Trauma accident detecting and reporting system

Injuries due to fall or vehicle accident, including bikes or bicycles are relatively common. One of the reason for a person severe health menace after an accident is the unavailability of first aid, due to the delay in informing about the accident. Thus, in the case of incidents involving vehicle accidents or falls, response time is crucial for the timely provision of emergency medical services to the victims of accidents. An effective approach intended to reduce the number of falls-related deaths is: the use of a system for detecting and reporting the occurred accidents, as well as reducing the time between the occurrences of an accident and sending the first emergency respondents to the scene of the accident. This paper presents a solution using mobile terminals (smartphones) for detecting and preventing accidents like falls.

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