Shallow Neural Network Model for Hand-Drawn Symbol Recognition in Multi-Writer Scenario

S. Dey, Anjan Dutta, J. Lladós, A. Fornés, U. Pal
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引用次数: 7

Abstract

One of the main challenges in hand drawn symbol recognition is the variability among symbols because of the different writer styles. In this paper, we present and discuss some results recognizing hand-drawn symbols with a shallow neural network. A neural network model inspired from the LeNet architecture has been used to achieve state-of-the-art results with very less training data, which is very unlikely to the data hungry deep neural network. From the results, it has become evident that the neural network architectures can efficiently describe and recognize hand drawn symbols from different writers and can model the inter author aberration.
多写作者手绘符号识别的浅神经网络模型
手绘符号识别的主要挑战之一是由于不同的书写风格而导致符号之间的可变性。本文给出并讨论了用浅神经网络识别手绘符号的一些结果。受LeNet架构启发的神经网络模型已被用于用很少的训练数据获得最先进的结果,这对于数据饥渴的深度神经网络来说是非常不可能的。结果表明,神经网络结构可以有效地描述和识别不同写作者的手绘符号,并可以对写作者间的像差进行建模。
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