Few-Shot Learning in Wi-Fi-Based Indoor Positioning.

IF 3.4 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY Biomimetics Pub Date : 2024-09-12 DOI:10.3390/biomimetics9090551
Feng Xie, Soi Hoi Lam, Ming Xie, Cheng Wang
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Abstract

This paper explores the use of few-shot learning in Wi-Fi-based indoor positioning, utilizing convolutional neural networks (CNNs) combined with meta-learning techniques to enhance the accuracy and efficiency of positioning systems. The focus is on addressing the challenge of limited labeled data, a prevalent issue in extensive indoor environments. The study explores various scenarios, comparing the performance of the base CNN and meta-learning models. The meta-learning approach involves few-shot learning tasks, such as three-way N-shot, five-way N-shot, etc., to enhance the model's ability to generalize from limited data. The experiments were conducted across various scenarios, evaluating the performance of the models with different numbers of samples per class (K) after filtering by cosine similarity (FCS) during both the stages of data preprocessing and meta-learning. The scenarios included both base classes and novel classes, with and without meta-learning. The results indicated that the base CNN model achieved varying accuracy levels depending on the scenario and the number of samples per class retained after FCS. Meta-learning performed acceptably in scenarios with fewer samples, which are the distinct datasets pertaining to novel classes. With 20 samples per class, the base CNN achieved an accuracy of 0.80 during the pre-training stage, while meta-learning (three-way one-shot) achieved an accuracy of 0.78 on a new small dataset with novel classes.

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基于Wi-Fi的室内定位中的 "少量学习"。
本文利用卷积神经网络(CNN)结合元学习技术,探索了在基于 Wi-Fi 的室内定位中使用少量学习的方法,以提高定位系统的准确性和效率。研究的重点是解决标注数据有限的难题,这是广泛的室内环境中普遍存在的问题。研究探讨了各种情况,比较了基本 CNN 和元学习模型的性能。元学习方法涉及少数几次学习任务,如三次N-shot、五次N-shot等,以增强模型从有限数据中泛化的能力。在数据预处理和元学习这两个阶段,我们在不同的场景下进行了实验,评估了在余弦相似度过滤(FCS)后,每类样本数(K)不同的模型性能。场景包括基础类和新颖类,有元学习和无元学习。结果表明,基础 CNN 模型达到了不同的准确度水平,这取决于场景和 FCS 后每个类别保留的样本数量。在样本较少的情况下,元学习的表现是可以接受的,而样本较少的情况是与新类别相关的不同数据集。在每类 20 个样本的情况下,基础 CNN 在预训练阶段的准确率达到了 0.80,而元学习(三路单次)在新的小型新类别数据集上的准确率达到了 0.78。
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来源期刊
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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