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Proficient: Achieving Progressive Object Detection over a Lossless Network using Fragmented DCT Coefficients

  • Received : 2024.04.05
  • Published : 2024.04.30

Abstract

In this work, we focused on reducing the amount of image data to be sent by extracting and progressively sending prominent image features to high-performance computing systems taking into consideration the right amount of image data required by object identification application. We demonstrate that with our technique called Progressive Object Detection over a Lossless Network using Fragmented DCT Coefficients (Proficient), object identification applications can detect objects with at least 70% combined confidence level by using less than half of the image data.

Keywords

References

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