Biomedical Sensors and Smart Sensing Biomedical Sensors and Smart Sensing
Primers in Biomedical Imaging Devices and Systems

Biomedical Sensors and Smart Sensing

A Beginner's Guide

    • USD 104.99
    • USD 104.99

Descripción editorial

Biomedical Sensors and Smart Sensing: A Beginner's Guide, a book in the 10-volume Primers in Biomedical Imaging Devices and Systems series, covers a wide range of interdisciplinary applications in imaging modalities, nuclear medicine, computed tomographic systems, x-ray systems, magnetic resonance imaging, ultrasound, and virtual reality.  The series explores the essential fundamental techniques required to analyze and process signals and images for diagnosis, scientific discovery and medical applications. Volumes in this series cover a wide range of interdisciplinary areas, combining foundational content with practical case studies to demonstrate the applications of these technologies in real-world situations.

In addition, the 10-volume series considers various medical devices, electronics, circuits, sensors and algorithms. Several applications ranging from basic biological science to clinical practice are included to facilitate ongoing research.



- Covers a variety of sensing and signal processing techniques



- Introduces different approaches relating to communication and intelligent data processing for early detection and prediction of diseases



- Includes practical case studies

GÉNERO
Técnicos y profesionales
PUBLICADO
2022
2 de junio
IDIOMA
EN
Inglés
EXTENSIÓN
166
Páginas
EDITORIAL
Academic Press
VENDEDOR
Elsevier Ltd.
TAMAÑO
28.3
MB
Intelligent Electrical Systems: Intelligent Electrical Systems:
2021
A Beginner's Guide to Data Agglomeration and Intelligent Sensing A Beginner's Guide to Data Agglomeration and Intelligent Sensing
2020
Magnetic Resonance Imaging Magnetic Resonance Imaging
2022
Deep Learning for Chest Radiographs Deep Learning for Chest Radiographs
2021
Applied Speech Processing Applied Speech Processing
2021
Deep Learning Models for Medical Imaging Deep Learning Models for Medical Imaging
2021