一种基于剩余注意力的卷积神经网络无设备室内Wi-Fi定位方法。

IF 2.5 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE PeerJ Computer Science Pub Date : 2024-12-23 eCollection Date: 2024-01-01 DOI:10.7717/peerj-cs.2471
Mashael Maashi, Alanoud Al Mazroa, Shoayee Dlaim Alotaibi, Asma Alshuhail, Muhammad Kashif Saeed, Ahmed S Salama
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引用次数: 0

摘要

如今,基于位置的服务(LBS)被用于各种消费者应用程序,包括室内定位。由于Wi-Fi可以轻松地在各种室内环境中访问,人们对基于Wi-Fi的室内定位越来越感兴趣。在使用通道状态信息(CSI)指纹识别的室内定位系统中,深度学习已经被广泛采用。通常,这些系统包括两个主要组成部分:定位网络和跟踪系统。定位网络负责学习从高维CSI到物理位置的规划,下面的系统使用历史CSI来减少定位误差。本文提出了一种高精度和泛化的定位方法。然而,现有的卷积神经网络(CNN)指纹放置算法具有有限的接收区域,限制了其有效性,因为CSI中的重要数据尚未得到充分的探索。我们提供了一种独特的注意力增强残差CNN来解决这个问题,以便在CSI中获得的数据和全球背景可以充分发挥其潜力。另一方面,在考虑监控设备的通用性时,我们将该方案从CSI环境中分离出来,使其能够在所有上下文中使用单个跟踪系统。更具体地说,我们将跟踪问题重新定义为去噪任务,然后在解决它之前使用深度路由。研究结果阐明了基于剩余注意力的CNN (RACNN)在使用信道状态信息(CSI)指纹识别的无设备Wi-Fi室内定位中的观点和现实解释。此外,我们还研究了不同惯性维单位的精度变化对跟踪性能的负面影响,并实现了精度方差问题的解决方案。所提出的RACNN模型的定位精度达到99.9%,与传统的k近邻(KNN)和贝叶斯推理等方法相比有了显著的提高。具体来说,RACNN模型将平均定位误差降低到0.35 m,在精度上比这些传统方法高出约14%至15%。这一改进证明了该模型处理复杂室内环境的能力,并证明了其在现实场景中的实际适用性。
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A novel device-free Wi-Fi indoor localization using a convolutional neural network based on residual attention.

These days, location-based services, or LBS, are used for various consumer applications, including indoor localization. Due to the ease with which Wi-Fi can be accessed in various interior settings, there has been increasing interest in Wi-Fi-based indoor localisation. Deep learning in indoor localisation systems that use channel state information (CSI) fingerprinting has seen widespread adoption. Usually, these systems comprise two primary components: a positioning network and a tracking system. The positioning network is responsible for learning the planning from high-dimensional CSI to physical positions, and the following system uses historical CSI to decrease positioning error. This work presents a novel localization method that combines high accuracy and generalizability. However, existing convolutional neural network (CNN) fingerprinting placement algorithms have a limited receptive area, limiting their effectiveness since important data in CSI has not been thoroughly explored. We offer a unique attention-augmented residual CNN to remedy this issue so that the data acquired and the global context in CSI may be utilized to their full potential. On the other hand, while considering the generalizability of a monitoring device, we uncouple the scheme from the CSI environments to make it feasible to use a single tracking system across all contexts. To be more specific, we recast the tracking issue as a denoising task and then used a deep route before solving it. The findings illuminate perspectives and realistic interpretations of the residual attention-based CNN (RACNN) in device-free Wi-Fi indoor localization using channel state information (CSI) fingerprinting. In addition, we study how the precision change of different inertial dimension units may negatively influence the tracking performance, and we implement a solution to the problem of exactness variance. The proposed RACNN model achieved a localization accuracy of 99.9%, which represents a significant improvement over traditional methods such as K-nearest neighbors (KNN) and Bayesian inference. Specifically, the RACNN model reduced the average localization error to 0.35 m, outperforming these traditional methods by approximately 14% to 15% in accuracy. This improvement demonstrates the model's ability to handle complex indoor environments and proves its practical applicability in real-world scenarios.

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来源期刊
PeerJ Computer Science
PeerJ Computer Science Computer Science-General Computer Science
CiteScore
6.10
自引率
5.30%
发文量
332
审稿时长
10 weeks
期刊介绍: PeerJ Computer Science is the new open access journal covering all subject areas in computer science, with the backing of a prestigious advisory board and more than 300 academic editors.
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