Survey On Segmentation And Recognition Of Categorized Objects
Keywords:
Image segmentation, object recognition, segmentation of categorized objects, auto-context modelAbstract
Object recognition is the task of finding and identifying objects in an image or video sequence. Object categorization is a typical task of computer vision which involves determining whether or not an image contains some specific category of object. The idea is related with recognition, identification, and detection. The object recognition problem can be defined as a labeling problem based on models of known objects. This is closely tied to the segmentation problem. Without at least a partial recognition of objects, segmentation cannot be done, and without segmentation, object recognition is not possible. Object recognition is generally posed as the problem of matching a representation of the target object with the available image features, while rejecting the background features. This paper compares various image segmentation methods and recognition of categorized objects from noisy web image collection using auto-context model.
References
S. Yu, R. Gross, and J. Shi: Concurrent object recognition and segmentation by graph partitioning. in Advances in Neural Information Processing Systems. Cambridge, MA, USA:MIT Press, 2002.
G.Saranya, L.M.Varalakshmi and R.Deepa: Computationally Ecient Segmentation Model for Collection of Images International Journal of Computer Science Engineering Technology (IJCSET), April 2013.
Neill D.F. Campbell et al: Automatic Object Segmentation from Calibrated Images. 21st ICPR, Nov. 2012, pp. 33093312.
J. Winn and N. Jojic: LOCUS: Learning object classes with unsupervised segmentation. 10th IEEE ICCV, Oct. 2005.
H. Arora, N. Loe, D. A. Forsyth, and N. Ahuja: Unsupervised segmentation of objects using e cient learning. IEEE CVPR,Jun. 2007, pp. 17.
E. Borenstein and S. Ullman: Learning to segment. 8th ECCV,May 2004, pp. 315328.
L. Cao and L. Fei-Fei: Spatially coherent latent topic model for concurrent segmentation and classification of objects and scenes. IEEE 11th ICCV, Oct. 2007, pp. 18.
J. Cui et al.: Transductive object cutout. IEEE CVPR, Jun. 2008, pp. 18.
B. Alexe, T. Deselaers, and V. Ferrari: ClassCut for Unsupervised Class Segmentation. 11th ECCV, 2010, pp. 380393.
L. Mukherjee, V. Singh, J. Xu, and M. D. Collins: Analyzing the subspace structure of related images: Concurrent segmentation of image sets 12th ECCV, 2012, pp. 128142.
L. Wang, J. Xue, N. Zheng, and G. Hua: Automatic salient object extraction with contextual cue. IEEE ICCV, Nov. 2011, pp. 105112.
J. Xue, L. Wang, N. Zheng, and G. Hua: Automatic salient object extraction with contextual cue and its applications to recognition and alpha matting. Pattern Recognition., vol.46, no. 11, pp. 28742889, 2013.
Z. Tu, “Auto-context and its application to high-level vision tasks,” in Proc. IEEE CVPR, Jun. 2008, pp. 1–8.
R. Fergus, L. Fei-Fei, P. Perona, and A. Zisserman: Learning object categories from Googles image search. 10th IEEE ICCV, Oct. 2005, pp. 18161823.
F. Schro, A.Criminisi, and A. Zisserman: Harvesting image databases from the web. IEEE 11th ICCV, Oct. 2007, pp. 18.
N. Sawant, J. Z. Wang, and J. Li: Enhancing training collections for image annotation: An instance-weighted mixture modeling approach. IEEE Transaction on Image Processing, vol. 22, no. 9, pp. 35623577, Sep. 2013.
J. Wu: Efficient HIK SVM learning for image classification. IEEE Transaction on Image Processing, vol. 21, no. 10, pp. 44424453, Oct. 2012.
Le Wang, Gang Hua: Joint Segmentation and Recognition of Categorized Objects From Noisy Web Image Collection. IEEE TRANSACTIONS ON IMAGE PROCESSING, VOL. 23, NO. 9, SEPTEMBER 2014.
L. Wang, J. Xue, N. Zheng, and G. Hua: Automatic salient object extraction with contextual cue. IEEE ICCV, Nov. 2011,pp. 105112.
J. C. Rubio, J. Serrat, A. López, and N. Paragios, “Unsupervised cosegmentation through region matching,” in Proc. IEEE CVPR, Jun. 2012, pp. 749–756.
Y. Chai, V. S. Lempitsky, and A. Zisserman, “BiCoS: A bi-level cosegmentation method for image classification,” in Proc. IEEE ICCV, Nov. 2011, pp. 2579–2586.
C. Rother, V. Kolmogorov, and A. Blake,“„GrabCut‟: Interactive foreground extraction using iterated graph cuts,” ACM Trans. Graph., vol. 23, no. 3, pp. 309–314, 2004.
G. Liu, Z. Lin, X. Tang, and Y. Yu, “A hybrid graph model for unsupervised object segmentation,” in Proc. IEEE 11th ICCV, Oct. 2007, pp. 1–8.
L.-J. Li and L. Fei-Fei, “OPTIMOL: Automatic online picture collection via incremental model learning,” Int. J. Comput. Vis., vol. 88, no. 2, pp. 147–168, 2010.
S. Lazebnik, C. Schmid, and J. Ponce, “Beyond bags of features: Spatial pyramid matching for recognizing natural scene categories,” in Proc. IEEE CVPR, 2006, pp. 2169–2178.
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2015 COMPUSOFT: An International Journal of Advanced Computer Technology
This work is licensed under a Creative Commons Attribution 4.0 International License.
©2023. COMPUSOFT: AN INTERNATIONAL OF ADVANCED COMPUTER TECHNOLOGY by COMPUSOFT PUBLICATION is licensed under a Creative Commons Attribution 4.0 International License. Based on a work at COMPUSOFT: AN INTERNATIONAL OF ADVANCED COMPUTER TECHNOLOGY. Permissions beyond the scope of this license may be available at Creative Commons Attribution 4.0 International Public License.