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MSHSCNN: Multi-Scale Hybrid-Siamese Network to Differentiate Visually Similar Character Classes

机译:MSHSCNN:多级混合暹罗网络区分视觉上类似的字符类

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We address the character recognition challenge of similar-looking character classes. Human Vision System often misinterprets visually similar characters while they are present at singular instances. Often, we pay soft attention to a combination of characters to read and interpret a word. A graphical readout of a display device dashboard shows characters generated from a custom vectored font library. A poorly defined character library or dimension adjustment of fonts in the pre-defined layout can often distort the geometric shape of characters. It requires additional intellectual cues for a human to understand and causes poor accuracy by an automated system responsible for character recognition. Even after generalizing over a large-scale dataset, a well-trained character recognition engine misclassifies these custom character images and exhibits low model confidence. In this paper, we optimize a multi-scale Siamese network using multitask Learning to learn significant discriminative features of visually similar characters from a few labeled samples of a custom vectored English font dataset. Using classification and similarity learning, Multitask Learning improves recognition performance and introduces strong inductive biases. Experiments show that our method can effectively distinguish visually similar characters and improves overall classification accuracy.
机译:我们解决了类似看起来类似的字符课程的角色识别挑战。人类视觉系统经常误解了视觉上类似的角色,而在奇异的情况下它们存在。通常,我们可以轻松地关注以读取和解释一个字的字符组合。显示设备仪表板的图形读数显示自定义矢量后字体库生成的字符。在预定义的布局中定义的字符库或尺寸调整可能常常扭曲字符的几何形状。它需要额外的知识线索来理解,并通过负责字符识别的自动化系统来引起较差的准确性。即使在泛化大规模数据集之后,训练有素的字符识别引擎也会错误分类这些自定义字符图像并展示低模型的信心。在本文中,我们使用多任务学习优化多级暹罗网络,从自定义矢量化的英语字体数据集的少数标记样本中学习视觉上类似字符的显着辨别功能。使用分类和相似度学习,多任务学习提高了识别性能并引入了强烈的感应偏差。实验表明,我们的方法可以有效地区分视觉上类似的特征并提高整体分类精度。

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