Three-dimensional shape recovery from focused image surface

نویسندگان

  • Tae-Sun Choi
  • Muhammad Asif Khan
  • Joungil Yun
چکیده

A new method for the three-dimensional shape recovery from image focus is proposed. The method is based on approximation of the Focussed Image Surface (FIS) by a piecewise curved surface which tracks the realistic FIS in image space. The piecewise curved surface is estimated by interpolation using the Lagrangian polynomial. The new method has been implemented on a prototype camera system. The experiments and their results are provided and discussed. The experimental results show that the new method gives more accurate results than the previous methods.

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تاریخ انتشار 1999