TY - JOUR PY - 2023// TI - Evaluating a human detection model in a behaviour analysis pipeline for suicide prevention JO - Annual International Conference of the IEEE Engineering in Medicine and Biology Society. A1 - Yogesan, Dharshiena S. A1 - Onie, Sandersan A1 - De Belen, Ryan Anthony A1 - Beavan, Gary A1 - Sowmya, Arcot A1 - Larsen, Mark SP - 1 EP - 4 VL - 2023 IS - N2 - Suicides in public places, such as railways, can have a significant impact on bystanders, railway staff, first responders and the surrounding communities. Behaviours prior to a suicide attempt have been identified, that could potentially be detected automatically. As a first step, the algorithm is required to accurately identify individuals exhibiting these behaviours in different settings. Our study analyses a human detection model focussing on pedestrian detection at railway stations as one component of a broader project to detect pre-suicidal behaviours. Closed-circuit television footage from two stations collected for the same 24-hour period were manually analysed to obtain parameters (true positives, false positives, and false negatives) which were then used to compute performance measures (sensitivity, precision, and F(1) score). The model performed differently in both stations with a sensitivity of 0.73 and F(1) score of 0.84 in Station A and a sensitivity of 0.48 and F(1) score of 0.65 in Station B. Root causes of false negatives identified include differing body postures and occlusion. Although the model was adequate, its performance is dependent on the view captured by the cameras in stations. Collectively, these findings can be used to improve the model's performance.Clinical Relevance-Detecting behaviours prior to a suicide attempt offers a critical period for intervention by bystanders or first responders, potentially interrupting the attempt. This offers the potential to directly reduce suicide attempts, as well as reduce third-party exposure to these traumatic events.

Language: en

LA - en SN - 2375-7477 UR - http://dx.doi.org/10.1109/EMBC40787.2023.10339992 ID - ref1 ER -