DOI QR코드

DOI QR Code

Multi-camera based Images through Feature Points Algorithm for HDR Panorama

  • Received : 2015.09.05
  • Accepted : 2015.10.15
  • Published : 2015.11.30

Abstract

With the spread of various kinds of cameras such as digital cameras and DSLR and a growing interest in high-definition and high-resolution images, a method that synthesizes multiple images is being studied among various methods. High Dynamic Range (HDR) images store light exposure with even wider range of number than normal digital images. Therefore, it can store the intensity of light inherent in specific scenes expressed by light sources in real life quite accurately. This study suggests feature points synthesis algorithm to improve the performance of HDR panorama recognition method (algorithm) at recognition and coordination level through classifying the feature points for image recognition using more than one multi frames.

Keywords

References

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