Personalized icon design model based on improved Faster-RCNN

IF 3.6
Zhikun Wang , Jiaqian Wang
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引用次数: 0

Abstract

In the digital age, as an important element of visual communication, icons have an increasing demand for personalized design. In order to meet the personalized icon design needs of students, education, management, and design fields, a personalized icon design model based on a faster regional suggestion network is proposed. Firstly, the convolutional neural network is improved to extract the multi-attribute features of icons. The transfer learning is used to optimize model parameter sharing. Then, the improved faster region-Convolutional network model is adopted for object detection, enhancing the ability to classify and recognize icons. The designed method had a recognition accuracy of over 80% in different types of icons. Among different types of icon data, the recognition accuracy of office type icons was the worst, with a recognition accuracy of 81.3%. The recognition accuracy of traffic type icons was the highest, with a recognition accuracy of 98.3%. The model had a processing time of less than 350 ms for different types of icons, with the shortest processing time of 233 ms for social media icons. The research results indicate that the proposed model has high practicality in icon personalized design, and can provide convenient tool support for designers, students, teachers, and users in the field of education management, promoting the popularization and application of personalized icon design.
基于改进型 Faster-RCNN 的个性化图标设计模型
在数字时代,图标作为视觉传达的重要元素,对个性化设计的要求越来越高。为了满足学生、教育、管理、设计等领域的个性化图标设计需求,提出了一种基于快速区域建议网络的个性化图标设计模型。首先对卷积神经网络进行改进,提取图标的多属性特征;利用迁移学习优化模型参数共享。然后,采用改进的更快的区域卷积网络模型进行目标检测,增强了对图标的分类和识别能力。所设计的方法对不同类型的图标的识别准确率在80%以上。在不同类型的图标数据中,办公类型图标的识别准确率最差,识别准确率为81.3%。交通类图标的识别准确率最高,达到98.3%。该模型对不同类型图标的处理时间均小于350 ms,其中对社交媒体图标的处理时间最短,为233 ms。研究结果表明,所提出的模型在图标个性化设计中具有较高的实用性,可以为教育管理领域的设计师、学生、教师和用户提供便捷的工具支持,促进个性化图标设计的普及和应用。
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CiteScore
2.20
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