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Multi Model Biometrics Data Retrieval Through Big Data

This study is devoted to Big Data problems in biometric technologies. Before the traditional database were not capable to handle the large amount of data, so we highlight the concept of using Big Data technology in solution of a wide range of issues faced by the national security, law enforcement system and defence authorities. The study provides information about Big Data in the field of biometric technology. Mr. Manish Vala | Kajal Patel | Harsh Lad "Multi Model Biometrics Data Retrieval Through: Big-Data" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-2 | Issue-6 , October 2018, URL: https://www.ijtsrd.com/papers/ijtsrd15933.pdf Paper URL: http://www.ijtsrd.com/computer-science/data-processing/15933/multi-model-biometrics-data-retrieval-through-big-data/mr-manish-vala<br>

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Multi Model Biometrics Data Retrieval Through Big Data

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International Journal of Trend in International Open Access Journal International Open Access Journal | www.ijtsrd.com International Journal of Trend in Scientific Research and Development (IJTSRD) Research and Development (IJTSRD) www.ijtsrd.com ISSN No: 2456 ISSN No: 2456 - 6470 | Volume - 2 | Issue – 6 | Sep 6 | Sep – Oct 2018 Multi Model Biometrics Data Retrieval Through: Big Multi Model Biometrics Data Retrieval Through: Big Multi Model Biometrics Data Retrieval Through: Big-Data Mr. Manish Vala Manish Vala1, Kajal Patel2, Harsh Lad2 1Assistant Professor, 2Student Institute of Information Technology Bardoli, Gujarat, India ?Characteristics of Big Data Characteristics of Big Data Babumadhav Institute India ABSTRACT This study is devoted to Big Data problems in biometric technologies. database were not capable to handle the large amount of data, so we highlight the concept of using Big Data technology in solution of a wide range of issues faced by the national security, law enforcement system and defence authorities. The study provides information about Big Data in the field of biometric technology. Keyword: Biometrics, Big Hadoop. INTRODUCTION ?Big Data Big data means really a big data; it is a collection of large datasets that cannot be processed using traditional computing techniques or it is set of data that are voluminous and complex data. Big Data challenges include capturing data, data storage, data analysis, search, sharing, transfer, visualization, querying, updating, and information privacy The main purpose of Big Data is to improve efficiency for using the large volume of data. If the Big Data is used in proper manner than can pursue new business model and can achieve competitive advantages. It includes huge volume, high velocity, and extensible variety of data. The data in it can be of three types: 1.Structured data: It can be Relational Data. 2.Semi Structured data: They are in form of XML data. 3.Unstructured data: It consists of Word, PDF, Text, Media files. Data problems in biometric database were not capable to handle the large amount of data, so we highlight the concept of using Big Data technology in solution of a wide range of issues faced w enforcement system and defence authorities. The study provides information about Big Data in the field of biometric technology. technologies. Before Before the the traditional traditional Biometrics, Big Data, Data, Recognition, Recognition, Figure1. Characteristics of Big Data [13] 1.Volume: When talking about the Volume, it refers to the insanely large amount of data or quantity of data. 2.Variety: It refers to the different data types, degree of structured, semi-structure and unstructured data which doesn’t fit easily into database application. 3.Velocity: It refers to the speed of data how fast the data are generated every second. Example: Google, Facebook. 4.Veracity: It refers to the trustworthiness of the data in terms of accuracy. 5.Value: It means having large amount of data is good, but it is useless if it can’t be turned into values. ?Advantages of Big Data 1.Using the information kept in the social network the marketing agencies are response for the campaigns, promotions, and o advertising medium. Ex:-Instagram. 2.Companies are allowed to store more transactional data in digital format. 3.Using the data regarding the pervious medical history patients, hospital are providing better and quick service. cs of Big Data [13] When talking about the Volume, it refers to the insanely large amount of data or quantity of data. Big data means really a big data; it is a collection of large datasets that cannot be processed using traditional computing techniques or it is set of data that are voluminous and complex data. Big Data It refers to the different data types, degree of structure and unstructured data which easily into database application. ata, data storage, data It refers to the speed of data how fast the data are generated every second. Example: Google, Facebook. analysis, search, sharing, transfer, visualization, querying, updating, and information privacy It refers to the trustworthiness of the data in terms of The main purpose of Big Data is to improve efficiency for using the large volume of data. If the Big Data is used in proper manner than organizations can pursue new business model and can achieve g large amount of data is good, but it is ’t be turned into values. It includes huge volume, high velocity, and extensible Using the information kept in the social network the marketing agencies are learning about the for the campaigns, promotions, and other Instagram. Companies are allowed to store more transactional Structured data: It can be Relational Data. Semi Structured data: They are in form of XML Using the data regarding the pervious medical patients, hospital are providing better and Unstructured data: It consists of Word, PDF, Text, @ IJTSRD | Available Online @ www.ijtsrd.com www.ijtsrd.com | Volume – 2 | Issue – 6 | Sep-Oct 2018 Oct 2018 Page: 1273

  2. International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456 International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456 International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456-6470 4.Some grate benefits of Big Data are cost reduction, Real time website customization, swift – better decision making. ?Biometric Recognition It is a technology used to identify, analyze and measure an individual’s physical and behavioural characteristics. Those data are captu human body and are compared to the data that are stored in set of database. The common biometric authentication techniques used is Finger prints biometric authentication. Some other techniques which can be used are Face recognition, Iris Scan, voice Recognition. Today biometrics system have been implemented in commercial, civilian and forensic application as a means of establishing identity. Biometrics is used for authenticating and authorizing a person. Authentication of a person through biometric is highly challenging. It is used in forensics, secured access, prison security, medical, and robotics areas financial services, telecommunication, government, traffic and many more. New technology or technique can be used is ear recognition of individuals. Biometrics authentication has two types of Model for Authentication Process: 1.Unimodal Unimodal biometrics refers to the use of only on biometrics modalities in an identification system. Example: Fingerprint recognition 2.Multimodal Multimodal biometrics refers to the use of a combination of two or more biometrics modalities in an identification system Example: Face recognition and Iris scan. f Big Data are cost reduction, Real time website customization, swift It is a technology used to identify, analyze and physical and behavioural characteristics. Those data are captured from the human body and are compared to the data that are The common biometric authentication techniques authentication. Some other techniques which can be used are Face an, voice Recognition. Today biometrics system have been implemented in various commercial, civilian and forensic application as a metrics is used for authenticating and authorizing a person. Authentication of a person through biometric is highly challenging. It is used in forensics, secured access, prison security, medical, and robotics areas financial services, ication, government, traffic and many more. New technology or technique can be used is ear ecommerce, ecommerce, LITERATURE REVIEW: In Paper [6],It gives the importance of using big data in order to support decision for the strategies and they also chose to invest more in processing larger data sets than investing in algorithms It also states that working with large amount of data is a challenging work but it provides better output. The paper also provides the brief introduction to the Hadoop technology with its computing solutions. It also uses the concept of multi and its importance. It provides the concept of big data and the technologies involved to understand the new technology. In paper, it provide new different techniques to store the data. In Big Data provides three main characteristics high volume, high velocity & high variety. It is cost effective in storing the data and helps in better decision making. Now a day`s, it helps in securing lo data. It also represents the concept of multi model biometric data through big data. It also have an brief idea about the Unimodal biometric system. The idea about the Unimodal biometric system. The 6],It gives the importance of using big data in order to support decision for the strategies and they also chose to invest more in processing larger data sets than investing in algorithms which are expensive. It also states that working with large amount of data is a challenging work but it provides better output. Biometrics authentication has two types of Model for Unimodal biometrics refers to the use of only one biometrics modalities in an identification system. The paper also provides the brief introduction to the Hadoop technology with its computing solutions. It t of multi-node Hadoop cluster and its importance. It provides the concept of big data and the technologies involved to understand the new Multimodal biometrics refers to the use of a combination of two or more biometrics modalities in s scan. vide new different techniques to store the data. In Big Data provides three main characteristics high volume, high velocity & high variety. It is cost effective in storing the data and helps in better decision making. Now a day`s, it helps in securing locations and other data. It also represents the concept of multi model biometric data through big data. It also have an brief @ IJTSRD | Available Online @ www.ijtsrd.com www.ijtsrd.com | Volume – 2 | Issue – 6 | Sep-Oct 2018 Oct 2018 Page: 1274

  3. International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456 International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456 International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456-6470 biometrics devices typically used are hand geometry reader and fingerprint authentication. In Paper[8], discussed about the big data and big data challenges in biometrics. It highlights the use of big data technologies. It also provides characteristics of the big data and types of data which can be structured, semi structured unstructured data. It provides the information about the biometrics and problems that are occurred in biometric technologies. Brief discussion about the cloud technologies regarding how the cloud technology can be used to recognize the person’s characteristics. They are working on developing advance big data capabilities to prevent from terrorism and criminal investigation. In Paper [9], Discussed about the Unimodal and multi-modal biometric system. Multi-modal provides the reasons for reducing the rates. Levels of Fusion used in multimodal biometric system. It also provides the comparison between multimodal and limitations of Unimodal can be overcome by the multimodal. In paper [2], The discussion is done about the ear recognition system. It is the currently used technology in biometric identification of human and it is quite complex task. It also provides the brief information about the model used for biometric authentication Unimodal and multimodal. It also provides discussion about the existing techniques of human Authentication and identification – fingerprints (overview of fingerprint recognition with its operation, limitation and area of application and what instruments are required to identify the fingerprints.) same for face recognition and Iris scan. Main it provides how the ear recognition is done and the usefulness of ear based biometric identification system. In Paper [10], Multimode biometrics is suitable for mobile, PDAs, smart phones. They are portable subject to loss and theft. The use of enhanced security mechanism as biometric authentication teeth image and voice authentication. It is fact that the military deploys largest use of mobile devices of which are embedded system with tactics and military intelligence. Authentication to such by teeth image and voice, it will become difficult to the security of such device in the event of its loss or misplace. such device in the event of its loss or misplace. biometrics devices typically used are hand geometry scussion about multimodal biometrics application and research area. It is used to combine two or more different sources of person sensed by different sensors. It include border management, interface for criminal and civil applications, and first verification. System can be improved by enhancing matching algorithms, integration of multiple sensor, and analysis of the scalability of In Paper [11],Discussion about multimodal biometrics application and research area. It is used to combine two or more different sources of person sensed by different sensors. It include border management, interface for criminal and civil applications, and first responder verification. System can be improved by enhancing matching algorithms, integration of multiple sensor, and analysis of the scalability of biometrics system. Signature recognition requires little space to store the data. A disadvantage for signature reco individuals who do not sign their names in a consistent manner may have difficulty enrolling and verifying in signature verification. Iris scan is believed to be highly stable over lifetime and uses an infrared imager to illuminate the eye very high-resolution image. Iris scan is difficult to capture for some individuals. In voice recognition sound sensations of a person is compared to an existing dataset. Voice recognition Difficult to control sensor and cha significantly impact. PROPOSED MODEL The multi model biometric data handling through big data framework is proposed. The multi model biometric framework first reads video, sound, etc.) data from user. Once the data collected from the user the data is been entered into application framework. It identifies the biometric type and converts those data into binary form, same procedure is followed for other biometric data. The converted data are been merged into single b detail by using the algorithm. encrypted using the encryption algorithm. The authentication process, done when the user comes for biometric authentication, the multi model biometric framework reads the data of user than identify the type of biometric data and converts the data into binary data. Binary data is encrypted and those encrypted data is compared to the biometric data. If the compared data is matched with the data in database than it retrieves the binary data. After extracting binary data from big data Hadoop framework API, data will be decrypted and convert into original data form and user will get the real time authentication though multi framework. [8], discussed about the big data and big data challenges in biometrics. It highlights the use of big data technologies. It also provides characteristics of the big data and types of data which can be generated- d unstructured data. It provides the information about the biometrics and problems that are occurred in biometric technologies. Signature recognition requires little space to store the disadvantage for signature recognition is that individuals who do not sign their names in a consistent manner may have difficulty enrolling and verifying in signature verification. Iris scan is believed to be highly stable over lifetime and uses an infrared imager to illuminate the eye and capture a resolution image. Iris scan is difficult to capture for some individuals. In voice recognition sound sensations of a person is measured and compared to an existing dataset. Voice recognition Difficult to control sensor and channel variances that Brief discussion about the cloud technologies regarding how the cloud technology can be used to teristics. They are working on developing advance big data capabilities to prevent from terrorism and criminal investigation. [9], Discussed about the Unimodal and modal provides rates. Levels of Fusion used in multimodal biometric system. It also provides the comparison between multimodal and limitations of Unimodal can be the the Unimodal Unimodal and and [2], The discussion is done about the ear system. It is the currently used technology in biometric identification of human and it is quite complex task. It also provides the brief information The multi model biometric data handling through big data framework is proposed. The multi model biometric framework first reads biometric (image, ) data from user. Once the data is collected from the user the data is been entered into application framework. It identifies the biometric type and converts those data into binary form, same procedure is followed for other biometric data. The converted data are been merged into single biometric authentication- about the existing techniques of human Authentication and identification fingerprints (overview of fingerprint recognition with its operation, limitation and area of application and what instruments are required to identify the ace recognition and Iris scan. Main it provides how the ear recognition is done and the usefulness of ear based biometric identification The binary data are now encrypted using the encryption algorithm. The authentication process, done when the user comes for biometric authentication, the multi model biometric framework reads the data of user than ntify the type of biometric data and converts the data into binary data. Binary data is encrypted and those encrypted data is compared to the biometric data. If the compared data is matched with the data in database than it retrieves the binary data. After extracting binary data from big data Hadoop framework API, data will be decrypted and convert into original data form and user will get the real time h multi is suitable for mobile, PDAs, smart phones. They are portable ss and theft. The use of enhanced security biometric authentication. The use of teeth image and voice authentication. It is fact that the gest use of mobile devices of which are embedded system with tactics and military intelligence. Authentication to such by teeth image and voice, it will become difficult to the security of model model biometric biometric @ IJTSRD | Available Online @ www.ijtsrd.com www.ijtsrd.com | Volume – 2 | Issue – 6 | Sep-Oct 2018 Oct 2018 Page: 1275

  4. International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456 International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456 International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456-6470 3.2 Map – Reduce Algorithm: It is a distributed data processing algorithm, useful for processing huge amount of environment. This algorithm uses the concept of divide and conquer algorithm to process large amount of data. The input is divided into smaller and manageable sub tasks to execute them parallel. This algorithm uses three main steps: 1.Map Function 2.Shuffle Function 3.Reduce Function Algorithm: Map function: In this step, it takes divide the task into smaller sub sub-steps: 1.Splitting: takes input and divide into smaller sub datasets. 2.Mapping: takes smaller sub action on each sub-datasets. Shuffle function: In this step, also phase. It performs two sub-steps: 1.Merging: combines all key same key. 2.Sorting: takes the input from merging step and sort all key-value pair by using keys. Reduce function: In this step, it takes sorted key-value pairs from shuffle function and perform reduce operation. Reduce Algorithm: It is a distributed data processing algorithm, useful for processing huge amount of data in cluster This algorithm uses the concept of divide and conquer algorithm to process large amount of data. The input is divided into smaller and manageable sub- tasks to execute them parallel. This algorithm uses three main steps: Figure 7 Proposed Model of Hadoop [20] Proposed Model of Hadoop [20] PROPOSED ALGORITHM: ?K-means clustering algorithm: This algorithm is used for creating and analyzing clusters. ‘N’ number of data points are divided into ‘k’ cluster. Results generated from the algorithm is dependent on choosing the initial cluster centroid. The main feature, if data is arranged into a matrix, with row representing data points and column representing attributes of each data points, than matrix might not have defined values at many places. Algorithm: All data points have maximum M dimension which can be represented as row of M values (v1, v2…., vM).Select any m dimension from the data points. Arrange them in descending order of priority as, (d d2…, dm).The first dimension is known as primary dimension and others are called secondary dimension. Number of cluster is pre-decided-‘k’ which is an input to the algorithm. Step 1: the variation of considered as, (max-min)/k, 1 where max is the maximum value of i dimension and the min is the minimum value of i dimension. Step 2: Initial cluster are formed using following conditions for data point, if min1 + j * $1 <= val1 <mi1 + (j+1) * $1, the data point belongs to cluster j. Step 3: Centroid of each cluster is computed means of all cluster points. Step 4: Every secondary dimension, 2 the same. In this step, it takesinput tasks and divide the task into smaller sub-tasks. It follows two This algorithm is used for creating and analyzing the number of data points are divided into uster. Results generated from the algorithm is dependent on choosing the initial cluster centroid. Splitting: takes input and divide into smaller sub- Mapping: takes smaller sub-datasets and perform datasets. The main feature, if data is arranged into a matrix, with row representing data points and column representing attributes of each data points, than matrix might not have defined values at many places. In this step, alsoknown as combine steps: nes all key-value pairs which have All data points have maximum M dimension which can be represented as row of M values (v1, v2…., vM).Select any m dimension from the data points. Arrange them in descending order of priority as, (d1, d2…, dm).The first dimension is known as primary dimension and others are called secondary dimension. Sorting: takes the input from merging step and value pair by using keys. In this step, it takesthe list of value pairs from shuffle function and ’ which is an input the variation of each each min)/k, 1<= i<=m. dimension dimension is is where max is the maximum value of i dimension and the min is the minimum value Figure8. Architecture of Map 8. Architecture of Map – Reduce [18] Conclusion and Future work: The literature survey done in this paper provides a new insight in different technique to store data into big data in the field of biometrics recognition. Big data provides high volume, high velocity and high variety of information. Big data provides the cost effective framework to store data. The scale of the biometric data to ensuring the integrity of biometric data by elimination duplicate records. data by elimination duplicate records. Initial cluster are formed using following conditions for data point, if min1 + j * $1 <= val1 <mi1 + (j+1) * $1, the data point Conclusion and Future work: The literature survey done in this paper provides a new insight in different technique to store data into big data in the field of biometrics recognition. Big ata provides high volume, high velocity and high variety of information. Big data provides the cost effective framework to store data. The scale of the biometric data to ensuring the integrity of biometric Centroid of each cluster is computed means Every secondary dimension, 2≤j≤m,repeat @ IJTSRD | Available Online @ www.ijtsrd.com www.ijtsrd.com | Volume – 2 | Issue – 6 | Sep-Oct 2018 Oct 2018 Page: 1276

  5. International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456 International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456 International Journal of Trend in Scientific Research and Development (IJTSRD) ISSN: 2456-6470 8.ShafagatMahmudova, “Big Data Biometric Technology”, Management Engineering, 2016, 5, 15 9.Ms. Priya N. Ghotkar1, Prof. Vikas G. Bhowate2, 10.Julius N. Obidinnu, Ayei E. Ibor, “Improving the Security of MANETs Oriented Military Intelligence Authentication Technologies Journal (SCIRJ), Volume 2, Issue 1, January 2014. 11.Prof. Vijay M. Mane, Prof. (Dr.) Jadhav, “Review of Multimodal Biometrics: Applications, challenges and Research Areas International Journal Bioinformatics (IJBB), Volume 3, Issue 5. 12.Mugdhajain, ChakradharVerma means for Clustering in Big Data Journal of Computer Applications (0975 Volume 101– No.1, September 2014. 13.https://www.pinkelephantasia.c content/uploads/2017/10/Five 14.https://www.google.co.in/searc data&dcr=0&source=lnms&tbm=isch&sa=X&ved =0ahUKEwjd8qjMvZPZAhXKuY8KHVbbBt8Q _AUICigB&biw=1366&bih=626#imgr oKBgB1M: 15.https://disruptionhub.com/10 recognition-technology/ 16.https://www.dreamstime.com/s eye-biometrics-retina-scan verification-identity-concept modern-contemporary-technology image73611262 17.https://www.dreamstime.com/s eye-biometrics-retina-scan verification-identity-concept modern-contemporary-technology image73611262 18.https://www.google.co.in/searc on&hl=en&source=lnms&tbm=isch&sa=X&ved= 0ahUKEwjRwoKD5ZraAhXDLI8KHSQyCOsQ _AUICigB&biw=1366&bih=626#imgr Oe9XkTsWM: 19.https://www.google.co.in/searc ognition&source=lnms&tbm=isch&sa=X&ved=0 ahUKE wiTpbCo5JraAhXLvI8KHfvMD1wQ_A UICigB&biw=1366&bih=675#imgrc=b v5hNlYM: 20.https://www.google.co.in/?gfe_r YKKDPHy8AeOzYKQC Today, the primary application of biometrics is in physical security: to control access to secure locations (rooms or buildings). Biometric system which rely on the evidence of multiple sources of information for establishing identity are called Multimodal biometri system. This paper presents an overview of multimodal biometrics data handling through big data. It also discuss their applications to develop the security system for high security areas. A lot of research work is still need in this area. In near future multi model biometric data handling can apply to enhance the security, real time response and cost cutting approach of our system. References: Research Paper 1.Taruna Panchal, Dr. AjitSingh, s Biometric System", International Journal of Advanced Research in Computer Science and Software Engineering , Volume 3, Issue 5, May 2013. 2.Sukhdeep Singh, Dr. Sunil Kumar Review on Biometrics and Ear Recogn Techniques” , International Journal of Advanced Research in Computer Science and Software Engineering , Volume 3 , Issue 6 , June 2013. 3.Khalid Adam Ismail Hammad , Adam Ibrahim Fakharaldien , Jasni Mohamed Zain , Mazlina Abdul Majid , “Big Data Analysis and Storage” , Proceedings of the 2015 International Conference Excellence and Service Engineering Orlando, September 10-11, 2015. 4.Amir Gandomi, MurtazaHaider, hype: Big data concepts, methods, and analytics International Journal of Information Management Elsevier (2015), Pg no. 137–144. 5.Stephen J. Elliott, Kevin O’Connor Bartlow, Joshua J. Robertson and Guest “Expanding the Human-Biometric Interaction Model to Identity Claim Scenarios Research gate - Conference Paper · March 2015. 6.Elena Geanina ULARU, PUICAN, Anca APOSTU, Manole VELICANU, “Perspectives on Big Data and Big Data Analytics”, Database Systems Journal vol. III, no. 4/2012. 7.Ravi Subban and Dattatreya P. Mankame Study of Biometric Approach Using Recognition” Lecture Engineering, Vol. 1, No. 2, May 2013. Engineering, Vol. 1, No. 2, May 2013. e primary application of biometrics is in physical security: to control access to secure locations (rooms or buildings). Biometric system which rely on the evidence of multiple sources of information for establishing identity are called Multimodal biometric system. This paper presents an overview of multimodal biometrics data handling through big data. It also discuss their applications to develop the “Big Data Challenges in I. J. Education and Engineering, 2016, 5, 15-23. Prof. Vikas G. Bhowate2, Julius N. Obidinnu, Ayei E. Ibor, S. O. O. Duke, “Improving the Security of MANETs Oriented Military Intelligence Authentication Technologies”, Scientific Research Journal (SCIRJ), Volume 2, Issue 1, January using using Biometrics Biometrics A lot of research work is still need in this area. In near e multi model biometric data handling can apply to enhance the security, real time response and cost Prof. Vijay M. Mane, Prof. (Dr.) Dattatray V. Multimodal Biometrics: Applications, challenges and Research Areas”, International Journal tics (IJBB), Volume 3, Issue 5. Mugdhajain, ChakradharVerma,” Adapting k- of of Biometrics Biometrics and and Big Data”, International s “Multimodal Computer Applications (0975 – 8887) No.1, September 2014. https://www.pinkelephantasia.com/wp- content/uploads/2017/10/Five-Vs-Big-Data.png https://www.google.co.in/search?q=5+vs+of+big+ e=lnms&tbm=isch&sa=X&ved KEwjd8qjMvZPZAhXKuY8KHVbbBt8Q _AUICigB&biw=1366&bih=626#imgrc=tLYr07e International Journal of Advanced Research in Computer Science and Software Engineering , Volume 3, Issue 5, May Sukhdeep Singh, Dr. Sunil Kumar Singla , “A Review on Biometrics and Ear Recognition International Journal of Advanced Research in Computer Science and Software Engineering , Volume 3 , Issue 6 , June 2013. Khalid Adam Ismail Hammad , Mohammed Adam Ibrahim Fakharaldien , Jasni Mohamed https://disruptionhub.com/10-uses-facial- https://www.dreamstime.com/s tock-illustration- scan-emblem-virtual- concept-scanning-biometry- technology- ig Data Analysis ” , Proceedings of the 2015 Conference Excellence and Service Engineering Orlando, International on on Operations Operations https://www.dreamstime.com/s tock-illustration- scan-emblem-virtual- concept-scanning-biometry- technology- “Beyond the hype: Big data concepts, methods, and analytics”, International Journal of Information Management- ’Connor, Eric and Richard M. Biometric Sensor Claim Scenarios”, e.co.in/search?q=face+recogniti e=lnms&tbm=isch&sa=X&ved= KEwjRwoKD5ZraAhXDLI8KHSQyCOsQ _AUICigB&biw=1366&bih=626#imgrc=wO2UT Conference Paper · March 2015. Geanina ULARU, Elena Florina Florina Manole VELICANU, Camelia Camelia le.co.in/search?q=Signature+rec nms&tbm=isch&sa=X&ved=0 wiTpbCo5JraAhXLvI8KHfvMD1wQ_A UICigB&biw=1366&bih=675#imgrc=boGW3Xo “Perspectives on Big Data and Big Data Database Systems Journal vol. III, no. Subban and Dattatreya P. Mankame, “A https://www.google.co.in/?gfe_rd=cr&ei=7xIGW Using Fingerprint Software A Notes on on @ IJTSRD | Available Online @ www.ijtsrd.com www.ijtsrd.com | Volume – 2 | Issue – 6 | Sep-Oct 2018 Oct 2018 Page: 1277

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