Nonrigid 3D shape retrieval using deep auto-encoders

被引:0
作者
Hamed Ghodrati
A. Ben Hamza
机构
[1] Concordia University,Concordia Institute for Information Systems Engineering
来源
Applied Intelligence | 2017年 / 47卷
关键词
Shape retrieval; Deep learning; Spectral graph wavelets; Biharmonic distance; Intrinsic partition;
D O I
暂无
中图分类号
学科分类号
摘要
The soaring popularity of deep learning in a wide variety of fields ranging from computer vision and speech recognition to self-driving vehicles has sparked a flurry of research interest from both academia and industry. In this paper, we propose a deep learning approach to 3D shape retrieval using a multi-level feature learning paradigm. Low-level features are first extracted from a 3D shape using spectral graph wavelets. Then, mid-level features are generated via the bag-of-features model by employing locality-constrained linear coding as a feature coding method, in conjunction with the biharmonic distance and intrinsic spatial pyramid matching in a bid to effectively measure the spatial relationship between each pair of the bag-of-feature descriptors. Finally, high-level shape features are learned by applying a deep auto-encoder on mid-level features. Extensive experiments on SHREC-2014 and SHREC-2015 datasets demonstrate the much better performance of the proposed framework in comparison with state-of-the-art methods.
引用
收藏
页码:44 / 61
页数:17
相关论文
共 51 条
  • [1] Sun J(2009)A concise and provably informative multi-scale signature based on heat diffusion Comput Graphics Forum 28 1383-1392
  • [2] Ovsjanikov M(2013)A multiresolution descriptor for deformable 3D shape retrieval Vis Comput 29 513-524
  • [3] Guibas L(2014)Global point signature for shape analysis of carpal bones Phys Med Biol 59 961-973
  • [4] Li C(2015)A fast modal space transform for robust nonrigid shape retrieval Vis Comput 32 553-568
  • [5] Ben Hamza A(2016)Deformable 3D shape retrieval using a spectral geometric descriptor Appl Intell 45 2213-229
  • [6] Chaudhari A(2006)Laplace-Beltrami spectra as Shape-DNA’ of surfaces and solids Comput Aided Des 38 342-366
  • [7] Leahy R(2011)Shape Google: Geometric words and expressions for invariant shape retrieval ACM Trans Graphics 1 30-136
  • [8] Wise B(2014)Supervised learning of bag-of-features shape descriptors using sparse coding Comput Graphics Forum 33 127-737
  • [9] Lane N(2015)Audio-visual speech recognition using deep learning Appl Intell 42 722-2167
  • [10] Badawi R(2014)Learning high-level feature by deep belief networks for 3-D model retrieval and recognition IEEE Trans Multimedia 24 2154-11