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    <title>DSpace Community:</title>
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        <rdf:li rdf:resource="http://localhost:8080/xmlui/handle/123456789/3430" />
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    <dc:date>2026-06-23T06:19:01Z</dc:date>
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  <item rdf:about="http://localhost:8080/xmlui/handle/123456789/3438">
    <title>A Novel Method for Movie Character Identification Based on Graph  Matching: A Survey</title>
    <link>http://localhost:8080/xmlui/handle/123456789/3438</link>
    <description>Title: A Novel Method for Movie Character Identification Based on Graph  Matching: A Survey
Authors: Salve, B. S.; Shinde, S. A.
Abstract: Automatic face identification of character in movies received tremendous attention from both video content &#xD;
understanding and video annotation because of their application in movie industry such as video semantic analysis, video &#xD;
summarization, and personalized video retrieval.&#xD;
Character identification of movie is challenging problem due to huge variation in the appearance of each character and &#xD;
complex background, large motion, non-rigid deformation, occlusion, huge pose, expression, wearing, clothing, even makeup and &#xD;
hairstyle changes and other uncontrolled condition make the result of face detection and face tracking unreliable. &#xD;
In particular, character identification for movie used video and script. Face tracking and clustering from video and name &#xD;
of person extract from script. Many challenges for face clustering and face-name matching are present. In good situation and clean &#xD;
environment existing methods gives better result, but in a complex movie scene performance is limited because face tracking and &#xD;
clustering process generate a noise.&#xD;
In this paper we present a comparative study of three methods using textual cues like cast list, script, subtitle and closed caption &#xD;
based on local and global face-name matching</description>
    <dc:date>2014-04-05T00:00:00Z</dc:date>
  </item>
  <item rdf:about="http://localhost:8080/xmlui/handle/123456789/3430">
    <title>Clinical Decision Support System for Patient Centric System in Privacy Preserving Way Using Nave Bayesian Classification</title>
    <link>http://localhost:8080/xmlui/handle/123456789/3430</link>
    <description>Title: Clinical Decision Support System for Patient Centric System in Privacy Preserving Way Using Nave Bayesian Classification
Authors: Shitole, Manodnya A; Wakchaure, Manoj A
Abstract: —A clinical decision support system forms critical capability to link health observations with health knowledge&#xD;
to influence choices by clinicians for improved healthcare. Clinical decision support system, having data mining&#xD;
technique which helps us for extracting data which we want. The clinical decision support system gives us the advantage&#xD;
which of provides the better diagnosis accuracy and also minimize the diagnosis time .The large amounts of clinical data&#xD;
generated every day by many of healthcare system so the naive Bayesian classification can be utilized to formed valuable&#xD;
information to improve clinical decision support system. But the clinical decision support system is quite promising but&#xD;
it also having many challenges about security of patient data. So for that I propose a new privacy-preserving patient centric clinical decision support system, which helps clinician complementary to diagnose the risk of patients disease&#xD;
in a privacy-preserving way. As the past patients historical data are stored in cloud so patient can use it anywhere&#xD;
anytime and used the train naive Bayesian classifier for finding the top-k diseases without leaking any individual patient&#xD;
medical data. Specifically, to protect the privacy of past patients historical data, a new cryptographic tool called additive&#xD;
homomorphism proxy aggregation scheme is designed. Moreover, to leverage the leakage of nave Bayesian classifier,&#xD;
we introduce a privacy-preserving top-k disease names retrieval protocol in our system with document uploading facility.&#xD;
Detailed privacy analysis ensures that patients information is private and will not be leaked out during the disease&#xD;
diagnosis phase. In addition, performance evaluation via extensive simulations also demonstrates that our system can&#xD;
efficiently calculate patients disease risk with high accuracy in a privacy-preserving way.</description>
    <dc:date>2022-06-15T00:00:00Z</dc:date>
  </item>
  <item rdf:about="http://localhost:8080/xmlui/handle/123456789/3429">
    <title>Patient-Centric and Privacy Preserving Clinical Decision Support System  Using Naive Bayesian Classification</title>
    <link>http://localhost:8080/xmlui/handle/123456789/3429</link>
    <description>Title: Patient-Centric and Privacy Preserving Clinical Decision Support System  Using Naive Bayesian Classification
Authors: Shitole, Manodnya A.
Abstract: In the advanced age in which the healthcare area is exploring widely in that Clinical decision support system, which &#xD;
uses advanced data mining techniques to help clinician make proper decisions, has received considerable attention &#xD;
recently. The advantages of clinical decision support system include not only improving diagnosis accuracy but also &#xD;
reducing diagnosis time. The large data id generated in the healthcare system time by time so every patient is &#xD;
provided their personal information to the doctor for making the decision but because the privacy is the major issue &#xD;
for healthcare system of patient. The requirement is to provide the security to the patient data from unauthorized use &#xD;
the privacy preserving clinical decision support system is given in the system. So in the proposed system the patient &#xD;
security is the main part and in that provided the security to the patient by giving the restriction to the doctor &#xD;
accession. In that we check the authorization of the doctor with the OTP generation because of that the data is &#xD;
preserved. And also the effective Naive Bayesian classification use for the patient easiness for getting the results &#xD;
from the doctor about the disease diagnosis also one prominent part provided in this that patient can upload the &#xD;
document of their so doctor will get help to diagnosis the patient.</description>
    <dc:date>2016-09-05T00:00:00Z</dc:date>
  </item>
  <item rdf:about="http://localhost:8080/xmlui/handle/123456789/3428">
    <title>Clinical Decision Support System for the Patients Efficientness in  privacy Preserving Way with Naïve Bayesian Classification</title>
    <link>http://localhost:8080/xmlui/handle/123456789/3428</link>
    <description>Title: Clinical Decision Support System for the Patients Efficientness in  privacy Preserving Way with Naïve Bayesian Classification
Authors: Shitole, Manodnya; Wakchaure, Manoj A; Boobalan, S.
Abstract: — Statistics from security firms, research institutions&#xD;
and government organizations show that the number of data leak instances have grown rapidly in recent years. Among &#xD;
various data-leak cases, human mistakes are one of the main &#xD;
causes of data loss. There exist solutions detecting &#xD;
inadvertent sensitive data leaks caused by human mistakes &#xD;
and to provide alerts for organizations. A common approach &#xD;
is to screen content in storage and transmission for exposed &#xD;
sensitive information. Such an approach usually requires the &#xD;
detection operation to be conducted in secrecy. However, this &#xD;
secrecy requirement is challenging to satisfy in practice, as &#xD;
detection servers may be compromised or outsourced. In this &#xD;
paper, we present a privacy- preserving data-leak detection &#xD;
(DLD) solution to solve the issue where a special set of &#xD;
sensitive data digests is used in detection. The advantage of &#xD;
our method is that it enables the data owner to safely delegate &#xD;
the detection operation to a semi honest provider without &#xD;
revealing the sensitive data to the provider. So in the &#xD;
proposed system the patient security is the main part and in &#xD;
that provided the security to the patient by giving the &#xD;
restriction to the doctor accession. In that we check the &#xD;
authorization of the doctor with the OTP generation because &#xD;
of that the data is preserved. And also the effective Naive &#xD;
Bayesian classification use for the patient easiness for getting &#xD;
the results from the doctor about the disease diagnosis also &#xD;
one prominent part provided in this that patient can upload &#xD;
the document of their so doctor will get help to diagnosis the &#xD;
patient.</description>
    <dc:date>2016-08-15T00:00:00Z</dc:date>
  </item>
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