2022 7th International Conference on Smart and Sustainable Technologies (SpliTech) 2022
DOI: 10.23919/splitech55088.2022.9854370
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A GNN-based indoor localization method using mobile RFID platform

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Cited by 5 publications
(2 citation statements)
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“…The GNN changes node feature representations by aggregating data from neighbours, allowing it to capture complicated interactions between locations and sensor inputs. This data may then be utilized to forecast a user's position based on sensor readings [165]- [167]. The authors [168] suggest an Indoor Trajectory employing a sequence-to-sequence learning architecture, a generation trajectory using a graph neural network, and a multi-head attention mechanism to capture correlations among trajectory points to increase performance.…”
Section: Heterogeneous Graphsmentioning
confidence: 99%
“…The GNN changes node feature representations by aggregating data from neighbours, allowing it to capture complicated interactions between locations and sensor inputs. This data may then be utilized to forecast a user's position based on sensor readings [165]- [167]. The authors [168] suggest an Indoor Trajectory employing a sequence-to-sequence learning architecture, a generation trajectory using a graph neural network, and a multi-head attention mechanism to capture correlations among trajectory points to increase performance.…”
Section: Heterogeneous Graphsmentioning
confidence: 99%
“…The GNN changes node feature representations by aggregating data from neighbors, allowing it to capture complicated interactions between locations and sensor inputs. This data may then be utilized to forecast a user's position based on sensor readings [152][153][154]. The authors [155] suggest an Indoor Trajectory employing a sequence-to-sequence learning architecture, a generation trajectory using a graph neural network, and a multi-head attention mechanism to capture correlations among trajectory points to increase performance.…”
Section: Graphical Neuronal Network (Gnn)mentioning
confidence: 99%