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Stochastic Rounding for Image Interpolation and Scan Conversion
by
Rukundo, Olivier
, Schmidt, Samuel Emil
in
Algorithms
/ Conversion
/ Interpolation
/ Pseudorandom
/ Rounding
2022
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Do you wish to request the book?
Stochastic Rounding for Image Interpolation and Scan Conversion
by
Rukundo, Olivier
, Schmidt, Samuel Emil
in
Algorithms
/ Conversion
/ Interpolation
/ Pseudorandom
/ Rounding
2022
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Stochastic Rounding for Image Interpolation and Scan Conversion
Journal Article
Stochastic Rounding for Image Interpolation and Scan Conversion
2022
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Overview
The stochastic rounding (SR) function is proposed to evaluate and demonstrate the effects of stochastically rounding row and column subscripts in image interpolation and scan conversion. The proposed SR function is based on a pseudorandom number, enabling the pseudorandom rounding up or down any non-integer row and column subscripts. Also, the SR function exceptionally enables rounding up any possible cases of subscript inputs that are inferior to a pseudorandom number. The algorithm of interest is the nearest-neighbor interpolation (NNI) which is traditionally based on the deterministic rounding (DR) function. Experimental simulation results are provided to demonstrate the performance of NNI-SR and NNI-DR algorithms before and after applying smoothing and sharpening filters of interest. Additional results are also provided to demonstrate the performance of NNI-SR and NNI-DR interpolated scan conversion algorithms in cardiac ultrasound videos.
Publisher
Science and Information (SAI) Organization Limited
Subject
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