基于卷积神经网络的自动机分类在视障辅助技术中的应用

L. M. Bine, Yandre M. G. Costa, L. B. Aylon
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引用次数: 3

摘要

我们的目标是评估卷积神经网络(CNN)在自动机图像识别中的使用,并创建一个可用于构建辅助工具的模型。学习计算机科学的视障人士在获取和学习图表方面有困难。尽管在文献中提供的解决方案可以使盲人学生能够访问图表,并允许创建和操作这些材料,但我们寻求提供教学材料和书籍的图像。所使用的方法包括两个步骤:使用三种类型的CNN对数据进行分类,并结合结果进行最终决策。选择两种方法进行测试:自动机类型的识别和自动机状态数的识别。我们最好的结果是使用乘积规则对三个cnn进行后期融合,结果自动机类型识别的准确率为97%,自动机状态数识别的准确率为91%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automata Classification with Convolutional Neural Networks for Use in Assistive Technologies for the Visually Impaired
Our goal is to evaluate the use of Convolutional Neural Networks (CNN) in the recognition of automata images and to create a model that can be used in the construction of assistive tools. Visually impaired individuals that are studying Computer Science have difficulty in accessing and learning diagrams. Despite the solutions available in the literature to make diagrams accessible to blind students and allow the creation and manipulation of such material, we seek to give access to images of didactic materials and books. The method used consists of two steps: classification of the data using three types of CNN and the combination of the results to make a final decision. Two approaches were chosen to be tested: recognition of the type of automaton and recognition of the number of states of the automaton. Our best result was using late fusion of the three CNNs by the product rule, which resulted in an accuracy of 97% for the automaton type recognition and 91% for the recognition of the number of states of the automaton.
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