Hierarchical perceptual grouping for object recognition : theoretical views and gestalt-law applications
著者
書誌事項
Hierarchical perceptual grouping for object recognition : theoretical views and gestalt-law applications
(Advances in computer vision and pattern recognition / Sameer Singh, Sing Bing Kang, series editors)
Springer, c2019
大学図書館所蔵 全1件
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注記
Includes bibliographical references and index
内容説明・目次
内容説明
This unique text/reference presents a unified approach to the formulation of Gestalt laws for perceptual grouping, and the construction of nested hierarchies by aggregation utilizing these laws. The book also describes the extraction of such constructions from noisy images showing man-made objects and clutter. Each Gestalt operation is introduced in a separate, self-contained chapter, together with application examples and a brief literature review. These are then brought together in an algebraic closure chapter, followed by chapters that connect the method to the data - i.e., the extraction of primitives from images, cooperation with machine-readable knowledge, and cooperation with machine learning.
Topics and features: offers the first unified approach to nested hierarchical perceptual grouping; presents a review of all relevant Gestalt laws in a single source; covers reflection symmetry, frieze symmetry, rotational symmetry, parallelism and rectangular settings, contour prolongation, and lattices; describes the problem from all theoretical viewpoints, including syntactic, probabilistic, and algebraic perspectives; discusses issues important to practical application, such as primitive extraction and any-time search; provides an appendix detailing a general adjustment model with constraints.
This work offers new insights and proposes novel methods to advance the field of machine vision, which will be of great benefit to students, researchers, and engineers active in this area.
目次
Introduction
Reflection Symmetry
Good Continuation in Rows or Frieze Symmetry
Rotational Symmetry
Closure - Hierarchies of Gestalten
Search
Illusions
Prolongation in Good Continuation
Parallelism and Rectangularity
Lattice Gestalten
Primitive Extraction
Knowledge and Gestalt Interaction
Learning
Appendix A: General Adjustment Model with Constraints
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