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Application of image retrieval for aesthetic evaluation and improvement suggestion of isolated Bangla handwritten characters

机译:图像检索在孤立的Bangla手写字符中的美学评估和改进建议中的应用

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摘要

Bangla is one of the most widely used languages worldwide. This paper presents an application of image retrieval techniques to automatically judge the aesthetic quality of handwritten Bangla isolated characters. Retrieval techniques are also adapted to give improvement suggestions, with a plan to incorporate the methods in applications which can assist in learning/teaching handwriting. The proposed method borrows key concepts from content-based image retrieval. Our method was tested on the BanglaLekha-Isolated data set, which contains images of 84 Bangla characters, with nearly 2000 samples per character. The data set contains evaluation of the aesthetic quality of the handwriting judged on a scale of 1-5. For this work, the dataset was partitioned into a test set of 400 images and a database-set of ≈ 1600 images, per Bangla character. Assuming that a scoring difference of 1 is acceptable, the proposed method achieves an accuracy of 77.39% when using features extracted by a convolutional neural network based autoencoder. Experiments were also done with the popular HOG feature. However, the autoencoder-based results showed clear superiority compared the HOG-based results. Our proposed method for improvement suggestions also shows that it is possible to shows samples from the dataset which will help users improve their handwriting while requiring small changes to their own handwriting.
机译:Bangla是全球最广泛使用的语言之一。本文介绍了图像检索技术的应用,以自动判断手写孟加拉孤立的人物的美学质量。检索技术也适于提供改进的建议,其中计划在可以帮助学习/教学笔迹中纳入应用中的方法。所提出的方法借用基于内容的图像检索的关键概念。我们的方法在Banglalekha-隔离的数据集上进行了测试,其中包含84个Bangla字符的图像,每个字符有近2000个样本。数据集包含评估在1-5的等级判断的手写的美学质量。对于此工作,数据集被分区为400个图像的测试集和数据库集的≈1600张图片,每个孟加拉字符。假设在使用基于卷积神经网络的AuteNcoder提取的特征时,所提出的方法可以实现77.39 %的准确度。实验也是通过流行的猪特征完成的。然而,基于AutoEncoder的结果表明,比较了基于生猪的结果。我们提出的改进建议方法还表明,可以从数据集中显示样本,这将有助于用户提高其手写,同时需要对自己的笔迹进行小的变化。

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