Efficient Data Collection and Training for Deep-Learning-Based Indoor Vehicle Navigation
While data quality and quantity directly affect the estimation accuracy of deep learning (DL)-based localization techniques, obtaining empirical position data is often costly due to time-consuming experiments, especially for large-scale indoor environments. This article proposes a novel data collect...
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Veröffentlicht in: | IEEE internet of things journal 2024-06, Vol.11 (11), p.20473-20485 |
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Sprache: | eng |
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Zusammenfassung: | While data quality and quantity directly affect the estimation accuracy of deep learning (DL)-based localization techniques, obtaining empirical position data is often costly due to time-consuming experiments, especially for large-scale indoor environments. This article proposes a novel data collection method to build DL-based localization models for indoor vehicle navigation services using multidirectional beacons. By defining the directed graph of the model applicability, we show that high-resolution position labeling data of a limited number of beacons is sufficient to train the localization model for the whole indoor scenario. However, obtaining the ideal directed graph of the model applicability still requires costly high-resolution empirical data from all beacons. We thus propose an autoencoder-based predicted graph method using only cost-effective low-resolution proximity data. We derive the minimum set of beacons needed to collect high-resolution empirical data to train the localization model. We evaluate the proposed beacon selection method in terms of the estimation accuracy and the data collection cost to the beacon-specific model and the ideal directed graph-based method through the extensive set of experimental measurements. The evaluation results show that the proposed localization model using the autoencoder-based predicted graph provides good estimation accuracy while considerably reducing the required training beacons. |
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ISSN: | 2327-4662 2327-4662 |
DOI: | 10.1109/JIOT.2024.3371385 |