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E-book: Deep Learning in Visual Computing and Signal Processing

  • Format: 288 pages
  • Pub. Date: 20-Oct-2022
  • Publisher: Taylor & Francis Ltd
  • ISBN-13: 9781000564884
  • Format - EPUB+DRM
  • Price: 170,30 €*
  • * the price is final i.e. no additional discount will apply
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  • This ebook is for personal use only. E-Books are non-refundable.
  • Format: 288 pages
  • Pub. Date: 20-Oct-2022
  • Publisher: Taylor & Francis Ltd
  • ISBN-13: 9781000564884

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An enlightening amalgamation of deep learning concepts with visual computing and signal processing applications, this new volume covers the fundamentals and advanced topics in designing and deploying techniques using deep architectures and their application in visual computing and signal processing.

The volume first lays out the fundamentals of deep learning as well as deep learning architectures and frameworks. It goes on to discuss deep learning in neural networks and deep learning for object recognition and detection models. It looks at the various specific applications of deep learning in visual and signal processing, such as in biorobotics, for automated brain tumor segmentation in MRI images, in neural networks for use in seizure classification, for digital forensic investigation based on deep learning, and more.