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Pixel-level Reconstruction and Classification for Noisy Handwritten Bangla Characters

About

Classification techniques for images of handwritten characters are susceptible to noise. Quadtrees can be an efficient representation for learning from sparse features. In this paper, we improve the effectiveness of probabilistic quadtrees by using a pixel level classifier to extract the character pixels and remove noise from handwritten character images. The pixel level denoiser (a deep belief network) uses the map responses obtained from a pretrained CNN as features for reconstructing the characters eliminating noise. We experimentally demonstrate the effectiveness of our approach by reconstructing and classifying a noisy version of handwritten Bangla Numeral and Basic Character datasets.

Manohar Karki, Qun Liu, Robert DiBiano, Saikat Basu, Supratik Mukhopadhyay• 2018

Related benchmarks

TaskDatasetResultRank
ClassificationNoisy Bangla characters Contrast (test)
Accuracy69.66
5
ClassificationNoisy Bangla characters AWGN (test)
Accuracy76.74
5
ClassificationNoisy Bangla characters Motion (test)
Accuracy83.59
5
Image ClassificationNoisy Bangla Numeral AWGN (test)
Accuracy95.46
5
Image ClassificationNoisy Bangla Numeral Motion (test)
Accuracy97.05
5
Image ClassificationNoisy Bangla Numeral Contrast (test)
Accuracy92.85
5
Character ClassificationNoisy Bangla Basic Characters awgn 1.0 (test)
Error Rate23.26
4
Character ClassificationNoisy Bangla Basic Characters contrast 1.0 (test)
Error Rate30.34
4
Character ClassificationNoisy Bangla Numeral awgn
Error Rate4.54
4
Character ClassificationNoisy Bangla Numeral contrast
Error (%)7.15
4
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