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논문검색

Technology Convergence (TC)

Object Recognition Using the Edge Orientation Histogram and Improved Multi-Layer Neural Network

원문정보

Myung-A Kang

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초록

영어

This paper describes the algorithm that lowers the dimension, maintains the object recognition and significantly reduces the eigenspace configuration time by combining the edge orientation histogram and principle component analysis. By using the detected object region as a recognition input image, in this paper the object recognition method combined with principle component analysis and the multi-layer network which is one of the intelligent classification was suggested and its performance was evaluated. As a pre-processing algorithm of input object image, this method computes the eigenspace through principle component analysis and expresses the training images with it as a fundamental vector. Each image takes the set of weights for the fundamental vector as a feature vector and it reduces the dimension of image at the same time, and then the object recognition is performed by inputting the multi-layer neural network.

목차

Abstract
 1. Introduction
 2. Preprocessing
  2.1 Background Removal
  2.2 EOH Creation
 3. Object Recognition
  3.1 Space Generation using PCA
  3.2 Multi-layer Neural Network using the Error Back-Propagation
 4. Experiment Result
  4.1 Recognition result using MLNN
  4.2 Recognition rate by learning rate
 5. Conclusion
 6. Acknowledgement
 References

저자정보

  • Myung-A Kang Division of Computer Science Engineering, Gwangju University, Korea

참고문헌

자료제공 : 네이버학술정보

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