KES 2008: Knowledge-Based Intelligent Information and Engineering Systems pp 403-410 | Cite as
Incremental Learning Method of Simple-PCA
Abstract
In this paper, we propose an incremental learning algorithm named Incremental Simple-PCA. This algorithm is added an incremental learning function to the Simple-PCA that is an approximation algorithm of the principal component analysis where an eigenvector can be calculated by a simple repeated calculation. Using the proposed algorithm, it allows to update faster the eigenvector by using incremental data. To verify the effectiveness of this algorithm, we carry out computer simulations on personal authentication that uses face images and wrist motion discrimination using wrist EMG by incremental learning. As a result, we can confirm the effectiveness from the aspects of accuracy and a computing time by comparing the Incremental PCA that gave the incremental learning function to the conventional PCA.
Keywords
PCA Simple-PCA Incremental PCA Incremental Simple-PCA Incremental learning face recognitionPreview
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