This paper describes optimal operator for combining left and right sole pressure data in a personal authentication method by\r\ndynamic change of sole pressure distribution while walking.The method employs a pair of right and left sole pressure distribution\r\nchange data.These data are acquired by amat-type load distribution sensor.The system extracts features based on shape of sole and\r\nweight shift from each sole pressure distribution.We calculate fuzzy degrees of right and left sole pressures for a registered person.\r\nFuzzy if-then rules for each registered person are statistically determined by learning data set. Next, we combine the fuzzy degrees\r\nof right and left sole pressure data. In this process, we consider six combination operators. We examine which operator achieves\r\nbest accuracy for the personal authentication. In the authentication system, we identify the walking persons as a registered person\r\nwith the highest fuzzy degree. We verify the walking person as the target person when the combined fuzzy degree of the walking\r\nperson is higher than a threshold. In our experiment, we employed 90 volunteers, and our method obtained higher authentication\r\nperformance by mean and weighted sum operators.
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