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MSER Operator: Maximally Stable Extremal Regions

MSER Operator: Maximally Stable Extremal Regions. MSER regions are connected areas characterized by almost uniform intensity, surrounded by contrasting background. They are constructed through a process of trying multiple thresholds. The selected regions are those that maintain

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MSER Operator: Maximally Stable Extremal Regions

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  1. MSER Operator: Maximally Stable Extremal Regions • MSER regions are connected areas characterized • by almost uniform intensity, surrounded by contrasting • background. • They are constructed through a process of trying • multiple thresholds. • The selected regions are those that maintain • unchanged shapes over a large set of thresholds. Matas et al. 2001

  2. Examples of MSER Regions

  3. Another Example

  4. MSER Construction (1) intensity image shown as a surface function

  5. MSER Construction (2)

  6. MSER Computation (3) • For each threshold, compute the connected binary regions. • Compute a function, such as area A(i), at each threshold value i. • Analyze this function for each potential region to determine those that persist with similar function value over multiple thresholds.

  7. Analysis of Area Function

  8. Regions detected at different thresholds have different areas

  9. Normalization MSER regions Ellipse Fitting Ellipse Dilation

  10. Affine transformation from ellipses to circular regions plus intensity normalization

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