• Kapcsolat

  • Hírlevél

  • Rólunk

  • Szállítási lehetőségek

  • Prospero könyvpiaci podcast

  • 'Magyar nyelvű oldal. Change to english.'
    Kívánságlista
      • 20% KEDVEZMÉNY?

      • A kedvezmény csak az 'Értesítés a kedvenc témákról' hírlevelünk címzettjeinek rendeléseire érvényes.
      • Kiadói listaár GBP 51.99
      • Az ár azért becsült, mert a rendelés pillanatában nem lehet pontosan tudni, hogy a beérkezéskor milyen lesz a forint árfolyama az adott termék eredeti devizájához képest. Ha a forint romlana, kissé többet, ha javulna, kissé kevesebbet kell majd fizetnie.

        23 473 Ft (22 355 Ft + 5% áfa)
      • Kedvezmény(ek) 20% (cc. 4 695 Ft off)
      • Kedvezményes ár 18 778 Ft (17 884 Ft + 5% áfa)
      • A kedvezmény érvényes eddig: 2026. június 30.

    21 125 Ft

    db

    Beszerezhetőség

    Még nem jelent meg, de rendelhető. A megjelenéstől számított néhány héten belül megérkezik.

    Why don't you give exact delivery time?

    A beszerzés időigényét az eddigi tapasztalatokra alapozva adjuk meg. Azért becsült, mert a terméket külföldről hozzuk be, így a kiadó kiszolgálásának pillanatnyi gyorsaságától is függ. A megadottnál gyorsabb és lassabb szállítás is elképzelhető, de mindent megteszünk, hogy Ön a lehető leghamarabb jusson hozzá a termékhez.

    Rövid leírás:

    This book presents a novel method of multimodal biometric fusion using a random selection of biometrics, which covers a new method of feature extraction, a new framework of sensor level and feature level fusion. Most of the biometric systems presently use unimodal systems which have several limitations. 

    Több

    Hosszú leírás:

    This book presents a novel method of multimodal biometric fusion using a random selection of biometrics, which covers a new method of feature extraction, a new framework of sensor-level and feature-level fusion. Most of the biometric systems presently use unimodal systems, which have several limitations. Multimodal systems can increase the matching accuracy of a recognition system. This monograph shows how the problems of unimodal systems can be dealt with efficiently, and focuses on multimodal biometric identification and sensor-level, feature-level fusion. It discusses fusion in biometric systems to improve performance.


    • Presents a random selection of biometrics to ensure that the system is interacting with a live user.


    • Offers a compilation of all techniques used for unimodal as well as multimodal biometric identification systems, elaborated with required justification and interpretation with case studies, suitable figures, tables, graphs, and so on.


    • Shows that for feature-level fusion using contourlet transform features with LDA for dimension reduction attains more accuracy compared to that of block variance features.


    • Includes contribution in feature extraction and pattern recognition for an increase in the accuracy of the system.


    • Explains contourlet transform as the best modality-specific feature extraction algorithms for fingerprint, face, and palmprint.


    This book is for researchers, scholars, and students of Computer Science, Information Technology, Electronics and Electrical Engineering, Mechanical Engineering, and people working on biometric applications.

    Több

    Tartalomjegyzék:

    Preface.................................................................................................................... viii


    Author Biography........................................................................................................x


    Chapter 1 Introduction...........................................................................................1


    1.1 Biometric Identification System.................................................1


    1.1.1 Enrolment Module........................................................2


    1.2 Current Status of Biometric Identification Systems...................3


    1.3 Applications of Biometric Systems............................................5


    References.............................................................................................5


    Chapter 2 An Overview of Biometrics..................................................................6


    2.1 Biometrics...................................................................................6


    2.1.1 Advantages of Biometrics.............................................7


    2.1.2 Disadvantages of Biometrics.........................................8


    2.1.3 Types of Biometrics.......................................................8


    2.2 Fingerprint..................................................................................8


    2.2.1 Minutiae-based Technique............................................9


    2.2.2 Correlation-based Technique........................................9


    2.2.3 Advantages and Disadvantages of Fingerprint


    Biometrics.....................................................................9


    2.2.4 Applications of Fingerprinting.................................... 10


    2.3 Iris Recognition........................................................................ 10


    2.3.1 Advantages of Iris Technology.................................... 10


    2.3.2 Disadvantages of Iris Technology............................... 10


    2.3.3 Applications of Iris Recognition System..................... 11


    2.3.4 Real-Life Applications................................................ 11


    2.4 Retinal Pattern Biometrics....................................................... 11


    2.4.1 Advantages of Retinal Recognition............................. 12


    2.4.2 Disadvantages of Retinal Recognition........................ 12


    2.5 Facial Recognition Biometrics................................................. 12


    2.5.1 Challenges in Face Recognition.................................. 13


    2.5.2 Advantages of Biometric Facial Recognition.............. 13


    2.5.3 Disadvantages of Biometric Face Recognition........... 13


    2.5.4 Applications................................................................. 13


    2.6 Handwriting.............................................................................. 14


    2.6.1 Advantages and Disadvantages of Handwriting


    Recognition................................................................. 14


    2.7 Voice Biometric........................................................................ 14


    2.7.1 Advantages.................................................................. 15


    2.7.2 Disadvantages.............................................................. 15


    2.8 Ear Recognition........................................................................ 15


    2.8.1 Advantages.................................................................. 15


    2.8.2 Disadvantages.............................................................. 15


    2.9 Summary.................................................................................. 16


    Chapter 3 Motivation behind Multimodal Biometric Systems............................ 17


    3.1 Introduction.............................................................................. 17


    3.1.1 Advantages of Multimodal Systems over


    Unimodal Systems...................................................... 18


    3.2 Multimodal Biometric Integration Architecture...................... 19


    3.3 Multimodal Biometric Integration Scenarios........................... 19


    3.4 Multimodal Biometric Fusion Levels....................................... 21


    3.4.1 Pre-mapping Fusion.................................................... 21


    3.4.2 Post-mapping Fusion...................................................25


    References...........................................................................................28


    Chapter 4 Performance Measurement Parameters for Biometric Systems.......... 31


    4.1 Performance Measurement Parameters.................................... 31


    4.2 Materials................................................................................... 33


    4.2.1 Fingerprint Database...................................................34


    4.2.2 Face Database..............................................................34


    4.2.3 Hand Database............................................................ 35


    4.3 Summary.................................................................................. 35


    Reference............................................................................................. 35


    Chapter 5 Unimodal Biometric Systems..............................................................36


    5.1 Unimodal Biometric Identification System..............................36


    5.1.1 DWT Feature Extraction System................................ 37


    5.1.2 Gabor Feature Extraction System...............................38


    5.1.3 Curvelet Transform.....................................................40


    5.1.4 Contourlet Transform.................................................. 41


    5.2 Fingerprint as a Biometric Modality........................................ 41


    5.2.1 Techniques for Fingerprint Matching......................... 42


    5.2.2 Minutiae-Based Feature Extraction System................ 42


    5.2.3 Texture-Based Fingerprint Recognition System......... 45


    5.3 Face as a Biometric Modality...................................................49


    5.3.1 Texture-Based Face Recognition System....................49


    5.4 Hand Geometry as a Biometric Modality................................ 51


    5.4.1 Hand Geometry Recognition Using 12 Geometry


    Features....................................................................... 55


    5.4.2 Hand Geometry Recognition Using 21 Geometry


    Features.......................................................................56


    5.5 Palmprint as a Biometric Modality.......................................... 58


    5.5.1 Contourlet Transform..................................................63


    Contents vii


    5.6 Euclidean Distance as a Classifier............................................ 67


    5.7 Summary.................................................................................. 71


    References........................................................................................... 71


    Chapter 6 Multimodal Biometric Identification Systems Using


    Sensor-Level Fusion............................................................................ 72


    6.1 Multimodal Biometric Identification System........................... 72


    6.2 Sensor-Level Fusion................................................................. 72


    6.3 Basic Structure for Sensor-Level Fusion.................................. 73


    6.4 Sensor-Level Fusion of Low-Frequency and High-


    Frequency Features................................................................... 75


    6.5 Sensor-Level Fusion of Low-Frequency Features.................... 78


    6.6 Summary.................................................................................. 81


    Chapter 7 Multimodal Biometric Identification Systems Using


    Feature-Level Fusion...........................................................................82


    7.1 Multimodal Biometric System.................................................82


    7.2 Feature-Level Fusion Using Block Variance Features.............83


    7.2.1 Feature-Level Fusion of 128 Feature Vector...............83


    7.2.2 Feature-Level Fusion of 32 Feature Vector.................85


    7.2.3 Concatenated Features................................................ 91


    7.2.4 Sum Features...............................................................92


    7.2.5 Maximum Features.....................................................92


    7.2.6 Minimum Features......................................................92


    7.3 Feature-Level Fusion Using Contourlet Transform Features...92


    7.4 Normalisation Technique for Hand Geometry Features..........95


    7.5 Linear Discriminate Analysis (LDA).......................................97


    7.6 Summary................................................................................ 100


    Chapter 8 Result and Discussion....................................................................... 101


    8.1 Result and Discussion............................................................. 101


    8.1.1 Databases Used......................................................... 101


    8.1.2 Results of Performance Measurement


    Parameters of the Biometric Systems....................... 101


    8.1.3 Results of Performance Measurement


    Parameters of Multimodal Recognition System....... 104


    8.1.4 Score Distribution of Biometric System.................... 113


    8.1.5 Analysis..................................................................... 120


    8.2 Conclusions............................................................................. 122


    8.3 Future Scope...........................................................................124


    Index....................................................................................................................... 125

    Több
    0