Handwriting Analysis for Personality Trait Features Identification using CNN

Derry Alamsyah, Samsuryadi, Wijang Widhiarsho, S. Hasan
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引用次数: 1

Abstract

Handwriting analysis is an approach to get information through the handwriting. It extremely useful information, for instance in personality traits identification. The information came from the feature extracted from the handwriting. This feature can be size, slantness, pressure, and so forth. In this research, handwriting analysis is through the AND dataset that provide handwriting dataset along with feature label while most public dataset has nothing with it. By using the Coonvolutional Neural Networks (CNN) potentiality in capturing and recognizing global features, there are 15 models had built in this research in accordance with each feature and divided into three group by its number of types. After built a simple CNN architecture by only conduct two convolution layer, overall result show fair enough performance where the highest rate of accuracy is 80.88%. Furthermore, there are three best features had recognized, which is "entry stroke ‘A’", "size", and "slantness", where the last two is naturally global features. However, the fact that handwriting image data cannot be oversampled which can lead to the bias result, than the imbalance data becomes a problem in this research that reduced the model performance.
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使用CNN进行个性特征识别的笔迹分析
笔迹分析是一种通过笔迹获取信息的方法。这是非常有用的信息,例如在人格特征识别方面。这些信息来自于从笔迹中提取的特征。这个特性可以是尺寸、倾斜度、压力等等。在本研究中,笔迹分析是通过AND数据集进行的,AND数据集提供笔迹数据集和特征标签,而大多数公共数据集没有特征标签。利用卷积神经网络(CNN)在捕获和识别全局特征方面的潜力,本研究根据每个特征构建了15个模型,并按其类型数量分为三组。仅通过两个卷积层构建简单的CNN架构后,总体结果显示出足够好的性能,最高准确率为80.88%。此外,还识别了三个最佳特征,即“入口笔划A”、“大小”和“倾斜度”,其中后两个特征是自然的全局特征。然而,手写体图像数据不能过采样,导致结果偏倚,数据不平衡成为本研究的一个问题,降低了模型的性能。
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