Incremental Learning and Novelty Detection of Gestures in a Multi-class System

Husam Al-Behadili, A. Grumpe, C. Wohler
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引用次数: 6

Abstract

The difficulties of data streams, i.e. Infinite length, the occurrence of concept-drift and the possible emergence of novel classes, are topics of high relevance in the field of recognition systems. To overcome all of these problems, the system should be updated continuously with new data while the amount of processing time should be kept small. We propose an incremental Parzen window kernel density estimator (IncPKDE) which addresses the problems of data streaming using a model that is insensitive to the training set size and has the ability to detect novelties within multi-class recognition systems. The results show that the IncPKDE approach has superior properties especially regarding processing time and that it is robust to wrongly labelled samples if used in a semi-supervised learning scenario.
多类系统中手势的增量学习与新颖性检测
数据流的困难,即无限长度,概念漂移的发生和可能出现的新类,是识别系统领域中高度相关的主题。为了克服所有这些问题,系统应该不断地更新新数据,同时处理时间应该保持在较小的范围内。我们提出了一种增量Parzen窗口核密度估计器(IncPKDE),它使用对训练集大小不敏感的模型来解决数据流问题,并且能够检测多类识别系统中的新颖性。结果表明,IncPKDE方法具有优越的性能,特别是在处理时间方面,并且如果在半监督学习场景中使用,它对错误标记的样本具有鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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