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  <blog_title>PDFangeltop1の日記</blog_title>
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  <description>1 Inroduction In the past, the image caption model can only be trained on paired image-sentence corpora. To address this limitation, the author proposed a Deep Compositional Captioner that can generate descriptions about objects which don't appear in paired corpora ,but are present in unpaired image…</description>
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  <provider_name>Hatena Blog</provider_name>
  <provider_url>https://hatena.blog</provider_url>
  <published>2016-02-02 12:52:12</published>
  <title>Deep Compositional Captioning: Describe Novel Object Categories without Paired Training Data</title>
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  <url>https://pdfangeltop1.hatenablog.com/entry/2016/02/02/125212</url>
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