Connor Carey. Aims  Record road scene from Android  Detect speed sign  Determine speed limit  Compare to current speed(GPS)  Alert driver if speeding.

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Presentation transcript:

Connor Carey

Aims  Record road scene from Android  Detect speed sign  Determine speed limit  Compare to current speed(GPS)  Alert driver if speeding

 Library of functions for computer vision  Developed by Intel  C++ interface (JavaCV)  Focuses on Image processing  Android compatible

Progress  Circle detection algorithm  Colour segmentation algorithm  Edge detection algorithm  Segmentation of numbers  Android(problems)

Tasks to complete  Number extraction  Speed limit display (Android)  Speed comparison and warning  Extensive testing

Questions?