Pradnya1208/Drawing-recognition-using-CNN-and-flask
This is a Drawing application that uses a Convolutional Neural Network Model to classify drawings made by the user.
This project offers an interactive web application that can recognize human body parts and facial features from drawings. Simply draw a picture of an eye, arm, face, finger, hand, leg, mouth, nose, or ear, and the application will tell you what it thinks you've drawn. It's designed for anyone who wants to quickly classify simple sketches.
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Use this if you need a quick way to identify simple hand-drawn human body parts and facial features.
Not ideal if you need to classify complex drawings, a wide range of objects beyond body parts, or require extremely high accuracy for critical applications.
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Dec 31, 2021
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