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<ArticleSet>
  <ARTICLE>
    <Journal>
      <PublisherName>مرکز منطقه ای اطلاع رسانی علوم و فناوری</PublisherName>
      <JournalTitle>Journal of Information Systems and Telecommunication (JIST) </JournalTitle>
      <ISSN>2322-1437</ISSN>
      <Volume>5</Volume>
      <Issue>18</Issue>
      <PubDate PubStatus="epublish">
        <Year>2017</Year>
        <Month>6</Month>
        <Day>23</Day>
      </PubDate>
    </Journal>
    <ArticleTitle>Improved Generic Object Retrieval In Large Scale Databases By SURF Descriptor</ArticleTitle>
    <VernacularTitle>Improved Generic Object Retrieval In Large Scale Databases By SURF Descriptor</VernacularTitle>
    <FirstPage>1</FirstPage>
    <LastPage>10</LastPage>
    <ELocationID EIdType="doi">10.7508/jist.2017.18.007</ELocationID>
    <Language>en</Language>
    <AuthorList>
      <Author>
        <FirstName>حسن</FirstName>
        <LastName>فرسی</LastName>
        <Affiliation>دانشگاه بیرجند</Affiliation>
      </Author>
      <Author>
        <FirstName>Reza</FirstName>
        <LastName>Nasiripour</LastName>
        <Affiliation>University of Birjand</Affiliation>
      </Author>
      <Author>
        <FirstName>Sajad</FirstName>
        <LastName>Mohammadzadeh</LastName>
        <Affiliation>University of Birjand</Affiliation>
      </Author>
    </AuthorList>
    <History PubStatus="received">
      <Year>2016</Year>
      <Month>11</Month>
      <Day>26</Day>
    </History>
    <Abstract>Normally, the-state-of-the-art methods in field of object retrieval for large databases are achieved by training process. We propose a novel large-scale generic object retrieval which only uses a single query image and training-free. Current object retrieval methods require a part of image database for training to construct the classifier. This training can be supervised or unsupervised and semi-supervised. In the proposed method, the query image can be a typical real image of the object. The object is constructed based on Speeded Up Robust Features (SURF) points acquired from the image. Information of relative positions, scale and orientation between SURF points are calculated and constructed into the object model. Dynamic programming is used to try all possible combinations of SURF points for query and datasets images. The ability to match partial affine transformed object images comes from the robustness of SURF points and the flexibility of the model. Occlusion is handled by specifying the probability of a missing SURF point in the model. Experimental results show that this matching technique is robust under partial occlusion and rotation. The properties and performance of the proposed method are demonstrated on the large databases. The obtained results illustrate that the proposed method improves the efficiency, speeds up recovery and reduces the storage space.</Abstract>
    <ObjectList>
      <Object Type="Keyword">
        <Param Name="Value">Object retrieval</Param>
      </Object>
      <Object Type="Keyword">
        <Param Name="Value">Speeded Up Robust Features (SURF)</Param>
      </Object>
      <Object Type="Keyword">
        <Param Name="Value">Large-scale dataset</Param>
      </Object>
      <Object Type="Keyword">
        <Param Name="Value">Supervised training</Param>
      </Object>
      <Object Type="Keyword">
        <Param Name="Value">Training-Free</Param>
      </Object>
    </ObjectList>
    <ArchiveCopySource DocType="Pdf">http://jist.ir/ar/Article/Download/14978</ArchiveCopySource>
  </ARTICLE>
</ArticleSet>