Rotation, Size and Shape Recognition by a Spreading Associative Neural Network
スポンサーリンク
概要
- 論文の詳細を見る
Although previous studies using artificial neural networks have been actively applied to object shape recognition, little attention has been paid to the recognition of spatial elements (e.g.position, rotation and size). In the present study, a rotation and size spreading associative neural network (RS-SAN net) is proposed and the efficacy of the RS-SAN net in object orientation (rotation), size and shape recognition is shown. The RS-SAN net pays attention to the fact that the spatial recognition system in the brain (parietal cortex) is involved in both the spatial (e.g. postion, rotation and size) and shape recognition of an object. The RS-SAN net uses spatial spreading by spreading layers, generalized inverse learning and population vector methods for the recognition of the object. The information of the object orientation and size is spread by double spreading layers which have similar tuning characteristics to spatial discrimination neurons (e.g. axis orientation neurons and size discrimination neurons) in the parietal cortex. The RS-SAN net simultaneously recognizes the size of the object irrespective of its orientation and shape, the orientation irrespective of its size and shape, and the shape irrespective of its size and orientation.
- 社団法人電子情報通信学会の論文
- 2001-08-01
著者
-
Miyamoto Shingo
Graduate School Of Engineering Osaka University
-
Miyamoto Shingo
Graduate School Of Engineering Toyama Prefectural University
-
NAKAMURA Kiyomi
Graduate School of Engineering, Toyama Prefectural University
-
Nakamura Kiyomi
Graduate School Of Engineering Toyama Prefectural University
関連論文
- Code Efficiency Evaluation for Embedded Processors(Special Section of Selected Papers from the 14th Workshop on Circuits and Systems in Karuizawa)
- Rotation, Size and Shape Recognition by a Spreading Associative Neural Network
- Rotation Invariant Iris Recognition Method Adaptive to Ambient Lighting Variation(Image Recognition, Computer Vision)