JSAI2023

Presentation information

Poster Session

General Session » Poster session

[3Xin4] Poster session 1

Thu. Jun 8, 2023 1:30 PM - 3:10 PM Room X (Exhibition hall B)

[3Xin4-12] Proposal on Prediction of Pedestrian Falls Using Knowledge Graph Embedding

〇Shoji Baba1, Hiroki Shibata1, Yasufumi Takama1 (1.Tokyo Metropolitan University)

Keywords:knowledge graph embeddings, fall prediction, link prediction

This paper proposes a method to predict the risk of pedestrian falls by using knowledge graph embedding, assuming that data about actual pedestrian falls in a room or a public space will become available in the future owing to the spread of various sensing devices. In the proposed method, a pedestrian's situation is classified into three types: falling, passable, and impassable, and constructs a knowledge graph that represents each situation as a triple. Using the knowledge graph embedding obtained from the constructed knowledge graph, pedestrian's situation is estimated by link prediction. Experiments are conducted using data generated by a simple simulation to show the effectiveness of the proposed method. Experimental results show that prediction accuracy is improved by adding knowledge about pedestrians and roads.

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