Comparative analysis and classification of features for image models

被引:19
作者
Gurevich I.B. [1 ]
Koryabkina I.V. [1 ]
机构
[1] Dorodnicyn Computing Center, Russian Academy of Sciences, Moscow, 119991, ul. Vavilova 40
基金
俄罗斯基础研究基金会;
关键词
Original Image; Image Feature; Image Model; Image Recognition; Zernike Moment;
D O I
10.1134/S1054661806030023
中图分类号
学科分类号
摘要
This study has been conducted in the framework of developing one of the directions of descriptive approach to image analysis and recognition, and it is devoted to one of the main tools of this approach, namely, the use of formal image models in solving recognition problems. We systematized the image features widely used in solving applied problems of image analysis and recognition. It is well known that the mathematical nature and functional meaning of these features, as well as computational and measurement methods employed, are extremely various. The main results are the following: different approaches to the classification of image features are introduced, comparative analysis of them is performed, and the aspect of descriptivity is realized by numerous examples of the considered classifications being filled in by features (descriptors). On the basis of these results, certain recommendations and criteria for choosing the features in applied problems of image analysis and recognition are derived. The considered classifications of image features enable the construction of multiple-aspect image representations that preserve information essential to an applied problem. As a tool for choosing the features that depend on specific characteristics of a given problem and the initial data, we propose using parametrical generating descriptive trees, which support the creation and use of multiple-aspect image representation on the basis of different classifications of image features. © Pleiades Publishing, Inc., 2006.
引用
收藏
页码:265 / 297
页数:32
相关论文
共 191 条
[51]  
Haering N., Da Vitoria Lobo N., Features and classification methods to locate deciduous trees in images, Computer Vision and Image Recognition, 75, 1-2, pp. 133-149, (1999)
[52]  
Haralick R., Ridges and valleys on digital images, Comput. Vision Graphics Image Process., 22, 1, pp. 28-38, (1983)
[53]  
Haralick R., Shanmugam K., Dinstein I., Textural features for image classification, IEEE Trans. on Systems, Man, and Cybernetics, SMC-3, pp. 610-621, (1973)
[54]  
Haralick R., Watson L., Laffey T., The topographic primal sketch, Int. J. Robotics Res., 2, 1, pp. 50-71, (1983)
[55]  
Haralick R.M., Shanmugam K., Dinstein I., Texture features for image classification, IEEE Trans. System Man Cybernat., 8, 6, pp. 610-621, (1973)
[56]  
Haralick R.M., Shapiro L.G., Glossary of computer vision terms, Pattern Recognit., 24, 1, pp. 69-93, (1991)
[57]  
Huffman C., Geometric and Solid Modeling: An Introduction, (1989)
[58]  
Horowitz S.L., Pavlidis T., A graph-theoretic approach to picture processing, Comput. Graphics Image Process., 7, pp. 282-291, (1978)
[59]  
Horn B.K.P., Chunk B.G.S., Determining optical flow, Artif. Intell., 17, pp. 185-203, (1981)
[60]  
Hsieh J.-W., Fast stitching algorithm for moving object detection and mosaic construction, Image and Vision Computing, 22, pp. 291-306, (2004)