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  • Language
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  • Created almost 5 years ago
  • Updated about 4 years ago

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In this task, I developed code for my own facial recognition library using Eigen faces and OpenCV (i.e.) by using API or libraries and without any available APIs or libraries. Eigenvectors have many applications which are not limited to obtaining surface normals from a set of point clouds.

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