Kniha Privacy-Preserving in Mobile Crowdsensing Liehuang Zhu

Privacy-Preserving in Mobile Crowdsensing

Jazyk: Angličtina
Väzba: Brožovaná
Dostupnosť: Skladom u dodávateľa
Odosielame za 5-8 dní
159.57
Mobile crowdsensing is a new sensing paradigm that utilizes the intelligence of a crowd of individua...

Informácie o knihe

Jazyk
Angličtina
Väzba
Kniha - Brožovaná
Vydalo
2024
Stránok
216
EAN
9789811983177
ISBN
9811983178
Enbook ID
45330010
Hmotnosť
335
Rozmery
155 x 235 x 12

Kompletný popis

Mobile crowdsensing is a new sensing paradigm that utilizes the intelligence of a crowd of individuals to collect data for mobile purposes by using their portable devices, such as smartphones and wearable devices. Commonly, individuals are incentivized to collect data to fulfill a crowdsensing task released by a data requester. This "sensing as a service" elaborates our knowledge of the physical world by opening up a new door of data collection and analysis. However, with the expansion of mobile crowdsensing, privacy issues urgently need to be solved.

In this book, we discuss the research background and current research process of privacy protection in mobile crowdsensing. In the first chapter, the background, system model, and threat model of mobile crowdsensing are introduced. The second chapter discusses the current techniques to protect user privacy in mobile crowdsensing. Chapter three introduces the privacy-preserving content-based task allocation scheme. Chapter fourfurther introduces the privacy-preserving location-based task scheme. Chapter five presents the scheme of privacy-preserving truth discovery with truth transparency. Chapter six proposes the scheme of privacy-preserving truth discovery with truth hiding. Chapter seven summarizes this monograph and proposes future research directions.

In summary, this book introduces the following techniques in mobile crowdsensing: 1) describe a randomizable matrix-based task-matching method to protect task privacy and enable secure content-based task allocation; 2) describe a multi-clouds randomizable matrix-based task-matching method to protect location privacy and enable secure arbitrary range queries; and 3) describe privacy-preserving truth discovery methods to support efficient and secure truth discovery. These techniques are vital to the rapid development of privacy-preserving in mobile crowdsensing.

Mohlo by vás zaujímať

Etiquette

Shama Harrysingh
10.98

Unbroken

Laura Hillenbrand
15.49

Damaged Goods

Cynthia Dane
17.94
9.50

Man Up

Terrance D. Gibson Sr.
10.29

Zákazníci, ktorí si kúpili túto knihu, kúpili tiež

Sedm čísel

Anna Karolina
11.46