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PCGAN-CHAR: Progressively Trained Classifier Generative Adversarial Networks for Classification of Noisy Handwritten Bangla Characters

About

Due to the sparsity of features, noise has proven to be a great inhibitor in the classification of handwritten characters. To combat this, most techniques perform denoising of the data before classification. In this paper, we consolidate the approach by training an all-in-one model that is able to classify even noisy characters. For classification, we progressively train a classifier generative adversarial network on the characters from low to high resolution. We show that by learning the features at each resolution independently a trained model is able to accurately classify characters even in the presence of noise. We experimentally demonstrate the effectiveness of our approach by classifying noisy versions of MNIST, handwritten Bangla Numeral, and Basic Character datasets.

Qun Liu, Edward Collier, Supratik Mukhopadhyay• 2019

Related benchmarks

TaskDatasetResultRank
ClassificationNoisy Bangla characters AWGN (test)
Accuracy79.85
5
ClassificationNoisy Bangla characters Motion (test)
Accuracy89.54
5
Image ClassificationNoisy Bangla Numeral AWGN (test)
Accuracy96.68
5
Image ClassificationNoisy Bangla Numeral Motion (test)
Accuracy98.18
5
Image ClassificationNoisy Bangla Numeral Contrast (test)
Accuracy94.6
5
ClassificationNoisy Bangla characters Contrast (test)
Accuracy68.41
5
Image ClassificationNoisy MNIST AWGN (test)
Accuracy98.43
4
Image ClassificationMNIST motion noisy (test)
Accuracy99.2
4
Digit RecognitionMNIST contrast noisy (test)--
4
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