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논문검색

Second Generation Neural Network for Two Dimensional Problems

초록

영어

Neurocomputing in complex domain has yielded second generation neural networks. The neural network, which is based on complex value, contains different layers. The attributes of these layers are biases, weights, inputs and outputs. These attributes are also complex numbers. The signal processing, speech processing, learning and prediction of motion on plane are few areas in which complex domain neurocomputing is applied., since in the above said areas, the inputs and outputs are represented by complex values. It has been observed that the neural network with complex value can easily perform the transformation of geometric figures. The examples of transformations are rotation, parallel displacement of straight lines and circles. The neural network can extend to complex domain by the application of transformation. A number in complex domain is composed of different entities i.e. two real numbers and phase information. The two real numbers and phase information of any point on plane is naturally embedded in this number.

목차

Abstact
 1. Introduction
 2. Neural Network with Complex Valued
  2.1. The Behavior of Algorithm of Learning in Complex Domain
 3. Geometrical Transformations
  3.1. Rotation Transformation
  3.2. Similarity Transformation
 4. Conclusions
 References

저자정보

  • Manmohan Shukla Associate Professor CSE Dept. MPEC Kanpur, Professor CSE Dept. HBTI Kanpur
  • B. K. Tripathi Associate Professor CSE Dept. MPEC Kanpur, Professor CSE Dept. HBTI Kanpur

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