Generic placeholder image

Recent Patents on Computer Science

Editor-in-Chief

ISSN (Print): 2213-2759
ISSN (Online): 1874-4796

Research Article

3D Object Recognition System Based On Local Shape Descriptors and Depth Data Analysis

Author(s): Chiranji Lal Chowdhary*

Volume 12, Issue 1, 2019

Page: [18 - 24] Pages: 7

DOI: 10.2174/2213275911666180821092033

Price: $65

Abstract

Background: A physical object, which is actually in 3D form, is captured by a sensor/ camera (in case of computer vision) and seen by a human eye (in case of a human vision). When someone is observing something, many other things are also involved there which make it more challenging to recognize. After capturing such a thing by a camera or sensor, a digital image is formed which is nothing other than a bunch of pixels. It is becoming important to know that how a computer understands images.

Objective: This paper is for highlighting novel techniques on 3D object recognition system with local shape descriptors and depth data analysis.

Methods: The proposed work is applied to RGBD and COIL-100 datasets and this is of four-fold as preprocessing, feature generation, dimensionality reduction, and classification. The first stage of preprocessing is smoothing by 2D median filtering on the depth (Z-value) and registration by orientation correction on 3D object data. The next stage is of feature generation and having two phases of shape map generation with shape index map and SIFT/SURF descriptors. The dimensionality reduction is the third stage of this proposed work where linear discriminant analysis and principal component analysis are used. The final stage is fused on classification.

Results: Here, calculation of the discriminative subspace for the training set, testing of object data and classification is done by comparing target and query data with different aspects for finding proper matching tasks.

Conclusion: This concludes with new proposed approach of 3D Object Recognition. The local shape descriptors are used for 3D object recognition system to implement and test. This system is achieves 89.2% accuracy for Columbia object image library-100 images by using local shape descriptors.

Keywords: RGBD, SIFT, SURF, COIL-100, principal component analysis, depth map, 3D classification.

Graphical Abstract

[1]
P.J. Besl, and R.C. Jain, "Three-dimensional object recognition", ACM Comput. Surv (CSUR)., vol. 17, pp. 75-145, 1985.
[2]
H. Murase, and S.K. Nayar, "Visual learning and recognition of 3-D objects from appearance", Int. J. Comput. Vis., vol. 14, pp. 5-24, 1995.
[3]
"D. Roobaert and M. M. Van Hulle, “View-based 3D object recognition with support vector machines”, In", Neural Networks for Signal Processing. IX, Proceedings of the 1999 IEEE Signal Processing Society Workshop, pp. 77-84, 1999.
[4]
L. Ma, M. Li, X. Ma, L. Cheng, P. Du, and Y. Liu, "A review of supervised object-based land-cover image classification", ISPRS J. Photogramm. Remote Sens., vol. 130, pp. 277-293, 2017.
[5]
X. Zhang, G. Chen, W. Wang, Q. Wang, and F. Dai, "Object-based land-cover supervised classification for very-high-resolution UAV images using stacked denoising autoencoders", IEEE J. Sel. Top. Appl. Earth Obs. Remote Sens., vol. 10, pp. 3373-3385, 2017.
[6]
A.S. Mian, M. Bennamoun, and R. Owens, "Three-dimensional model-based object recognition and segmentation in cluttered scenes", IEEE Trans. Pattern Anal. Mach. Intell., vol. 28, pp. 1584-1601, 2006.
[7]
A. Saxena, M. Sun, and A.Y. Ng, Make 3D: depth perception from a single still image.In., AAAI, 2008, pp. 1571-1576.
[8]
H. Bay, A. Ess, T. Tuytelaars, and L. Van Gool, "Speeded-up robust features (SURF)", Comput. Vis. Image Underst., vol. 110, pp. 346-359, 2008.
[9]
H. Chen, and B. Bhanu, "Efficient recognition of highly similar 3D objects in range images", IEEE Trans. Pattern Anal. Mach. Intell., vol. 31, pp. 172-179, 2009.
[10]
"L. Bo, X. Ren and D. Fox, “Depth kernel descriptors for object recognition”, In IEEE/RSJ", International Conference on Intelligent Robots and Systems, p. (IROS), pp. 821-826, 2011.
[11]
A. Shaiek, and F. Moutarde, "“Fast 3D keypoints detector and descriptor for view-based 3D objects recognition”, Adv. Depth Image Anal. App", LNCS, vol. 7854, pp. 106-115, 2013.
[12]
"N. Bayramoglu and A. Alatan, “Shape Index SIFT: Range image recognition using local features”, In IEEE", International Conference on Pattern Recognition,, p. pp. 352-355, 2010.
[13]
C.L. Chowdhary, "Linear feature extraction techniques for object recognition: study of PCA and ICA", J. Serbian Soc. Computat. Mechan., vol. 5, pp. 19-26, 2011.
[14]
H.S. Sahambi, and K. Khorasani, "A neural-network appearance-based 3-D object recognition using independent component analysis", IEEE Trans. Neural Netw., vol. 14, pp. 138-149, 2003.
[15]
D.G. Lowe, "Distinctive image features from scale-invariant keypoints", Int. J. Comput. Vis., vol. 60, pp. 91-110, 2004.
[16]
Shimoga. N.B, "Bhushan, Harisha, A. Pawar and Vidyalakshmi, “Symbolic representation based approach for object identification in infrared images", Recent Pat. Comput. Sci., vol. 9, pp. 235-240, 2016.
[17]
"C. L. Chowdhary, K. Muatjitjeja and D. S. Jat, “Three-dimensional object recognition based intelligence system for identification”, In", IEEE International Conference on Conference 18. Emerging Trends in Networks and Computer Communications, p. (ETNCC), 2015, pp. 162-166.
[18]
G.E. Haley, F. Berteau-Pavy, B. Park, and J. Raber, "Effects of ε4 on object recognition in the non-demented elderly", Curr. Aging Sci., vol. 3, pp. 127-137, 2010.
[19]
Y. Yongsheng, C. Qingrui, and X. Jing, "Object-oriented land cover image classification system", Recent Pat. Eng., vol. 4, pp. 56-62, 2010.
[20]
Z. Zhao, G. Xu, Y. Qi, and D. Pan, "An intelligent on-line inspection and warning system based on infrared image for transformer bushings", Recent Adv. Electr. Electron. Eng., vol. 9, pp. 53-62, 2016.
[21]
K.M. Gomes, R.P. Souza, S.S. Valvassori, G.Z. Reus, C.G. Inacio, M.R. Martins, C.M. Comim, and J. Quevedo, "Chronic methylphenidate-effects over circadian cycle of young and adult rats submitted to open-field and object recognition tests", Curr. Neurovasc. Res., vol. 6, pp. 259-266, 2009.
[22]
"T. S. Sobh and M. A. AbdElbar,“An improved model for face recognition verification”,", Recent Patents Comput. Sci., p. Vol. 11, pp. 1-10, 2018.
[23]
W. Zhu, H. Jiang, S. Zhou, and M. Addison, "The review of prospect of remote sensing image processing", Recent Pat. Comput. Sci., vol. 10, pp. 53-61, 2017.
[24]
J. Wang, D. Xiaolei, and P. Zhou, "Current situation and review of image segmentation", Recent Pat. Comput. Sci., vol. 10, pp. 70-79, 2017.
[25]
C. Hung, and C. Tsai, "Automatically annotating images with keywords: A review of image annotation systems", Recent Pat. Comput. Sci., vol. 1, pp. 55-68, 2008.
[26]
G. Zhou, H. Hu, and L. Ma, "Progress and review of 3D image feature reconstruction", Recent Pat. Comput. Sci., vol. 10, pp. 43-52, 2017.
[27]
"C. L. Chowdhary and D. P. Acharjya, "Segmentation of mammograms using a novel intuitionistic possibilistic fuzzy C-Mean clustering algorithm," In", Nature Inspired Computing.. Springer Singapore, Vol. 652, 2017, pp. 75-82
[28]
F-M. Guo, "Study on multi-focus images fusion via shearlet transformation", Recent Pat. Comput. Sci., vol. 10, pp. 89-95, 2017.
[29]
"C. L. Chowdhary and D. P. Acharjya, "Singular value decomposition- principal component analysis-based object recognition approach," In", Bio-Inspired Computing for Image and Video Processing,. pp. 323-341, 2018
[30]
G. Yanfei, C. Junjie, and Z. Ning, "Optimization of surveillance image recognition of civil aviation airport", Recent Pat. Comput. Sci., vol. 10, pp. 270-274, 2017.
[31]
"C. L. Chowdhary, "Application of object recognition with shapeindex identification and 2D scale invariant feature transform for key-point detection," In", Feature Dimension Reduction for Content- Based Image Identification,. 2018.
[32]
Y. Li, and Y. Li, "Face recognition algorithm based on sparse representation of DAE convolution neural network", Recent Pat. Comput. Sci., vol. 10, pp. 290-298, 2017.
[33]
C.L. Chowdhary, Appearance-based 3-D object recognition and pose estimation: using PCA, ICA and SVD-PCA., LAP Lambert Academic Publishing: Germany, 2011.
[34]
C. Wu, X. Yang, and W. Hu, "Binary Pattern Recognition for High-Speed Optical Signal", Recent Pat. Electr. Electron. Eng., vol. 6, pp. 55-62, 2013.
[35]
D.K. Kumar, and C.L. Chowdhary, Shape Index Based Applications of Local Features for Object Recognition., LAP Lambert Academic Publishing: Germany, 2016.
[36]
J. Zhang, and W. Zhou, "Progress and Review of 3D Biological Characteristics Image Recognition", Recent Pat. Comput. Sci., vol. 10, pp. 34-42, 2017.

Rights & Permissions Print Cite
© 2024 Bentham Science Publishers | Privacy Policy