx-name-text_AdddedUsp">Describes a step-by-step methodology for development of a generalized fusion algorithm for any application</span></li></ul></div><div class="td td-borders align-column-center" tabindex="-1" role="gridcell" data-position="1,0"><div class="td-custom-content">&#xa0;</div></div><div class="tr" role="row"><div class="td align-column-left" tabindex="-1" role="gridcell" data-position="0,1"><div class="td-custom-content">&#xa0;</div></div><div class="td align-column-center" tabindex="-1" role="gridcell" data-position="1,1"><div class="td-custom-content"><div class="mx-name-container6">&#xa0;</div></div></div><div class="td column-selector" tabindex="-1" role="gridcell">&#xa0;</div></div><div class="tr" role="row"><div class="td align-column-left" tabindex="-1" role="gridcell" data-position="0,2"><div class="td-custom-content">&#xa0;</div></div></div><p>&#xa0;</p>

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Deep Learning and Signal-Processing Methods for Multisensor Data Fusion

  • Arlene John,
  • Barry Cardiff,
  • Deepu John

摘要

This book focuses on the development of multisensor fusion algorithms for wearable devices that are useful in ambulatory health monitoring using signal-processing and deep learning-based methods. The algorithms described account for the signal quality prior to fusion, in order to enable reliable inferences without contributing to additional computational overhead. The content discussed is beneficial in the broad application of multisensor fusion, as the algorithms developed or discussed in the final chapters are generalized cases of the methods developed in the initial chapters, offering relevance to the broader multisensor fusion community.

  • Provides a single-source reference to the development of fusion methods and analysis of fusion algorithms
  • Treats fusion as a signal-processing-based problem, applied to a wide variety of fusion applications
  • Describes a step-by-step methodology for development of a generalized fusion algorithm for any application