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Distance Sets for Shape Filters and Shape Recognition

Distance Sets for Shape Filters and Shape Recognition. Cosmin Grigorescu , Student Member, IEEE, and Nicolai Petkov. INTRODUCTION.

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Distance Sets for Shape Filters and Shape Recognition

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  1. Distance Sets for Shape Filtersand Shape Recognition Cosmin Grigorescu, Student Member, IEEE,and Nicolai Petkov

  2. INTRODUCTION When only the contours or even parts of the contours of the objects are left, like in Fig. 1(b) and (c), we are still able to discriminate between the two objects.

  3. A. Distance Sets • Let be a set of perceptually significant points in an image, which we will call feature points. • Let be the distance between point and its-nearest neighbor from S, . We call the local descriptor : the distance set, more precisely the N-distance set, of point to its first nearest neighbors within .

  4. A. Distance Sets • The feature points in an image can be of different types. • In the character “ C”, for instance, one can consider the points at the extremities of the contour to be of an “end-of-line” type and all other points to be of another, “line” or “contour” type. • As a matter of fact, similar, evidently perceptually significant features are extracted in the visual cortex by so-called simple and complex cells (for lines and edges) , and end stopped cells.

  5. A. Distance Sets • Given two points and from two images and their associated distance sets and , we define the relative difference between the i-neighbor and j-neighbor distances of and , respectively, as

  6. A. Distance Sets

  7. A. Distance Sets • In this way, the quantity indicates how dissimilar two points and are with respect to their distances to feature points in their respective neighborhoods.

  8. A. Distance Sets-Example 1

  9. A. Distance Sets-Example 2 A weaker requirement , can be imposed on the points of

  10. B. Labeled Distance Sets • Let be the set of possible feature labels and let be one such label. • We define the labeled distance subset of a point p to its first neighbor feature points of type as follows:

  11. B. Labeled Distance Sets • Let be the dissimilarity between two labeled distance subsets of type computed according to (3).

  12. B. Labeled Distance Sets • for each label type we can assign a different weight and define the dissimilarity between two labeled distance sets and associated with and as follows:

  13. B. Labeled Distance Sets – Example 1 We assign two types of labels: a regular point, associated with a pixel coming from the contours of the letters, and an end-of-line point at the extremities of the contours.

  14. SETS OF (LABELED) DISTANCE SETS (Definition)

  15. SETS OF (LABELED) DISTANCE SETS -Example

  16. Dissimilarity Between Sets of (Labeled) Distance Sets • Given two sets of points • Let be a one-to-one mapping from and let be the set of all such mappings. Let be a positive constant.

  17. Dissimilarity Between Sets of (Labeled) Distance Sets • Finally, we define the dissimilarity between the sets of distance sets S1and S2 as follows:

  18. Dissimilarity Between Sets of (Labeled) Distance Sets • Similarly, in the case of sets of labeled distance sets,and the cost of a mapping , is defined as

  19. Dissimilarity Between Sets of (Labeled) Distance Sets

  20. Orientation and Scale Invariance • Unless orientation is involved in the definition and extraction of features, a set of distance sets does not depend in any way on the orientation of an object in the 2-D plane:only distances matter. • scale invariance is obtained by resizing all objects to the same bounding box.

  21. DISTANCE SET SHAPE FILTERS (Definition) • Let S1 be the set of all possible subsets of a reference object. • We define the operator associated with the set S1 and having as parameters the number of neighbors taken into account , and a threshold value as follows:

  22. Example of Printed Character Recognition

  23. DISTANCE SET SHAPE FILTERS (Definition) • If sets of labeled distance sets are used with being the set of possible labels, the operator is defined as follows:

  24. Example of Printed Character Recognition

  25. Application to Continuous Handwritten Text

  26. Application to Continuous Handwritten Text

  27. Finding Objects in Complex Scenes

  28. Finding Objects in Complex Scenes • We assigned a different label to each of the four orientations, and a labeled distance set was built for each point of the combined edge map by computing the distances to the first nearest neighbor points occurring in each oriented edge map, k=1…4 .

  29. SHAPE COMPARISON

  30. SHAPE COMPARISON For computing the cost of mappings, the value of the constant in (11) was chosenas the average pair-wise dissimilarity of two points:

  31. SHAPE COMPARISON –Application to Handwritten Character Recognition In a more elaborate example, a database of 286 characters, 11 characters for each of the 26 letters, handwritten by one person was used, Fig. 13.

  32. SHAPE COMPARISON –Application to Object Recognition Based on 2-D Views In the following, we evaluate the shape comparison procedure for recognition of objects based on their 2-D appearances. Each object from this database is photographed from 72 different views around the object, corresponding to equally spaced 5 angular offsets The number of neighbors taken into account within a distance set is , where are the numbers of feature points in two contour maps that are compared.

  33. SHAPE COMPARISON –Application to MPEG-7 Shape Database Retrieval The time needed for computing the dissimilarity between two objects, each being described by approximately 250 points and having associated distance sets of 100 distances, is about 0.7 s on a regular Pentium III/667 MHz computer. With this experimental setup, we achieved an overall retrieval rate of 78.38%. Previous studies report 78.17% [21], 76.51% [20], 76.45% [62] and 75.44% [19].

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