Paper
3 October 1995 Image segmentation using Gaussian curvature
Neelima Shrikhande, Sripriya Ramaswamy
Author Affiliations +
Abstract
One of the central problems of computer vision is segmentation of images into salient features such as edges and surfaces. Different kinds of similarity criteria can be used to group related pixels together. One such criterion is the curvature of surfaces in an image of a multiobject scene that contains several objects with different shapes. In practice, however, curvature is difficult to calculate because small amount of noise can cause large amounts of errors in calculations of first and second derivatives. In this paper, we use a discrete approximation of Gaussian curvature that is efficient to compute. The approximation is used to segment the image into individual surfaces. Both synthetic and real images have been tested. Results appear quite encouraging.
© (1995) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Neelima Shrikhande and Sripriya Ramaswamy "Image segmentation using Gaussian curvature", Proc. SPIE 2588, Intelligent Robots and Computer Vision XIV: Algorithms, Techniques, Active Vision, and Materials Handling, (3 October 1995); https://doi.org/10.1117/12.222719
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KEYWORDS
Image segmentation

Visual process modeling

Data modeling

Software development

Computer vision technology

Image processing algorithms and systems

Machine vision

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