Friday, 2025/05/09

  • CS/AI
  • C
  • TITECH
  • Switch Language
    • ja日本語 (Japanese)
    • enEnglish

Shimosaka Research Group

pursuing MIUBIQ (machine intelligence in UbiComp Research)

  • Home
    • Members
    • Location
  • News
  • Projects
  • Publications
  • Awards
  • Archives
    • Codes
    • Datasets
Navigation
News Our paper on robustifying Wi-Fi localization by “Between-Location” data augmentation has been published in IEEE Sensors Journal

Our paper on robustifying Wi-Fi localization by “Between-Location” data augmentation has been published in IEEE Sensors Journal

2021/09/17 | NewsPresentations | 1507 views |

Our paper on robustifying Wi-Fi localization by “Between-Location” data augmentation has been published in IEEE Sensors Journal.

In Wi-Fi fingerprint-based indoor localization, we need to acquire a dataset with a high-density dataset in the target environment in this framework.

To overcome the data acquisition cost problem, we propose a brand new data augmentation for Wi-Fi indoor localization named Between-Location (BL) data augmentation.

BL data augmentation generates the fingerprint data for the whole target environment with high density by only using the sparsely sampled data. This data augmentation drastically enables us to reduce data sampled locations while keeping the localization accuracy even if some target locations have no data.

From the experimental results, the localization with BL data augmentation using 10 % sampled location achieves the same accuracy with localization without data augmentation using all sampled locations.

Masato Sugasaki and Masamichi Shimosaka
Robustifying Wi-Fi localization by Between-Location data augmentation
IEEE Sensors Journal, (Early Access)

 

  • tweet

Comments are disabled for this post

Social Networks

  • twitter
  • rss

Recent News

  • Presenting our paper on Exploiting Periodic UWB CIRs for Robust Activity Recognition with Attention-aware Multi-level Wavelet at PerCom2025 2025/02/15
  • Presenting our paper on revealing Universities’ Atmosphere from Visitor Interests has been presented at IEEE BigData 2024 2024/12/16
  • Our paper on adaptive incremental-decremental BLE placement optimization for accurate indoor positioning has been presented at IPIN2024. 2024/10/23
  • Presenting two papers at SIGSPATIAL 2024 2024/10/23
  • Forecasting Crowded Events using Public Announcements with Large Language Models 2024/10/15
  • Forecasting Lifespan of Crowded Events Inspired by Acoustic Synthesis Technique 2024/07/04
  • Our paper on forecasting lifespan of crowded events has been published in IEEE Access 2024/07/04
  • Presenting our paper on Stable IRL from failed demonstrations at IV2024 2024/05/30
  • Presenting our demo on the application “CityScouter” at UbiComp 2023 2023/10/11
  • Presenting our paper on efficient Bluetooth beacon deployment for campus-scale crowd density monitoring application at UbiComp2023 2023/10/05

Search

Copyright 2015 · Shimosaka Research Group at TITECH