Final Report of Term Project— ANN for Handwritten Digits Recognition
نویسنده
چکیده
In this paper we present an Aritificial Neural Network to tackle the recognition of human handwritten digits. The ANN proposed here is experimented on the well-known MNIST data set. Without any preprocessing of the data set, our ANN achieves quite low classification error. Combined with clustering techniques, we can build artificial intelligence system which can automatically segment individual digit from images and find its corresponding label.
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