会议专题

Characterizing the SOM Feature Detectors Under Various Input Conditions

  A classifier with self-organizing maps(SOM)as feature detectors resembles the biological visual system learning mechanism.Each SOM feature detector is defined over a limited domain of viewing condition,such that its nodes instantiate the presence of an objects part in the corresponding domain.The weights of the SOM nodes are trained via competition,similar to the development of the visual system.We argue that to approach human pattern recognition performance,we must look for a more accurate model of the visual system,not only in terms of the architecture,but also on how the node connections are developed,such as that of the SOMs feature detectors.This work characterizes SOM as feature detectors to test the similarity of its response vis-á-vis the response of the biological visual system,and to benchmark its performance vis-á-vis the performance of the traditional feature detector convolution filter.We use various input environments i.e.inputs with limited patterns,inputs with various input perturbation and inputs with complex objects,as test cases for evaluation.

Feature detectors Self-organizing maps Multilayer perceptron Pattern recognition

Macario O.Cordel II Arnulfo P.Azcarraga

College of Computer Studies,De La Salle University,2401 Taft Avenue,1004 Manila,Philippines

国际会议

The 23rd Pacific-Asia Conference on Knowledge Discovery and Data Mining (第23届亚太知识发现和数据挖掘国际会议(PAKDD2019)

澳门

英文

144-155

2019-04-14(万方平台首次上网日期,不代表论文的发表时间)