Rotation Invariance for Offline Handwritten Chemical Organic Ring Structure Symbols Recognition

Ting Zhang, Shiyi Du, Xinguo Yu, Jian Zhou
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引用次数: 1

Abstract

Auto grading is an instruction tool which could reduce teachers' burden, provide students with instant feedback and support highly personalized learning. One key technique is to recognize students' handwritten assignments. This work will be focused on the task of recognizing handwritten chemical organic ring structure symbols which exhibit the characteristic of rotational symmetry. Due to the global parameter sharing mechanism and pooling operation, convolutional neural networks (CNNs) have the power to learn translation-invariance features. However, the design of the standard CNN itself does not specifically consider the rotation invariance. In this paper, we explore different methods to improve the property of rotation invariance of CNN and apply them for semantic recognition of handwritten chemical organic ring structure symbols. The first one is a test-time augmentation method with voting strategy without modifications to the network architecture. For the second method, we add 2 new layers into the model to endow it with the property of rotation invariance. These 2 proposed methods are evaluated on a self-collected data set and achieve the recognition aecuracy of 98.75% and 93.125% respectively.
离线手写化学有机环结构符号识别的旋转不变性
自动评分是一种减轻教师负担、为学生提供即时反馈、支持高度个性化学习的教学工具。一个关键的技巧是识别学生的手写作业。本工作将集中于识别具有旋转对称特征的手写化学有机环结构符号的任务。由于全局参数共享机制和池化操作,卷积神经网络具有学习平移不变性特征的能力。然而,标准CNN的设计本身并没有专门考虑旋转不变性。本文探索了提高CNN旋转不变性的不同方法,并将其应用于手写化学有机环结构符号的语义识别。第一种是在不修改网络体系结构的情况下使用投票策略的测试时间增强方法。对于第二种方法,我们在模型中增加了2层,使其具有旋转不变性。在自采集数据集上对这两种方法进行了评价,识别准确率分别达到98.75%和93.125%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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