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|a Razzaque, Mohammad Abdur.
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|a Hands-On Deep Learning for IoT :
|b Train Neural Network Models to Develop Intelligent IoT Applications /
|c Mohammad Abdur Razzaque, Md. Rezaul Karim.
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|a Birmingham :
|b Packt Publishing, Limited,
|c 2019.
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300 |
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|a 1 online resource (298 pages)
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|a text
|b txt
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|a Cover; Title Page; Copyright and Credits; About Packt; Contributors; Table of Contents; Preface; Section 1: IoT Ecosystems, Deep Learning Techniques, and Frameworks; Chapter 1: The End-to-End Life Cycle of the IoT; The E2E life cycle of the IoT; The three-layer E2E IoT life cycle; The five-layer IoT E2E life cycle; IoT system architectures; IoT application domains; The importance of analytics in IoT; The motivation to use DL in IoT data analytics; The key characteristics and requirements of IoT data; Real-life examples of fast and streaming IoT data; Real-life examples of IoT big data
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|a Reference; Chapter 2: Deep Learning Architectures for IoT; A soft introduction to ML; Working principle of a learning algorithm; General ML rule of thumb; General issues in ML models; ML tasks; Supervised learning; Unsupervised learning; Reinforcement learning; Learning types with applications; Delving into DL; How did DL take ML to the next level?; Artificial neural networks; ANN and the human brain; A brief history of ANNs; How does an ANN learn?; Training a neural network; Weight and bias initialization; Activation functions; Neural network architectures; Deep neural networks
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|a AutoencodersConvolutional neural networks; Recurrent neural networks; Emergent architectures; Residual neural networks; Generative adversarial networks; Capsule networks; Neural networks for clustering analysis; DL frameworks and cloud platforms for IoT; Summary; Section 2: Hands-On Deep Learning Application Development for IoT; Chapter 3: Image Recognition in IoT; IoT applications and image recognition; Use case one -- image-based automated fault detection; Implementing use case one; Use case two -- image-based smart solid waste separation; Implementing use case two
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|a Transfer learning for image recognition in IoTCNNs for image recognition in IoT applications; Collecting data for use case one; Exploring the dataset from use case one; Collecting data for use case two; Data exploration of use case two; Data pre-processing; Models training; Evaluating models; Model performance (use case one); Model performance (use case two); Summary; References; Chapter 4: Audio/Speech/Voice Recognition in IoT; Speech/voice recognition for IoT; Use case one -- voice-controlled smart light; Implementing use case one; Use case two -- voice-controlled home access
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|a Implementing use case twoDL for sound/audio recognition in IoT; ASR system model; Features extraction in ASR; DL models for ASR; CNNs and transfer learning for speech recognition in IoT applications; Collecting data; Exploring data; Data preprocessing; Models training; Evaluating models; Model performance (use case 1); Model performance (use case 2); Summary; References; Chapter 5: Indoor Localization in IoT; An overview of indoor localization; Techniques for indoor localization; Fingerprinting; DL-based indoor localization for IoT; K-nearest neighbor (k-NN) classifier; AE classifier
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|a Example -- Indoor localization with Wi-Fi fingerprinting
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|a This book will provide you an overview of Deep Learning techniques to facilitate the analytics and learning in various IoT apps. We will take you through each process - from data collection, analysis, modeling, statistics, and monitoring. We will make IoT data speak with a set of popular frameworks, like TensorFlow, TensorFlow Lite, and Chainer.
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|a Print version record.
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504 |
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|a Includes bibliographical references.
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590 |
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|a eBooks on EBSCOhost
|b EBSCO eBook Subscription Academic Collection - Worldwide
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650 |
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|a Internet of things.
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|a Internet des objets.
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|a Artificial intelligence.
|2 bicssc
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|a Pattern recognition.
|2 bicssc
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650 |
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|a Computer vision.
|2 bicssc
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|a Neural networks & fuzzy systems.
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|a Computers
|x Intelligence (AI) & Semantics.
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|a Computers
|x Computer Vision & Pattern Recognition.
|2 bisacsh
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650 |
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|a Computers
|x Neural Networks.
|2 bisacsh
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|a Internet of things.
|2 fast
|0 (OCoLC)fst01894151
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700 |
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|a Karim, Md. Rezaul
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776 |
0 |
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|i Print version:
|a Karim, Rezaul.
|t Hands-On Deep Learning for IoT : Train Neural Network Models to Develop Intelligent IoT Applications.
|d Birmingham : Packt Publishing, Limited, ©2019
|z 9781789616132
|
856 |
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