Campus Ideaz

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smartrouting (1)

NavSmooth

AI-Based Customizable and Predictive Navigation System

 

Current Navigation Map apps have become essential for daily travel, but in my view, they still lack few flexibilities and foresight. At present, Maps offers only a few route options, mostly based on shortest time or distance. In real life, however, many users prefer main roads over shortcuts through sandy or narrow lanes, even if it takes a little longer. This is especially important for cars and heavy vehicles, since narrow roads or sandy paths may cause vehicles to get stuck or delayed. Also, sometimes you may want to pass through a relative’s home or a familiar landmark. The inability to fully customize routes often creates inconvenience, safety risks, and dissatisfaction.

My idea is to enhance Maps with an AI-based customizable route system. Users could set preferences such as “prefer main roads,” “avoid sandy or unsafe lanes,” or “pass through specific landmarks.” Over time, a machine learning model would learn from user behaviour and automatically adapt future route suggestions. Crowdsourced feedback about road conditions like whether a street is sandy, narrow, smooth, or poorly lit would further improve route safety. For instance, if multiple users report that the lane near Bahadurpally is sandy, the app would automatically suggest an alternate main road. Additionally, whenever a user travels through a route that may have poor conditions or if the system detects that the road could be problematic the app can prompt the user to provide feedback or review the road, helping improve route suggestions for everyone.

Another key feature which I would like to introduce is to predictive traffic analysis. Maps shows live traffic, but it does not forecast upcoming congestion. For example, if the app says Uppal to Gachibowli takes 1 hour with no traffic now, it cannot predict that by the time the user reaches a middle spot, peak-hour congestion will begin. With ML analysis of historical traffic data and real-time inputs, the system could forecast future traffic patterns, suggest alternate main roads, or even advise on the best time to start (earlier or later) to avoid jams.

This solution benefits commuters, families, rural travellers, and urban professionals who value both safety and time. Personally, I and also many of you must have often directed through sandy lanes or been caught in traffic that could have been predicted earlier. With this system, users would enjoy personalized, safe, and intelligent navigation that truly adapts to their needs.

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