• Corpus ID: 16423871

Attribute Based Image Search Re-Ranking Snehal

  title={Attribute Based Image Search Re-Ranking Snehal},
  author={Snehal Patil and Ajay Dani},
Image search reranking is an effective approach to refine the text-based image search result. Text-based image retrieval suffers from essential difficulties that are caused mainly by the incapability of the associated text to appropriately describe the image content. In this paper, reranking methods are suggested address this problem in scalable fashion. Based on the classifiers for all the predefined attributes, each image is represented by an attribute feature consisting of the responses from… 

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