A survey of the use of pattern recognition methods for abstraction, indexing and retrieval of images and video

Aus de_evolutionary_art_org
Version vom 20. Juni 2016, 16:22 Uhr von Gubachelier (Diskussion | Beiträge) (Die Seite wurde neu angelegt: „ == Referenz == S. Antani , R. Kasturi and R. Jain,: A survey of the use of pattern recognition methods for abstraction, indexing and retrieval of images…“)

(Unterschied) ← Nächstältere Version | Aktuelle Version (Unterschied) | Nächstjüngere Version → (Unterschied)
Wechseln zu: Navigation, Suche



Referenz

S. Antani , R. Kasturi and R. Jain,: A survey of the use of pattern recognition methods for abstraction, indexing and retrieval of images and video. Pattern Recognit., vol. 35, no. 4, pp. 945-965, 2002

DOI

http://dx.doi.org/10.1016/S0031-3203(01)00086-3

Abstract

The need for content-based access to image and video information from media archives has captured the attention of researchers in recent years. Research efforts have led to the development of methods that provide access to image and video data. These methods have their roots in pattern recognition. The methods are used to determine the similarity in the visual information content extracted from low level features. These features are then clustered for generation of database indices. This paper presents a comprehensive survey on the use of these pattern recognition methods which enable image and video retrieval by content.

Extended Abstract

Bibtex

@article{Antani2002945,
title = "A survey on the use of pattern recognition methods for abstraction, indexing and retrieval of images and video ",
journal = "Pattern Recognition ",
volume = "35",
number = "4",
pages = "945 - 965",
year = "2002",
note = "",
issn = "0031-3203",
doi = "http://dx.doi.org/10.1016/S0031-3203(01)00086-3",
url = "http://www.sciencedirect.com/science/article/pii/S0031320301000863 http://de.evo-art.org/index.php?title=A_survey_of_the_use_of_pattern_recognition_methods_for_abstraction,_indexing_and_retrieval_of_images_and_video",
author = "Sameer Antani and Rangachar Kasturi and Ramesh Jain",
keywords = "Content-based retrieval",
keywords = "Pattern recognition",
keywords = "Image databases",
keywords = "Video databases "
}

Used References

[1] A. Gupta, R. Jain, Visual information retrieval, Commun. ACM 40 (5) (1997) 70–79.

[2] Y. Rui, T.S. Huang, S.F. Change, Image retrieval: current techniques, promising directions, and open issues, J. Visual Commun. Image Representation 10 (1) (1999) 39–62.

[3] G. Ahanger, T.D.C. Little, A surveyof technologies for parsing and indexing digital video, J. Visual Commun. Image Representation 7 (1) (1996) 28–43.

[4] R. Brunelli, O. Mich, C.M. Modena, A surveyon the automatic indexing of video data, J. Visual Commun. Image Representation 10 (2) (1999) 78–112.

[5] S. Antani, R. Kasturi, R. Jain, Pattern recognition methods in image and video databases: past, present and future, Joint IAPR International Workshops SSPR and SPR. Lecture Notes in Computer Science, Vol. 1451, 1998, pp. 31–58.

[6] F. Idris, S. Panchanathan, Review of image and video indexing techniques, J. Visual Commun. Image Representation 8 (2) (1997) 146–166.

[7] C. Colombo, A. Del Bimbo, P. Pala, Semantics in visual information retrieval, IEEE Multimedia 6 (3) (1999) 38–53.

[8] A. Di Lecce, V. Guerriero, An evaluation of the e0ectiveness of image features for image retrieval, J. Visual Commun. Image Representation 10 (4) (1999) 351–362.

[9] M.K. Mandal, F. Idris, S. Panchanathan, A critical evaluation of image and video indexing techniques in the compressed domain, Image Vision Comput. 17 (7) (1999) 513–529.

[10] U. Gargi, R. Kasturi, S.H. Strayer, Performance characterization of video-shot-change detection methods, IEEE Trans. Circuits Systems Video Technol. 10 (1) (2000) 1–13.

[11] N.-S. Chang, K.-S. Fu, Query-by-pictorial-example, IEEE Trans. Software Eng. 6 (6) (1980) 519–524.

[12] A. Gupta, S. Santini, R. Jain, In search of information in visual media, Commun. ACM 40 (12) (1997) 34–42.

[13] Y. Gong, Intelligent Image Databases—Towards Advanced Image Retrieval, Kluwer Academic Publishers, Boston, 1998.

[14] J.K. Wu, B.M. Mehtre, C.P. Lam, A. Desai Narasimhalu, J.J. Gao, Core: a content-based retrieval engine for multimedia information systems, Multimedia Systems 3 (1) (1995) 25–41.

[15] J.K. Wu, P. Lam, B.M. Mehtre, Y.J. Gao, A.D. Narasimhalu, Content based retrieval for trademark registration, Multimedia Tools Appl. 3 (3) (1996) 245–267.

[16] S.-F. Chang, J.R. Smith, M. Beigi, A. Benitez, Visual information retrieval from large distributed online repositories, Commun. ACM 40 (12) (1997) 62–71.

[17] D. Zhong, S.-F. Chang, An integrated approach for content-based video object segmentation and retrieval, IEEE Trans. Circuits Systems Video Technol. 9 (8) (1999) 1259–1268.

[18] C. Carson, M. Thomas, S. Belongie, J.M. Hellerstein, J. Malik. Blobworld, A system for region-based image indexing and retrieval, Third International Conference on Visual Information and Information Systems (VISUAL’99), Appears in Lecture Notes in Computer Science, Vol. 1614, 1999, pp. 509–516.

[19] K. Porkaew, M. Ortega, S. Mehrotra, Query reformulation for content based multimedia retrieval in MARS, IEEE International Conference on Multimedia Computing Systems, Vol. 2, 1999, pp. 747–751.

[20] T. Gevers, A.W.M. Smeulders, Pictoseek: combining color and shape invariant features for image retrieval, IEEE Trans. Image Process. 9 (1) (2000) 102–119.

[21] Z.-N. Li, O.R. ZaTiane, Z. Tauber, Illumination invariance and object model in content-based image and video retrieval, J. Visual Commun. Image Representation 10 (3) (1999) 219–244.

[22] W. Niblack, X. Zhu, J.L. Hafner, T. Breuel, et al., Updates to the QBIC system, Proceedings of IS&T= SPIE Conference on Storage and Retrieval for Image and Video Databases VI, Vol. SPIE 3312, 1997, pp. 150–161.

[23] D. Poncelon, S. Srinivasan, A. Amir, D. Petkovic, D. Diklic, Keyto e0ective video retrieval: e0ective cataloging and browsing, ACM International Conference on Multimedia, 1998, pp. 99–107.

[24] M.A. Smith, T. Kanade, Video skimming for quick browsing based on audio and image characterization, Technical Report CMU-CS-95-186 Carnegie Mellon University, 1995.

[25] V. Ogle, M. Stonebraker, Chabot: retrieval from a relational database of images, IEEE Comput. 28 (9) (1995) 40–48.

[26] C. Goble, M. O’Docherty, P. Crowther, M. Ireton, J. Oakley, C. Xydeas, The Manchester multimedia information system, Proceedings of the E. D. B. T.’92 Conference on Advances in Database Technology, Vol. 580, 1994, pp. 39–55.

[27] R. Lienhart, W. E0elsberg, R. Jain, VisualGREP: a systematic method to compare and retrieve video sequences, Proceedings of IS&T=SPIE Conference on Storage and Retrieval for Image and Video Database VI, Vol. SPIE 3312, 1997, pp. 271–282.

[28] I.J. Cox, M.L. Miller, T.P. Minka, T.V. Papathomas, P.N. Yianilos, The bayesian image retrieval system, pichunter: theory, implementation and psychophysical experiments, IEEE Trans. Image Process. 9 (1) (2000) 20–37.

[29] P.E. Duda, R.O. Hart, D.G. Stork, Pattern Classi6cation, 2nd Edition, Wiley, Inc., New York, NY, 2000.

[30] A.K. Jain, R.P.W. Duin, J. Mao, Statistical pattern recognition: a review, IEEE Trans. Pattern Anal. Mach. Intell. 22 (1) (2000) 4–37.

[31] A. Nagasaka, Y. Tanaka, Automatic video indexing and full-video search for object appearances, Proceedings of IFIP 2nd Working Conference on Visual Database Systems, 1992, pp. 113–127.

[32] J. Hafner, H.S. Sawhney, W. Equitz, M. Flickner, W. Niblack, ELcient color histogram indexing for quadratic form distance functions, IEEE Trans. Pattern Anal. Mach. Intell. 17 (7) (1995) 729–736.

[33] K. Chen, S. Demko, R. Xie, Similarity-based retrieval of images using color histograms, Proceedings of IS&T=SPIE Conference on Storage and Retrieval for Image and Video Databases VII, Vol. SPIE 3656, 1999.

[34] M. Popescu, P. Gader, Image content retrieval from image databases using feature integration byChoquet integral, Proceedings of IS&T=SPIE Conference on Storage and Retrieval for Image and Video Databases VII, Vol. SPIE 3656, 1999.

[35] D. Androutsos, K.N. Plataniotis, A.N. Venetsanopoulos, Distance measures for color image retrieval, Proceedings of International Conference on Image Processing, 1998, pp. 770–774.

[36] R. Brunelli, O. Mich, On the use of histograms for image retrieval, IEEE International Conference on Multimedia Computing Systems, Vol. 2, 1999, pp. 143–147.

[37] M. Stricker, Bounds of the discrimination power of color indexing techniques, Proceedings of IS&T=SPIE Conference on Storage and Retrieval for Image and Video Databases II, Vol. SPIE 2185, 1994, pp. 15–24.

[38] C. Meilhac, C. Nastar, Relevance feedback and category search in image databases, IEEE International Conference on Multimedia Computing Systems, Vol. 1, 1999, pp. 512–517.

[39] G. Ciocca, R. Schettini, Using relevance feedback mechanism to improve content-based image retrieval, Third International Conference on Visual Information and Information Systems (VISUAL’99), Lecture Notes in Computer Science, Vol. 1614, 1999, pp. 107–114.

[40] E. Di Sciascio, G. Mingolla, M. Mongiello, Contentbased image retrieval over the Web using queryby sketch and relevance feedback, Third International Conference on Visual Information and Information Systems (VISUAL’99), Lecture Notes in Computer Science, Vol. 1614, 1999, pp. 123–130.

[41] J. Peng, B. Bhanu, S. Qing, Probabilistic feature relevance learning for content-based image retrieval, Comput. Vision Image Understanding 75 (1–2) (1999) 150–164.

[42] D. Squire, W. MTuller, H. MTuller, Relevance feedback and term weighting schemes for content-based image retrieval, Third International Conference on Visual Information and Information Systems (VISUAL’99), Lecture Notes in Computer Science, Vol. 1614, 1999, pp. 549–556.

[43] T.P. Minka, R.W. Picard, Interactive learning with a societyof models, Pattern Recognition 30 (4) (1997) 565–581.

[44] M.S. Lew, D.P. Huijsmans, D. Denteneer, Content based image retrieval: KLT, projections, or templates, Proceedings of the First International Workshop on Image Databases and Multi-Media Search, 1996, pp. 27–34.

[45] S. Santini, R. Jain, Beyond querybyexample, ACM International Conference on Multimedia, 1998, pp. 345–350.

[46] S. Santini, R. Jain, Similaritymeasures, IEEE Trans. Pattern Anal. Mach. Intell. 21 (9) (1999) 871–883.

[47] M.J. Swain, D.H. Ballard, Color indexing, Int. J. Comput. Vision 7 (1) (1991) 11–32.

[48] A. Del Bimbo, M. Mugnaini, P. Pala, F. Turco, Visual querying by color perceptive regions, Pattern Recognition 31 (9) (1998) 1241–1253.

[49] C. Colombo, A. Del Bimbo, Color-induced image representation and retrieval, Pattern Recognition 32 (10) (1999) 1685–1696.

[50] A. So0er, Image categorization using N × M-grams, Proceedings of IS&T=SPIE Conference on Storage and Retrieval for Image and Video Databases V, Vol. SPIE 3022, 1997, pp. 121–132.

[51] H.C. Lin, L.L. Wang, S.N. Yang, Color image retrieval based on hidden markov-models, IEEE Trans. Image Process. 6 (2) (1997) 332–339.

[52] S. MTuller, S. Eickeler, G. Rigoll, Multimedia database retrieval using hand-drawn sketches, International Conference on Document Analysis and Recognition, 1999, pp. 289–292.

[53] G. Pass, R. Zabih, Comparing images using joint histograms, ACM J. Multimedia Systems 7 (2) (1999) 119–128.

[54] J. Huang, S. Ravi Kumar, M. Mitra, W.-J. Zhu, R. Zabih, Spatial color indexing and applications, Int. J. Comput. Vision 35 (3) (1999) 245–268.

[55] Y. Tao, W.I. Grosky, Spatial color indexing: a novel approach for content-based image retrieval, IEEE International Conference on Multimedia Computing Systems, Vol. 1, 1999, pp. 530–535.

[56] L. Cinque, S. Levialdi, K.A. Olsen, A. Pellican\o, Color-based image retrieval using spatial-chromatic histograms, IEEE International Conference on Multimedia Computing Systems, Vol. 2, 1999, pp. 969–973.

[57] Y. Chahir, L. Chen, ELcient content-based image retrieval based on color homogenous objects segmentation and their spatial relationship characterization, IEEE International Conference on Multimedia Computing Systems, Vol. 2, 1999, pp. 969–973.

[58] J.R. Smith, C.-S. Li, Image classi6cation and querying using composite region templates, Comput. Vision Image Understanding 75 (1–2) (1999) 165–174.

[59] C. Brambilla, A. Della Ventura, I. Gagliardi, R. Schetini, Multiresolution wavelet transform and supervised learning for content-based image retrieval, IEEE International Conference on Multimedia Computing Systems, Vol. 1, 1999, pp. 183–188.

[60] A. Vailaya, A. Jain, H.-J. Zhang, On image classi6cation: cityimages vs. landscapes, J. Visual Commun. Image Representation 31 (12) (1998) 1921–1935.

[61] D. Androutsos, K.N. Plataniotis, A.N. Venetsanopoulos, A novel vector-based approach to color image retrieval using a vector angular-based distance metric, Comput. Vision Image Understanding 75 (1–2) (1999) 46–58.

[62] G.P. Babu, B.M. Mehtre, M.S. Kankanhalli, Color indexing for eLcient image retrieval, Multimedia Tools Appl. 1 (4) (1995) 327–348.

[63] M.S. Kankanhalli, B.M. Mehtre, J.K. Wu, Cluster based color matching for image retrieval, Pattern Recognition 29 (4) (1996) 701–708.

[64] B.M. Mehtre, M.S. Kankanhalli, A.D. Narasimhalu, G.C. Man, Color matching for image retrieval, Pattern Recognition Lett. 16 (3) (1995) 325–331.

[65] M.S. Kankanhalli, B.M. Mehtre, H.Y. Huang, Color and spatial feature for content-based image retrieval, Pattern Recognition Lett. 20 (1) (1999) 109–118.

[66] S. Krishnamachari, M. Abdel-Mottaleb, A scalable algorithm for image retrieval bycolor, Proceedings of the International Conference on Image Processing, 1998, pp. 119–122.

[67] K. Hirata, S. Mukherjea, W.-S. Li, Y. Hara, Integrating image matching and classi6cation for multimedia retrieval, IEEE International Conference on Multimedia Computing Systems, Vol. 1, 1999, pp. 257–263.

[68] P. Scheunders, A comparison of clustering algorithms applied to color image quantization, Pattern Recognition Lett. 18 (11–13) (1997) 1379–1384.

[69] J. Wang, W.-J., Yang, R. Acharya, Color clustering techniques for color-content-based image retrieval from image databases, IEEE International Conference on Multimedia Computing Systems, 1997, pp. 442–449.

[70] J. Wang, W.-J. Yang, R. Acharya, ELcient access to and retrieval from a shape image database, Workshop on Content Based Access to Image and Video Libraries, 1998, pp. 63–67.

[71] U. Gargi, R. Kasturi, Image database querying using a multi-scale localized color-representation, Workshop on Content Based Access to Image and Video Libraries, 1999, pp. 28–32.

[72] A. Del Bimbo, P. Pala, E0ective image retrieval using deformable templates, Proceedings of the International Conference on Pattern Recognition, 1996, pp. 120–124.

[73] S. Scarlo0, Deformable prototypes for encoding shape categories in image databases, Pattern Recognition 30 (4) (1997) 627–641.

[74] P. Pala, S. Santini, Image retrieval byshape and texture, Pattern Recognition 32 (3) (1999) 517–527.

[75] M. Adoram, M.S. Lew, IRUS: image retrieval using shape, IEEE International Conference on Multimedia Computing Systems, Vol. 2, 1999, pp. 597–602.

[76] B. GTunsel, A. Murat Tekalp, Shape similaritymatching for query-by-example, Pattern Recognition 31 (7) (1998) 931–944.

[77] Z. Lei, T. Tasdizen, D. Cooper, Object signature curve and invariant shape patches for geometric indexing into pictorial databases, Proceedings of IS&T=SPIE Conference on Multimedia Storage and Archiving Systems II, Vol. SPIE 3229, 1997, pp. 232–243.

[78] R. Alferez, Y.-F., Wang, Image indexing and retrieval using image-derived, geometricallyand illumination invariant features, IEEE International Conference on Multimedia Computing Systems, Vol. 1, 1999, pp. 177–182.

[79] E.G.M. Petrakis, E. Milios, ELcient retrieval byshape content, IEEE International Conference on Multimedia Computing Systems, Vol. 2, 1999, pp. 616–621.

[80] F. Mokhtarian, S. Abbasi, Retrieval of similar shapes under aLne transform, Third International Conference on Visual Information and Information Systems (VISUAL’99), Lecture Notes in Computer Science, Vol. 1614, 1999, pp. 566–574.

[81] D. Sharvit, J. Chan, H. Tek, B.B. Kimia, Symmetry-based indexing of image databases, J. Visual Commun. Image Representation 9 (4) (1998) 366–380.

[82] Y. Rui, T.S. Huang, S. Mehrotra, M. Ortega, Automatic matching tool selection using relevance feedback in MARS, Second International Conference on Visual Information Systems (VISUAL’97), 1997, pp. 109–116.

[83] A.K. Jain, A. Vailaya, Shape-based retrieval: a case study with trademark image databases, Pattern Recognition 31 (9) (1998) 1369–1390.

[84] M. Kliot, E. Rivlin, Invariant-based shape retrieval in pictorial databases, Comput. Vision Image Understanding 71 (2) (1998) 182–197.

[85] S. Derrode, M. Daoudi, F. Ghorbel, Invariant content-based image retrieval using a complete set of Fourier–Mellin descriptors, IEEE International Conference on Multimedia Computing Systems, Vol. 2, 1999, pp. 877–881.

[86] J.R. Smith, S.-F. Chang, Quad-tree segmentation for texture-based image query, ACM International Conference on Multimedia 1994, pp. 279–286.

[87] M. Borchani, G. Stammon, Use of texture features for image classi6cation and retrieval, Proceedings of IS&T=SPIE Conference on Multimedia Storage and Archiving Systems II, Vol. SPIE 3229, 1997, pp. 401–406.

[88] B.S. Manjunath, W.Y. Ma, Texture features for browsing and retrieval of image data, IEEE Trans. Pattern Anal. Mach. Intell. 18 (8) (1996) 837–842.

[89] J. Puzicha, T. Hofmann, J.M. Buhmann, Non-parametric similaritymeasures for unsupervised texture segmentation and image retrieval, Proceedings of IEEE Conference on Computer Vision and Pattern Recognition, 1997, pp. 267–272.

[90] M.K. Mandal, T. Aboulnasr, S. Panchanathan, Fast wavelet histogram techniques for image indexing, Comput. Vision Image Understanding 75 (1–2) (1999) 99–110.

[91] R. Milanese, M. Cherbuliez, A rotation, translation, and scale invariant approach to content-based image retrieval, J. Visual Commun. Image Representation 10 (2) (1999) 186–196.

[92] N. Strobel, C.S. Li, V. Castelli, MMAP: modi6ed maximum a posteriori algorithm for image segmentation in large image=video databases, Proceedings of IEEE International Conference on Image Processing, 1997, pp. 196–199.

[93] A.P. Pentland, R.W. Picard, S. Sclaro0, Photobook: content-based manipulation of image databases, Int. J. Comput. Vision 18 (3) (1996) 233–254.

[94] F. Liu, R.W. Picard, Periodicity, directionality, and randomness: Wold features for image modeling and retrieval, IEEE Trans. Pattern Anal. Mach. Intell. 18 (7) (1996) 722–733.

[95] Y. Zhong, A. Jain, Object localization using color, texture and shape, Pattern Recognition 33 (4) (2000) 671–684.

[96] A. Mojsilovic, J. Kovacevic, J. Hu, R.J. Safranek, S.K. Ganpathy, Matching and retrieval based on vocabularyand grammar of color patterns, IEEE Int. Conf. Multimedia Computing Systems, Vol. 1, 1999, pp. 189–194.

[97] S. Scarlo0, M. La Cascia, S. Sethi, L. Taycher, Unifying textual and visual cues for content-based image retrieval on the World Wide Web, Comput. Vision Image Understanding 75 (1–2) (1999) 86–98.

[98] A.P. Berman, L.G. Shapiro, A Mexible image database system for content-based retrieval, Comput. Vision Image Understanding 75 (1–2) (1999) 175–195.

[99] M.M. Yeung, B.-L. Yeo, Video visualization for compact presentation and fast browsing of pictorial content, IEEE Trans. Circuits Systems Video Technol. 7 (5) (1997) 771–785.

[100] Y. Gong, An accurate and robust method for detecting video shot boundaries, IEEE International Conference on Multimedia Computing Systems, Vol. 1, 1999, pp. 850–854.

[101] R. Zabih, R. Miller, K. Mai, A feature-based algorithm for detecting and classifying scene breaks, ACM International Conference on Multimedia, 1995, pp. 189–200.

[102] A. Hampapur, R. Jain, T. Weymouth, Production model based digital video segmentation, J. Multimedia Tools Appl. 1 (1) (1995) 9–46.

[103] W.M. Kim, S.M.-H. Song, H. Kim, C. Song, B.W. Kwoi, S.G. Kim, A morphological approach to scene change detection and digital video storage and retrieval, Proceedings of IS&T=SPIE Conference on Storage and Retrieval for Image and Video Databases VII, Vol. SPIE 3656, 1999, pp. 733–743.

[104] F. Arman, A. Hsu, M.-Y. Chiu, Feature management for large video databases, Proceedings of IS&T=SPIE Conference on Storage and Retrieval for Image and Video Databases I, Vol. SPIE 1908, 1993, pp. 2–12.

[105] H.J. Zhang et al., Video parsing using compressed data, SPIE Symposium on Electronic Imaging Science and Technology: Image and Video Processing II, 1994, pp. 142–149.

[106] N.V. Patel, I.K. Sethi, Video shot detection and characterization for video databases, (Special issue on multimedia), Pattern Recognition 30 (1997) 583–592.

[107] H.C. Liu, G.L. Zick, Scene decomposition of MPEG compressed video, SPIE=IS&T Symposium on Electronic Imaging Science and Technology: Digital Video Compression: Algorithms and Technologies, Vol. 2419, 1995, pp. 26–37.

[108] B. Yeo, B. Liu, Rapid scene analysis on compressed video, IEEE Trans. Circuits Systems Video Technol. 5 (6) (1995) 533–544.

[109] K. Shen, E.J. Delp, A fast algorithm for video parsing using MPEG compressed sequences, IEEE International Conference on Image Processing, October 1995, pp. 252–255.

[110] J. Meng, Y. Juan, S.F. Chang, Scene change detection in a MPEG compressed video sequence, SPIE= IS&T Symposium on Electronic Imaging Science and Technology: Digital video Compression: Algorithms and Technologies, Vol. 2419, 1995.

[111] A. Hanjalic, H. Zhang, Optimal shot boundarydetection based on robust statistical methods, IEEE International Conference on Multimedia Computing Systems, Vol. 2, 1999, pp. 710–714.

[112] K. Tse, J. Wei, S. Panchanathan, A scene change detection algorithm for MPEG compressed video sequences, Canadian Conference on Electrical and Computer Engineering (CCECE’95), Vol. 2, 1995, pp. 827–830.

[113] V. Kobla, D.S. Doermann, K.-I. Lin, C. Falutsos, Compressed domain video indexing techniques using DCT and motion vector information in MPEG video, Proceedings of IS&T=SPIE Conference on Storage and Retrieval for Image and Video Databases V, Vol. SPIE 3022, 1997, pp. 200–211.

[114] Y. Yuso0, J. Kittler, W. Christmas, Combining multiple experts for classifying shot changes in video sequences, IEEE International Conference on Multimedia Computing Systems, Vol. 2, 1999, pp. 700–704.

[115] H.H. Yu, W. Wolf, A hierarchical multiresolution video shot transition detection scheme, Comput. Vision Image Understanding 75 (1=2) (1999) 196–213.

[116] M.K. Mandal, S. Panchanathan, Video segmentation in the wavelet domain, Proceedings of IS&T=SPIE Conference on Multimedia Storage and Archiving Systems III, Vol. SPIE 3527, 1998, pp. 262–270.

[117] R.M. Ford, A quantitative comparison of shot boundarydetection metrics, Proceedings of IS&T=SPIE Conference on Storage and Retrieval for Image and Video Databases VII, Vol. SPIE 3656, 1999, pp. 666–676.

[118] R. Lienhart, Comparison of autmatic shot boundary detection, Proceedings of IS&T=SPIE Conference on Storage and Retrieval for Image and Video Databases VII, Vol. SPIE 3656, 1999, pp. 290–301.

[119] J.S. Boreczky, L.A. Rowe, Comparison of video shot boundarydetection techniques, Proceedings of IS&T=SPIE Conference on Storage and Retrieval for Image and Video Databases IV, Vol. SPIE 2670, 1996, pp. 170–179.

[120] R. Fablet, P. Bouthemy, Motion-based feature extraction and ascent hierarchical classi6cation for video indexing and retrieval, Third International Conference on Visual Information and Information Systems (VISUAL’99), Lecture Notes in Computer Science, Vol. 1614, 1999, pp. 221–228.

[121] A. Akutsu et al., Video indexing using motion vectors, Proceedings of SPIE Visual Communications and Image Processing, Vol. 1818, 1992, pp. 1522–1530.

[122] S. Fischer, I. Rimac, R. Steinmetz, Automatic recognition of camera zooms, Third International Conference on Visual Information and Information Systems (VISUAL’99), Lecture Notes in Computer Science, Vol. 1614, 1999, pp. 253–260.

[123] M. Cherfaoui, C. Bertin, Temporal segmentation of videos: a new approach, SPIE=IS&T Symposium on Electronic Imaging Science and Technology: Digital Video Compression: Algorithms and Technologies, Vol. 2419, 1995.

[124] B. Shahraray, Scene change detection and content-based sampling of video sequences, SPIE=IS&T Symposium on Electronic Imaging Science and Technology: Digital Video Compression: Algorithms and Technologies, Vol. 2419, 1995, pp. 2–13.

[125] E. Ardizzone, M. La Cascia, A. Avanzato, A. Bruna, Video indexing using MPEG motion compensation vectors, IEEE International Conference on Multimedia Computing Systems, Vol. 2, 1999, pp. 725–729.

[126] O. Fatemi, S. Zhang, S. Panchanathan, Optical Mow based model for scene cut detection, Canadian Conference on Electrical and Computer Engineering, Vol. 1, 1996, pp. 470–473.

[127] M.R. Naphade, R. Mehrotra, A.M. Ferman, J. Warnick, T.S. Huang, A.M. Tekalp, A high-performance shot boundarydetection algorithm using multiple cues, Proceedings of IEEE International Conference on Image Processing, 1998, pp. 884–887.

[128] B. GTunsel, A. Murat Tekalp, Content-based video abstraction, Proceedings of IEEE International Conference on Image Processing, 1998, pp. 128–132.

[129] Y. Deng, B.S. Manjunath, NeTra-V: toward an object-based video representation, IEEE Trans. Circuits Systems Video Technol. 8 (5) (1998) 616–627.

[130] F. Coudert, J. Benois-Pineau, P.-Y. Le Lann, D. Barba, Binkey: a system for video content analysis “on the My”, IEEE International Conference on Multimedia Computing Systems, Vol. 1, 1999, pp. 679–684.

[131] S. DaWgtaXs, W. Al-Khatib, A. Ghafoor, R.L. Kashyap, Models for motion-based video indexing and retrieval, IEEE Trans. Image Process. 9 (1) (2000) 88–101.

[132] M. Wu, W. Wolf, B. Liu, An algorithm for wipe detection, Proceedings of IEEE International Conference on Image Processing, 1998, pp. 893–897.

[133] J.M. Corridoni, A. Del Bimbo, Structured representation and automatic indexing of movie information content, Pattern Recognition 31 (2) (1998) 2027–2045.

[134] V. Kobla, D. DeMenthon, D. Doermann, Special e0ect edit detection using video trails: a comparison with existing techniques, Proceedings of IS&T=SPIE Conference on Storage and Retrieval for Image and Video Databases VII, Vol. SPIE 3656, 1999, pp. 302–313.

[135] A. Hanjalic, H. Zhang, An integrated scheme for automated video abstraction based on unsupervised cluster-validity analysis, IEEE Trans. Circuits Systems Video Technol. 9 (8) (1999) 1280–1289.

[136] M. Yeung, B.-L. Yeo, B. Liu, Segmentation of video by clustering and graph analysis, J. Visual Commun. Image Representation 71 (1) (1998) 94–109.

[137] Y. Rui, T.S. Huang, S. Mehrotra, Eploring video structure beyond shots, IEEE International Conference on Multimedia Computing Systems, 1998, pp. 237–240.

[138] R. Lienhart, S. Pfei0er, W. E0elsberg, Video abstracting, Commun. ACM 40 (12) (1997) 54–62.

[139] C. Colombo, A. Del Bimbo, P. Pala, Retrieval of commercials byvideo semantics, Proceedings of IEEE Conference on Computer Vision and Pattern Recognition, 1998, pp. 572–577.

[140] R. Lienhart, C. KuhmTunch, W. E0elsberg, On the detecttion and recognition of television commercials, IEEE International Conference on Multimedia Computing Systems, 1997, pp. 509–516.

[141] J.M. S]anchez, X. Binefa, J. Vitri\a, P. Radeva, Local color analysis for scene break detection applied to TV commercials recognition, Third International Conference on Visual Information and Information Systems (VISUAL’99), Lecture Notes in Computer Science, Vol. 1614, 1999, pp. 237–244.

[142] Y. Zhuang, Y. Rui, T.S. Huang, S. Mehrotra, Adaptive keyframe extraction using unsupervised clustering, Proceedings of IEEE International Conference on Image Processing, 1998, pp. 866–870.

[143] A. Hanjalic, R.L. Lagendijk, J. Biemond, Automatically segmenting movies into logical storyunits, Third International Conference on Visual Information and Information Systems (VISUAL’99), Lecture Notes in Computer Science, Vol. 1614, 1999, pp. 229–236.

[144] J.-Y. Chen, C. Taskiran, A. Albiol, C.A. Bouman, E.J. Delp, ViBE: a video indexing and browsing environment, Proceedings of IS&T=SPIE Conference on Multimedia Storage and Archiving Systems IV, Vol. SPIE 3846, 1999, pp. 148–164.

[145] P. Bouthemy, C. Garcia, R. Ronfard, G. Tziritas, E. Veneau, D. Zugaj, Scene segmentation and image feature extraction for video indexing and retrieval, Third International Conference on Visual Information and Information Systems (VISUAL’99), Lecture Notes in Computer Science, Vol. 1614, 1999, pp. 245–252.

[146] H.S. Chang, S. Sull, S.U. Lee, ELcient video indexing scheme for content-based retrieval, IEEE Trans. Circuits Systems Video Technol. 9 (8) (1999) 1269–1279.

[147] E. Sahouria, A. Zakhor, Content analysis of video using principal components, IEEE Trans. Circuits Systems Video Technol. 9 (8) (1999) 1290–1298.

[148] N. Vasconcelos, A. Lippman, Statistical models of video structure for content analysis and characterization, IEEE Trans. Image Process. 9 (1) (2000) 3–19.

[149] A. Jain, A. Vailaya, W. Xiong, Querybyvideo clip, Proceedings of International Conference on Pattern Recognition, 1998, pp. 909–911.

[150] Y.S. Avrithis, A.D. Doulamis, N.D. Doulamis, S.D. Kollias, A stochastic framework for optimal keyframe extraction from MPEG video databases, Comput. Vision Image Understanding 75 (1=2) (1999) 3–24.

[151] U. Gargi, R. Kasturi, S. Antani, Performance characterization and comparison of video indexing algorithms, Proceedings of IEEE Conference on Computer Vision and Pattern Recognition, 1998, pp. 559–565.

[152] H.C. Liu, G.L. Zick, Automated determination of scene changes in MPEG compressed video, ISCAS—IEEE International Symposium on Circuits and Systems, 1995.

[153] B.-L. Yeo, B. Liu, A uni6ed approach to temporal segmentation of motion JPEG and MPEG compressed video, IEEE International Conference on Multimedia Computing Systems, 1995, pp. 81–89.

[154] I.K. Sethi, N.V. Patel, A statistical approach to scene change detection, Proceedings of IS&T=SPIE Conference on Storage and Retrieval for Image and Video Databases III, Vol. SPIE 2420, 1995, pp. 329–338.

[155] R. Kasturi, R.C. Jain, Computer Vision: Principles, IEEE Computer SocietyPress, Silver Spring, MD, 1991, pp. 469–480.

Links

Full Text

http://www.cc.gatech.edu/~hic/CS7616/Papers/Antani-et-al-2002.pdf

internal file


Sonstige Links