Effcient Neural Network Architecture for Fat Target Detection and Recognition


The Transactions of the Korea Information Processing Society (1994 ~ 2000), Vol. 4, No. 10, pp. 2461-2469, Oct. 1997
10.3745/KIPSTE.1997.4.10.2461,   PDF Download:

Abstract

Target detection and recognition problems, in which neural networks are widely used, require translation invariant and real-time processing in addition to the requirements that general pattern recognition problems need. This paper presents a novel architecture that meets the requirements and explains effective methodology to train the network. The proposed neural network is an architectural extension of the shared-weight neural network that is composed of the feature extraction stage followed by the pattern recognition stage. Its feature extraction stage performs correlational operation on the input with a weight kernel, and the entire neural network can be considered a nonlinear correlation filter. Therefore, the output of the proposed neural network is correlational plane with peak values at the location of the target. The architecture of this neural network is suitable for implementing with parallel or distributed computers, and this fact allows the application to the problems which require realtime processing. Net training methodology to overcome the problem caused by unbalance of the number of targets and non-targets is also introduced. To verify the performance, the proposed network is applied to detection and recognition problem of a specific automobile driving around in a parking lot. The results show no false alarms and fast processing enough to track a target that moves as fast as about 190 km per hour.


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Cite this article
[IEEE Style]
W. Y. Kwan, B. Y. Chang, L. J. su, "Effcient Neural Network Architecture for Fat Target Detection and Recognition," The Transactions of the Korea Information Processing Society (1994 ~ 2000), vol. 4, no. 10, pp. 2461-2469, 1997. DOI: 10.3745/KIPSTE.1997.4.10.2461.

[ACM Style]
Weon Yong Kwan, Baek Yong Chang, and Lee Jeong su. 1997. Effcient Neural Network Architecture for Fat Target Detection and Recognition. The Transactions of the Korea Information Processing Society (1994 ~ 2000), 4, 10, (1997), 2461-2469. DOI: 10.3745/KIPSTE.1997.4.10.2461.