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Simple Eyes Classification

There are lots of multiple kind of eyes on people. We can`t understand which kind of eyes at first view. In this samples, we will show you how to detect type of eyes. Even if there are a lot of variable eyes, firstly we will try to simple classification. We will consider only 3 types of eyes which are CAT EYE, OVAL EYE, DROOPY EYE. We shouldn`t  try to low definition images to get accurate results.

1. CAT EYE





2. ROUND/OVAL EYE






3. DROOPY EYE





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