
Authentication of Compressive Sensing based Image Content
Tao Wu(Author)
Shaker (Publisher)
1st Edition
Published on 4. March 2019
Book
Paperback/Softback
149 pages
978-3-8440-6517-6 (ISBN)
Description
Compressive Sensing (CS) has redefined the sampling method by choosing an appropriate sensing domain, limiting the characteristics of source information, and performing recovery with a nonlinear solver. CS-based Imaging (CSI) cameras can construct an N pixel image with only M measurements where M « N, and the sampling bandwidth of sensors is not limited when the target image can be k-sparse or "compressible" represented. It is necessary for CS based images to be protected by an authentication mechanism that can provide the integrity and authenticity of the origin.
This dissertation proposes an authenticated CSI system that is based on the Compressive Sensing based Message Authentication Code (CSMAC) mechanism. This MAC method is embedded in the imaging process with a redundant secure matrix. Furthermore, the extraction mechanism may reduce the data size and support a restricted tolerance property. With the help of a pre-trained threshold the verifier can tolerate an appropriate amount of recovery noise and detect the content modifications.
This study finally proposes an authenticated encrypted CSI mechanism, in order to support authentication, encryption, compression and sensing in one step. Since CS based images denote a poor data compression performance, an improvement is suggested as a basis for the authenticated encrypted CSI mechanism is based. The simulated results illustrate that CSI is computationally secure for confidentiality, sensitive to the amount of content-based tampering, and has an approximately 20% lower bit-rate for an acceptable image resolution compared to the naive CSI method.
This dissertation proposes an authenticated CSI system that is based on the Compressive Sensing based Message Authentication Code (CSMAC) mechanism. This MAC method is embedded in the imaging process with a redundant secure matrix. Furthermore, the extraction mechanism may reduce the data size and support a restricted tolerance property. With the help of a pre-trained threshold the verifier can tolerate an appropriate amount of recovery noise and detect the content modifications.
This study finally proposes an authenticated encrypted CSI mechanism, in order to support authentication, encryption, compression and sensing in one step. Since CS based images denote a poor data compression performance, an improvement is suggested as a basis for the authenticated encrypted CSI mechanism is based. The simulated results illustrate that CSI is computationally secure for confidentiality, sensitive to the amount of content-based tampering, and has an approximately 20% lower bit-rate for an acceptable image resolution compared to the naive CSI method.
More details
Series
Thesis
Doctoral thesis
2018
Universität Siegen
Language
English
Place of publication
Aachen
Germany
Target group
Professional and scholarly
Product notice
Unsewn / adhesive bound
Illustrations
56
Dimensions
Height: 21 cm
Width: 14.8 cm
Weight
224 gr
ISBN-13
978-3-8440-6517-6 (9783844065176)
Schweitzer Classification