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Journal ArticleDOI

Studies in Global and Local Histogram-Guided Relaxation Algorithms

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TLDR
In this article, an image segmentation algorithm based on histogram clustering and probabilistic relaxation labeling is explored by means of a set of artificially generated test images with known parameters.
Abstract
An image segmentation algorithm based on histogram clustering and probabilistic relaxation labeling is explored. The algorithm is evaluated by means of a set of artificially generated test images with known parameters. Two sources of pixel labeling errors are revealed. The first derives from distribution overlap in the histogram and leads to fragmented or missing regions in a segmentation. The second derives from the gloal nature of the compatibility coefficients used in the relaxation process. The coefficients are shown to be insufficient to correct certain labeling errors and can even cause the destruction of fine image details during the course of the relaxation updating process. A potential solution to these problems is shown to be obtainable by using orientation dependent compatibility coefficients and localizing the scope of the algorithm to small subimages followed by a merging of the segmented subimages.

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Citations
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The Schema System

TL;DR: This paper presents a meta-modelling framework that automates the very labor-intensive and therefore time-heavy and expensive process of manually cataloging and cataloging individual objects in a scene.
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The Image Understanding Architecture

TL;DR: This paper provides an overview of the Image Understanding Architecture (IUA), a massively parallel, multilevel system for supporting real-time image understanding applications and research in knowledge-based computer vision.
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Relaxation labelling algorithms-a review

TL;DR: The literature pertaining to relaxation labelling is surveyed and the important theoretical advances and the interesting applications for which it has proven useful are highlighted.
Journal ArticleDOI

Segmenting Images Using Localized Histograms and Region Merging

TL;DR: A working system for segmenting images of complex scenes is presented that integrates techniques that have evolved out of many years of research in low-level image segmentation at the University of Massachusetts and elsewhere.
Journal ArticleDOI

Ambient illumination and the determination of material changes

TL;DR: It is shown that, given some knowledge about the strength of the ambient illumination, this method provides a better classification of shadow boundaries and material changes.
References
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Journal ArticleDOI

Scene Labeling by Relaxation Operations

TL;DR: This paper formulates the ambiguity-reduction process in terms of iterated parallel operations (i.e., relaxation operations) performed on an array of object, identification data.
Journal ArticleDOI

Image segmentation by clustering

TL;DR: The technique does not require training prototypes but operates in an "unsupervised" mode and is based on a mathematical-pattern recognition model, which achieves a maximum value that is postulated to represent an intrinsic number of clusters in the data.
Journal ArticleDOI

A New Probabilistic Relaxation Scheme

TL;DR: The results are compared with previous work on probabilistic relaxation labeling, and examples are given from the image segmentation domain, to applications of the new scheme in text processing.
Proceedings Article

Boundary and object detection in real world images

TL;DR: A self-scaling local edge detector that can be applied in parallel on a picture is described and clustering algorithms and sequential boundary following algorithms process the edge data to local images of objects and generate a data structure that represents the imaged objects.
Journal ArticleDOI

Boundary and Object Detection in Real World Images

TL;DR: A self-scaling local edge detector that can be applied in parallel on a picture is described in this paper, where the edge data is processed to local images of objects and generated a data structure that represents the imaged objects.