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The extrema in a signal and its first few derivatives provide a useful general purpose qualitative description for many kinds of signals. A fundamental problem in computing such descriptions is scale: a derivative must be taken over some neighborhood, but there is seldom a principled basis for choosing its size. Scale-space filtering is a method that describes signals qualitatively, managing the ambiguity of scale in an organized and natural way. The signal is first expanded by convolution with gaussian masks over a continuum of sizes. This "scale-space" image is then collapsed, using its qualitative structure, into a tree providing a concise but complete qualitative description covering all scales of observation. The description is further refined by applying a stability criterion, to identify events that persist of large changes in scale.
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Andrew Witkin (Thu,) studied this question.
synapsesocial.com/papers/6a0eaefe8a6cf20890229264 — DOI: https://doi.org/10.1109/icassp.1984.1172729
Andrew Witkin
Schlumberger (United States)
Intel (United States)
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