多模态数据驱动的智能用眼健康分析方法

A multimodal data-driven approach for intelligent eye health analysis methods

  • 摘要: 近年来,国民视力问题愈发严峻,已成为备受瞩目的社会问题. 多项调查报告显示,电脑、手机、电视等现代数字设备的普及虽然极大地提升了人们的生活和工作质量,但同时也给人们的眼睛带来了前所未有的压力和伤害. 现有的视力保护设备普遍存在便携性不足、数据分析模态单一和对用眼环境判断不准确等问题. 为应对上述挑战,本文提出了一种多模态数据驱动的智能用眼健康分析方法,在硬件层面设计了一种便携式智能眼镜,在软件层面设计了一种基于模糊逻辑推理的多模态数据融合分析方法. 所设计的眼镜集成了多种高精度传感器,能够全面收集多种模态的环境光数据,具体包括蓝光、频闪和眩光. 所设计的分析方法通过模糊逻辑推理系统对多模态数据进行深度融合,从而判断用眼环境对眼睛的危害程度. 实验结果显示,与同类方法相比,本文所提出的方法在精确率、召回率和F1值上分别实现了14.53%、26.13%和17.72%的提升. 研究成果不仅为智能医疗设备的发展提供了有力支撑,更为广大用户的视力健康保护带来了福音.

     

    Abstract: In recent years, the issue of people’s vision has become increasingly important and has emerged as a social issue that has attracted widespread attention. Multiple survey reports indicate that while the widespread use of modern digital devices, such as computers, smartphones, and televisions, has greatly enhanced the quality of people’s lives and work, it has also caused unprecedented strain and damage to their eyes. With the development of artificial intelligence, numerous intelligent devices have emerged on the market, many of which are designed to protect vision. However, existing vision protection devices often encounter problems, such as limited data analysis and inaccurate assessments of the visual environment in which they are used. For instance, some smart glasses designed for vision protection can only analyze a single light source, such as blue light, and are unable to simultaneously analyze multiple diverse light sources. To address these challenges, this study proposes a multimodal data-driven intelligent eye health analysis method, designs a portable pair of smart glasses at the hardware level, and designs a multimodal data fusion analysis method based on fuzzy logic reasoning at the software level. The glasses are designed with a variety of high-precision sensors, which can comprehensively collect ambient light data from various sources. These sensors include three types: visible light spectrum sensor, flicker detection sensor, and glare sensor. The visible light spectrum sensor allows the glasses to perform a precise spectral analysis of ambient light, decompose visible light into different wavelengths, and capture spectral information across the color spectrum. This is especially important for detecting harmful low-frequency blue light. The flicker detection sensor is based on the light-emitting diode flicker measurement method provided by the Solid-State Lighting Systems and Technology Consortium to monitor flicker frequency. The glare sensor is equipped to measure the uniform glare rating, which is used to evaluate the overall glare effect produced by light distribution and luminance. The raw data from the three types of sensors are processed to obtain blue light radiation, the intensity of the flicker frequency, uniform glare rating, and other data. These data are blurred in this study. Blue light is represented by two fuzzy variables, flicker by three fuzzy variables, and uniform glare rating by five fuzzy variables. Fuzzy logic is used to process this data according to fuzzy rules to judge the degree of harm the current environment causes to the eyes. This study designs three sets of fuzzy rules, which are conservative, moderate, and aggressive. In addition, this study conducts comparative experiments using self-built datasets. A group of college students was recruited as experimental participants to simulate various eye use scenarios. The participants wore smart glasses prototypes and engaged in activities such as reading, playing games, using electronic devices in a dark room, watching videos, and performing office work, while experimental data were collected. Experimental results show that compared with similar methods, the proposed method achieves a 14.53%, 26.13%, and 17.72% improvement in accuracy, recall, and F1 value, respectively. The experimental results validate the effectiveness and efficiency of the proposed method.

     

/

返回文章
返回