会议专题

Temporo-Parietal Network Model for 3D Mental Rotation

The ability to rotate objects mentally has been suggested to be related to recognition of visual objects presented from non-canonical viewpoints. However, theneural mechanism underlying this ability is still unclear. In this paper, a global neural network model is proposed. This model consists of two subsystems, a parietal network for mental rotation, and inferior temporal network for object recognition. In this model, it is assumed that mental rotation is realized by a process in which the egocentric representation of objects in the intraparietal sulcus is rotated by motor signals that are internally generated in the premotor cortex. The rotated information is sent downward to the visual cortex as a rotated visual image; meanwhile, object recognition is achieved by a matching process with target object images in the inferior temporal cortex. The parallel distributed processing of this model achieves robust object recognition from various viewpoints including the non-canonical view.

Mental rotation Object recognition Neural network model

Toshio Inui Mitsuru Ashizawa

Department of Intelligence Science and Technology, Graduate School of Informatics, Kyoto University, Kyoto 606-8501, Japan

国际会议

The Second International Conference on Cognitive Neurodynamics--2009(第二届国际认知神经动力学会议)

杭州

英文

91-96

2009-11-15(万方平台首次上网日期,不代表论文的发表时间)