AI Insights

Interactive Geospatial Mapping for Crime Prevention

November 15, 2023


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Introduction

A city government was struggling to visualize and understand its crime data. The city’s existing crime mapping tools were outdated and difficult to use. This made it difficult for the city to identify crime hotspots and develop targeted crime prevention strategies.

Solution

The city government partnered with Omdena to develop an interactive geospatial mapping solution. The solution uses AI to create detailed interactive maps and visualizations of crime data. The solution also allows users to filter and analyze crime data in a variety of ways.

Results

  • The interactive geospatial mapping solution has helped the city government to visualize and understand its crime data more effectively. This has led to the identification of new crime hotspots and the development of more targeted crime prevention strategies.
  • The solution has also helped the city government to improve communication with residents. The city can now publish interactive crime maps on its website and social media pages, which allows residents to see where crime is happening in their community and to take steps to protect themselves.

Overall, the interactive geospatial mapping solution has helped the city government to reduce crime and improve public safety.

Conclusion

Interactive geospatial mapping solutions are a highly effective way for city governments to visualize and understand their crime data, identify crime hotspots, and develop targeted crime prevention strategies. The solution is easy to use and scalable, and it can be customized to meet the specific needs of any city government.

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