Expert vision systems integrating image segmentation and recognition processes

Abstract In this paper, we propose a prototype rule-based system which integrates segmentation and recognition processes to analyze and classify objects in an image. This is quite different from the traditional image analysis paradigm which treats segmentation as a prerequisite for recognition and interpretation. There are four basic components in the system, i.e., low-level image processing, feature computation, domain-independent, and domain-dependent subsystems. In the low-level image processing subsystem, various “nonpurposive” operators are employed to divide the image into uniform and homogeneous regions based on the information of intensities. The feature computation subsystem extracts features of each individual region. The domain-independent subsystem employs weak knowledge to filter out “obviously impossible” regions while the domain-dependent subsystem uses domain-specific knowledge to improve the results and finally recognize the objects of interest in the image. Two sets of images are used to demonstrate the capability and flexibility of this system. One set consists of distributor caps (auto parts) of different shapes. The other set is composed of tomographical image pairs acquired by MRI and PET.

[1]  King-Sun Fu,et al.  A graph distance measure for image analysis , 1984, IEEE Transactions on Systems, Man, and Cybernetics.

[2]  Joseph C. Masdeu,et al.  Head and Spine Imaging , 1985 .

[3]  Heinrich Niemann,et al.  A Knowledge Based System for Analysis of Gated Blood Pool Studies , 1985, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[4]  Dana H. Ballard,et al.  Computer Vision , 1982 .

[5]  Thomas O. Binford,et al.  Survey of Model-Based Image Analysis Systems , 1982 .

[6]  King-Sun Fu,et al.  An Image Understanding System Using Attributed Symbolic Representation and Inexact Graph-Matching , 1986, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[7]  Sharon A. Stansfield,et al.  ANGY: A Rule-Based Expert System for Automatic Segmentation of Coronary Vessels From Digital Subtracted Angiograms , 1986, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[8]  Takashi Matsuyama,et al.  SIGMA: A Framework for Image Understanding - Integration of Bottom-Up and Top-Down Analysis , 1985, IJCAI.

[9]  Robert M. Haralick,et al.  Structural Descriptions and Inexact Matching , 1981, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[10]  John P. McDermott,et al.  Rule-Based Interpretation of Aerial Imagery , 1984, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[11]  Martin D. Levine,et al.  Low Level Image Segmentation: An Expert System , 1984, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[12]  Harry G. Barrow,et al.  Experiments in Interpretation-Guided Segmentation , 1977, Artificial Intelligence.

[13]  Rodney A. Brooks,et al.  Symbolic Reasoning Among 3-D Models and 2-D Images , 1981, Artif. Intell..

[14]  Makoto Nagao,et al.  A Structural Analysis of Complex Aerial Photographs , 1980, Advanced Applications in Pattern Recognition.