SFr. 169.00
€ 182.52
BTC 0.0028
LTC 2.507
ETH 0.0527


bestellen

Artikel-Nr. 34161806


Diesen Artikel in meine
Wunschliste
Diesen Artikel
weiterempfehlen
Diesen Preis
beobachten

Weitersagen:



Autor(en): 
  • Michael Stephan
  • Anand Dubey
  • Avik Santra
  • Souvik Hazra
  • Lorenzo Servadei
  • Thomas Stadelmayer
  • Methods and Techniques in Deep Learning: Advancements in mmWave Radar Solutions 
     

    (Buch)
    Dieser Artikel gilt, aufgrund seiner Grösse, beim Versand als 3 Artikel!


    Übersicht

    Auf mobile öffnen
     
    Lieferstatus:   Auf Bestellung (Lieferzeit unbekannt)
    Veröffentlichung:  November 2022  
    Genre:  EDV / Informatik 
     
    AI / Artificial Intelligence / computer science / Deep Learning / Electrical & Electronics Engineering / Elektrotechnik u. Elektronik / Fernerkundung / Informatik / KI / Künstliche Intelligenz / Mikrowellen- u. Hochfrequenztechnik u. Theorie / Remote sensing / RF / Microwave Theory & Techniques
    ISBN:  9781119910657 
    EAN-Code: 
    9781119910657 
    Verlag:  Wiley 
    Einband:  Gebunden  
    Sprache:  English  
    Dimensionen:  H 229 mm / B 152 mm / D 19 mm 
    Gewicht:  552 gr 
    Seiten:  336 
    Bewertung: Titel bewerten / Meinung schreiben
    Inhalt:
    Methods and Techniques in Deep Learning Introduces multiple state-of-the-art deep learning architectures for mmWave radar in a variety of advanced applications Methods and Techniques in Deep Learning: Advancements in mmWave Radar Solutions provides a timely and authoritative overview of the use of artificial intelligence (AI)-based processing for various mmWave radar applications. Focusing on practical deep learning techniques, this comprehensive volume explains the fundamentals of deep learning, reviews cutting-edge deep metric learning techniques, describes different typologies of reinforcement learning (RL) algorithms, highlights how domain adaptation (DA) can be used for improving the performance of machine learning (ML) algorithms, and more. Throughout the book, readers are exposed to product-ready deep learning solutions while learning skills that are relevant for building any industrial-grade, sensor-based deep learning solution. A team of authors with more than 70 filed patents and 100 published papers on AI and sensor processing illustrates how deep learning is enabling a range of advanced industrial, consumer, and automotive applications of mmWave radars. In-depth chapters cover topics including multi-modal deep learning approaches, the elemental blocks required to formulate Bayesian deep learning, how domain adaptation (DA) can be used for improving the performance of machine learning algorithms, and geometric deep learning are used for processing point clouds. In addition, the book: * Discusses various advanced applications and how their respective challenges have been addressed using different deep learning architectures and algorithms * Describes deep learning in the context of computer vision, natural language processing, sensor processing, and mmWave radar sensors * Demonstrates how deep parametric learning reduces the number of trainable parameters and improves the data flow * Presents several human-machine interface (HMI) applications such as gesture recognition, human activity classification, human localization and tracking, in-cabin automotive occupancy sensing Methods and Techniques in Deep Learning: Advancements in mmWave Radar Solutions is an invaluable resource for industry professionals, researchers, and graduate students working in systems engineering, signal processing, sensors, data science, and AI.

      



    Wird aktuell angeschaut...
     

    Zurück zur letzten Ansicht


    AGB | Datenschutzerklärung | Mein Konto | Impressum | Partnerprogramm
    Newsletter | 1Advd.ch RSS News-Feed Newsfeed | 1Advd.ch Facebook-Page Facebook | 1Advd.ch Twitter-Page Twitter
    Forbidden Planet AG © 1999-2024
    Alle Angaben ohne Gewähr
     
    SUCHEN

     
     Kategorien
    Im Sortiment stöbern
    Genres
    Hörbücher
    Aktionen
     Infos
    Mein Konto
    Warenkorb
    Meine Wunschliste
     Kundenservice
    Recherchedienst
    Fragen / AGB / Kontakt
    Partnerprogramm
    Impressum
    © by Forbidden Planet AG 1999-2024