Home
Multimodal Intelligent Sensing Modern Applications
Barnes and Noble
Multimodal Intelligent Sensing Modern Applications
Current price: $150.00


Barnes and Noble
Multimodal Intelligent Sensing Modern Applications
Current price: $150.00
Size: Hardcover
Loading Inventory...
*Product information may vary - to confirm product availability, pricing, shipping and return information please contact Barnes and Noble
Discover the design, implementation, and analytical techniques for multi-modal intelligent sensing in this cutting-edge text
The Internet of Things (IoT) is becoming ever more comprehensively integrated into everyday life. The intelligent systems that power smart technologies rely on increasingly sophisticated sensors in order to monitor inputs and respond dynamically. Multi-modal sensing offers enormous benefits for these technologies, but also comes with greater challenges; it has never been more essential to offer energy-efficient, reliable, interference-free sensing systems for use with the modern Internet of Things.
Multimodal Intelligent Sensing in Modern Applications
provides an introduction to systems which incorporate multiple sensors to produce situational awareness and process inputs. It is divided into three parts—physical design aspects, data acquisition and analysis techniques, and security and energy challenges—which together cover all the major topics in multi-modal sensing. The result is an indispensable volume for engineers and other professionals looking to design the smart devices of the future.
readers will also find:
Contributions from multidisciplinary contributors in wireless communications, signal processing, and sensor design
Coverage of both software and hardware solutions to sensing challenges
Detailed treatment of advanced topics such as efficient deployment, data fusion, machine learning, and more
is ideal for experienced engineers and designers who need to apply their skills to Internet of Things and 5G/6G networks. It can also act as an introductory text for graduate researchers into understanding the background, design, and implementation of various sensor types and data analytics tools.
The Internet of Things (IoT) is becoming ever more comprehensively integrated into everyday life. The intelligent systems that power smart technologies rely on increasingly sophisticated sensors in order to monitor inputs and respond dynamically. Multi-modal sensing offers enormous benefits for these technologies, but also comes with greater challenges; it has never been more essential to offer energy-efficient, reliable, interference-free sensing systems for use with the modern Internet of Things.
Multimodal Intelligent Sensing in Modern Applications
provides an introduction to systems which incorporate multiple sensors to produce situational awareness and process inputs. It is divided into three parts—physical design aspects, data acquisition and analysis techniques, and security and energy challenges—which together cover all the major topics in multi-modal sensing. The result is an indispensable volume for engineers and other professionals looking to design the smart devices of the future.
readers will also find:
Contributions from multidisciplinary contributors in wireless communications, signal processing, and sensor design
Coverage of both software and hardware solutions to sensing challenges
Detailed treatment of advanced topics such as efficient deployment, data fusion, machine learning, and more
is ideal for experienced engineers and designers who need to apply their skills to Internet of Things and 5G/6G networks. It can also act as an introductory text for graduate researchers into understanding the background, design, and implementation of various sensor types and data analytics tools.