Lightweight Online Semi-Supervised Learning Algorithm for Ultrasonic Gesture Recognition

Pixi Kang, Xiangyu Li
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引用次数: 1

Abstract

This paper presents a lightweight online semi-supervised learning algorithm that utilizes the sequentially arrived unlabeled user gesture samples to improve recognition performance for ultrasonic gesture recognition systems. For each class of gesture, a binary extreme random forest is pre-trained in the offline manner, by which the newly arrived unlabeled samples are given pseudo-labels before they are filtered according to probability and then fed to an initially unexpanded forest to grow its trees incrementally. To limit complexity, feature cache and index pool are introduced. Experiments show that the incrementally grown forests identify 8 gestures and 4 micro gestures with average accuracies of 95.8% and 93.6%, respectively exceeding its nearest offline supervised competitor by 2.1% and 4.1%.
超声手势识别的轻量级在线半监督学习算法
本文提出了一种轻量级的在线半监督学习算法,该算法利用顺序到达的未标记用户手势样本来提高超声波手势识别系统的识别性能。对于每一类手势,以离线方式预训练一个二元极端随机森林,新到达的未标记样本在根据概率进行过滤之前被赋予伪标签,然后馈送到最初未扩展的森林中以增量方式生长树木。为了限制复杂性,引入了特征缓存和索引池。实验表明,增量生长森林识别8种手势和4种微手势的平均准确率分别为95.8%和93.6%,分别比最接近的离线监督竞争对手高出2.1%和4.1%。
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