articleTheory of ComputingJan 1, 2012DIAMOND OA

University of Chicago · Cornell University

Indexed incrossrefdoaj

Abstract

We describe linear-time algorithms for solving a class of problems that involve transforming a cost function on a grid using spatial information. These problems can be viewed as a generalization of classical distance transforms of binary images, where the binary image is replaced by an arbitrary function on a grid. Alternatively they can be viewed in terms of the minimum convolution of two functions, which is an important operation in grayscale morphology. A consequence of our techniques is a simple and fast method for computing the Euclidean distance transform of a binary image. Our algorithms are also applicable to Viterbi decoding, belief propagation, and optimal control.

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796
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FWCI
54.10
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100%
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31
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Authors

2

Topics & keywords

Keywords
  • Binary image
  • Decoding methods
  • Grayscale
  • Generalization
  • Algorithm
  • Mathematics
  • Computer science
  • Binary number
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