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Pixel-Level Reconstruction and Classification for Noisy Handwritten Bangla Characters

机译:像素级重建和嘈杂手写孟加拉人物的分类

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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.
机译:手写字符图像的分类技术易受噪声的影响。四肢组可以是从稀疏功能学习的有效表示。在本文中,我们通过使用像素级分类器来提高概率四足节奏的有效性来提取字符像素并从手写字符图像中去除噪声。像素级别Denoiser(深度信仰网络)使用从预磨削的CNN获得的地图响应作为用于重建消除噪声的字符的特征。我们通过重建和分类手写的Bangla数字和基本字符数据集的嘈杂版本来实验地展示了我们的方法的有效性。

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