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Road Health Monitoring System

Kaushal Bhoir, Sujwal Latke, Sarafaraj Shah, Nikita Saindane

Abstract


The purpose of our project is to create a pothole detecting system that helps drivers avoid potholes on the road by providing them with warnings in advance. These alerts could come in the form of an LED light display or a buzzer. This can be utilised on a four-wheeler, particularly by ambulance drivers so that they can quickly save numerous of lives. Road surface quality needs to be regularly evaluated and maintained as necessary. The economy of the nation is significantly boosted by well-maintained roadways. Due to the heavy use of road transportation, there are numerous chances that potholes on the roads can cause accidents. Every driver in India must navigate potholes, which are most common during the rainy season. But each of the methods currently in use has some downsides, such as high setup costs, a risk of being discovered, or a lack of night vision capabilities. We have therefore created a project that could most readily help people. The major goal is to locate and warn of potholes, ideally without human assistance. We are utilising object identification API and AI-enabled cameras to detect potholes in order to accomplish our goal. The driver can use the information gathered to prevent collisions.


Keywords


Pothole, buzzer, LED, road, accident, vehicle, AI, ML, camera

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References


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