Practitioner-Centric Approach for Early Incident Detection Using Crowdsourced Data for Emergency Services

12/03/2021
by   Yasas Senarath, et al.
0

Emergency response is highly dependent on the time of incident reporting. Unfortunately, the traditional approach to receiving incident reports (e.g., calling 911 in the USA) has time delays. Crowdsourcing platforms such as Waze provide an opportunity for early identification of incidents. However, detecting incidents from crowdsourced data streams is difficult due to the challenges of noise and uncertainty associated with such data. Further, simply optimizing over detection accuracy can compromise spatial-temporal localization of the inference, thereby making such approaches infeasible for real-world deployment. This paper presents a novel problem formulation and solution approach for practitioner-centered incident detection using crowdsourced data by using emergency response management as a case-study. The proposed approach CROME (Crowdsourced Multi-objective Event Detection) quantifies the relationship between the performance metrics of incident classification (e.g., F1 score) and the requirements of model practitioners (e.g., 1 km. radius for incident detection). First, we show how crowdsourced reports, ground-truth historical data, and other relevant determinants such as traffic and weather can be used together in a Convolutional Neural Network (CNN) architecture for early detection of emergency incidents. Then, we use a Pareto optimization-based approach to optimize the output of the CNN in tandem with practitioner-centric parameters to balance detection accuracy and spatial-temporal localization. Finally, we demonstrate the applicability of this approach using crowdsourced data from Waze and traffic accident reports from Nashville, TN, USA. Our experiments demonstrate that the proposed approach outperforms existing approaches in incident detection while simultaneously optimizing the needs for real-world deployment and usability.

READ FULL TEXT
research
11/10/2020

Emergency Incident Detection from Crowdsourced Waze Data using Bayesian Information Fusion

The number of emergencies have increased over the years with the growth ...
research
06/15/2021

Learning Incident Prediction Models Over Large Geographical Areas for Emergency Response Systems

Principled decision making in emergency response management necessitates...
research
12/20/2019

Saliency Based Fire Detection Using Texture and Color Features

Due to industry deployment and extension of urban areas, early warning s...
research
03/13/2019

Lost Silence: An emergency response early detection service through continuous processing of telecommunication data streams

Early detection of significant traumatic events, e.g. a terrorist attack...
research
02/03/2022

Real-time Emergency Vehicle Event Detection Using Audio Data

In this work, we focus on detecting emergency vehicles using only audio ...
research
06/08/2023

Ambulance Demand Prediction via Convolutional Neural Networks

Minimizing response times is crucial for emergency medical services to r...
research
07/16/2022

Proactive Distributed Constraint Optimization of Heterogeneous Incident Vehicle Teams

Traditionally, traffic incident management (TIM) programs coordinate the...

Please sign up or login with your details

Forgot password? Click here to reset