Encoding 3D structural information using multiple self-organizing feature maps

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This paper describes a system which encodes a free-form three-dimensional (3D) object using Artificial Neural Networks. The types of surface shapes which the system is able to handle include not only pre-defined surfaces such as simple piecewise quadric surfaces but also more complex free-form surfaces. The system utilizes two Self-Organizing Maps to encode surface parts and their geometrical relationships. Authors demonstrated the use of this encoding technique on “simple” 3D free-form object recognition systems [M. Takatsuka, R.A. Jarvis, Hierarchical neural networks for learning 3D objects from range images, Journal of Electronic Imaging 7 (1) (1998) 16–28]. This paper discusses the design and mechanism of the Multiple SOFMs for encoding 3D information in greater detail including an application to face (“complex” 3D free-form object) recognition.

论文关键词:Encode,Range image,Self-organizing feature map

论文评审过程:Received 24 November 1998, Revised 3 April 2000, Accepted 28 April 2000, Available online 4 December 2000.

论文官网地址:https://doi.org/10.1016/S0262-8856(00)00047-0