Corpus ID: 43017451

Neural Signatures for Licence Plate Re-identification

  title={Neural Signatures for Licence Plate Re-identification},
  author={Abhinav Kumar and Shantanu Gupta and Vladimir Kozitsky and Sriganesh Madhvanath},
  • Abhinav Kumar, Shantanu Gupta, +1 author Sriganesh Madhvanath
  • Published 2017
  • Computer Science
  • ArXiv
  • The problem of vehicle licence plate re-identification is generally considered as a one-shot image retrieval problem. The objective of this task is to learn a feature representation (called a "signature") for licence plates. Incoming licence plate images are converted to signatures and matched to a previously collected template database through a distance measure. Then, the input image is recognized as the template whose signature is "nearest" to the input signature. The template database is… CONTINUE READING
    Zero Shot License Plate Re-Identification


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