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  <title>DSpace Collection:</title>
  <link rel="alternate" href="http://localhost:8080/xmlui/handle/123456789/2738" />
  <subtitle />
  <id>http://localhost:8080/xmlui/handle/123456789/2738</id>
  <updated>2026-06-23T06:34:12Z</updated>
  <dc:date>2026-06-23T06:34:12Z</dc:date>
  <entry>
    <title>LARGE SCALE PERSON RE-IDENTIFICATION USING PART BASED DEEP HASHING</title>
    <link rel="alternate" href="http://localhost:8080/xmlui/handle/123456789/2739" />
    <author>
      <name>Jain, P.</name>
    </author>
    <author>
      <name>Jain, E.</name>
    </author>
    <author>
      <name>Dadhich, S.</name>
    </author>
    <author>
      <name>Tonpe, S.</name>
    </author>
    <author>
      <name>Kolapkar, A. V.</name>
    </author>
    <id>http://localhost:8080/xmlui/handle/123456789/2739</id>
    <updated>2020-02-14T09:27:34Z</updated>
    <published>2018-03-01T00:00:00Z</published>
    <summary type="text">Title: LARGE SCALE PERSON RE-IDENTIFICATION USING PART BASED DEEP HASHING
Authors: Jain, P.; Jain, E.; Dadhich, S.; Tonpe, S.; Kolapkar, A. V.
Abstract: It is important to perform real time search while Large scale Person re-identification on a large gallery. The&#xD;
conventional methods use to focus on discriminative learning which is probabilistic approach of learning. In this&#xD;
proposed project we attempt to use deep learning while integrating it with hashing which provides a framework to&#xD;
evaluate productivity, precision and reliability of Large scale Person re-identification. We use augmentation for creating&#xD;
artificial training images through different ways of processing or combination of multiple processing such as random&#xD;
rotation, shifts, shear and flips etc. We propose Part based deep Hashing (PDH) in which augmented images are the&#xD;
input of deep learning architecture. All the augmented images have different identity. We are using whole image and use&#xD;
it for training deep hashing architecture. We use a ternion loss function which calculates the hamming distance of the&#xD;
pedestrian image. The hamming distance of the images with same identity is smaller than the one with different identity.&#xD;
In this project we use standard large scale dataset specifically Market-1501 &amp; Market-1501 +500K.</summary>
    <dc:date>2018-03-01T00:00:00Z</dc:date>
  </entry>
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