cc眼镜:使用增强现实和深度学习为有色觉缺陷的人提供色彩交流支持

Zhenyang Zhu, Jiyi Li, Ying Tang, K. Go, M. Toyoura, K. Kashiwagi, I. Fujishiro, Xiaoyang Mao
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引用次数: 0

摘要

患有色觉缺陷(CVD)的人在与他人交流时可能会遇到困难,因为他们无法识别颜色名称所指的目标物体。而目前对CVD补偿的研究大多集中在色彩对比度损失的问题上。虽然有一些方法可以为用户提供颜色名称的线索,但这些技术要么需要培训,要么不能保护用户的隐私,即患有CVD的事实。本文基于增强现实(AR)和深度学习技术,提出了一种新的系统,为受CVD影响的用户提供支持信息,以帮助他们进行颜色交流。采用最先进的深度神经网络(DNN)模型进行参考分割(RS)生成支持信息,并利用AR眼镜进行信息呈现。为了进一步提高系统的性能,基于颜色-对象名词对的概念构建了一个新的数据集。评估实验结果表明,新数据集可以提高所采用的深度神经网络模型的性能,并且该系统可以帮助受CVD影响的用户成功地通过颜色名称识别目标物体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CC-Glasses: Color Communication Support for People with Color Vision Deficiency Using Augmented Reality and Deep Learning
People who suffer from color vision deficiency (CVD) can face difficulties when communicating with others by failing to identify target objects referred by their color names. While most existing studies on CVD compensation have focused on the issue of color contrast loss. Although there are approaches can provide clues of color name to users, these techniques either require training, or cannot protect users’ privacy, i.e., the fact of having CVD. In this paper, based on augmented reality (AR) and deep learning technologies, we propose a novel system to provide supporting information to users affected by CVD for color communication assistance. The state-of-the-art deep neural network (DNN) model for referring segmentation (RS) is adopted to generate supporting information, and AR glasses are utilized for information presentation. To improve the performance of the proposed system further, a new dataset is constructed based on a novel concept called Color–Object Noun Pair. The results of evaluation experiments show that the new dataset can enhance the performance of the adopted DNN model, and the proposed system can help users affected by CVD successfully identify target objects by their color names.
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