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Image Stitching System Based on ORB Feature-Based Technique and Compensation Blending

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Academic year: 2017

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Fig. 1. The construction of the Laplacian pyramid for the Lena image [20]
Fig. 2. The block diagram of the proposed panoramic image system  a) Features Extraction and Description
Table  1  shows  the  number  of  detected  features  and  detecting  the  time  of  the  different  detectors  for  the  first  and  second image of the second dataset
Fig. 14. The  final  panoramic  image  of  the  dataset  using  gradient  domain  blending

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