an option selector mechanism to select the best option against actual(unlabeled) dataset based on the previous training(Labeled) datasets ,written in pure/vanilla JavaScript
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Updated
Oct 26, 2021 - JavaScript
an option selector mechanism to select the best option against actual(unlabeled) dataset based on the previous training(Labeled) datasets ,written in pure/vanilla JavaScript
This a Machine Learning Project which Recognises handwritten digits .i.e. 0 to 9.
Simple Neural Network, Deep Learning for hand written digits recognition.
A Java implementation of Self-Organizing Kohonen Map that classifies hand-written characters.
Using computer vision to recognize hand written digits
Improved Text recognition algorithms on different text domains like scene text, handwritten, document, Chinese/English, even ancient books
Domain adversarial network trained on MNIST-M, SVHN, and USPS
Training a sequential model to classify handwritten digits by using the mnist dataset and creating a interface to classify your own handwritten digits.
handwritten image recognition without using common nueral network libraries
Multiple machine learning algorithms to solve associated problems coupled with varying theoretical examinations.
The hand-writing recognition engine built with TypeScript. Forked from KanjiCanvas.
On Anonymous Commenting: A Greedy Approach to Balance Utilization and Anonymity for Instagram Users - Accepted at SIGIR 2019
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