基于自组织分割的时间序列模式的无监督学习、识别和生成

S. Okada, O. Hasegawa
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引用次数: 0

摘要

本研究旨在实现一种基于观察的运动识别与生成机制。这种基于模仿学习的机制可以实现无监督的增量学习、识别和生成直接从运动图像中观察到的时间序列模式。该机制使用混合专家(MoE)和非单调神经网络(NMNN)以自组织的方式将这些模式分割成原语。这些模式表示为MoE输出的原语的排列。应用增强型动态时间规整(DTW)方法识别这些原语排列。此外,我们还利用这一机制引入了一种半监督学习方法。我们通过两个使用手势的实验证实了这种机制的有效性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Learning, Recognition, and Generation of Time-series Patterns Based on Self-Organizing Segmentation
This study is intended to realize a motion recognition and generation mechanism based on observation. This mechanism, which is based on imitative learning, enables unsupervised incremental learning, recognition, and generation of time-series patterns that are observed directly from motion images. The mechanism segments these patterns into primitives in a self-organized manner using mixture-of-experts (MoE) with a non-monotonous neural network (NMNN). These patterns are expressed as permutations of primitives that are output by the MoE. Applying enhanced dynamic time warping (DTW) method recognizes these permutations of primitives. In addition, we introduce a semi-supervised learning method by applying this mechanism. We confirmed the effectiveness of this mechanism through two experiments using gestures
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