Research on Image Retrieval Optimization Based on Eye Movement Experiment Data

Tianjiao Zhao, Mengjiao Chen, Weifeng Liu, Jiaying Jia
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Abstract

Satisfying a user's actual underlying needs in the image retrieval process is a difficult challenge facing image retrieval technology. The aim of this study is to improve the performance of a retrieval system and provide users with optimized search results using the feedback of eye movement. We analyzed the eye movement signals of the user’s image retrieval process from cognitive and mathematical perspectives. Data collected for 25 designers in eye tracking experiments were used to train and evaluate the model. In statistical analysis, eight eye movement features were statistically significantly different between selected and unselected groups of images (p < 0.05). An optimal selection of input features resulted in overall accuracy of the support vector machine prediction model of 87.16%. Judging the user’s requirements in the image retrieval process through eye movement behaviors was shown to be effective.
基于眼动实验数据的图像检索优化研究
在图像检索过程中满足用户的实际潜在需求是图像检索技术面临的难题。本研究的目的是为了提高检索系统的性能,并利用眼动反馈为用户提供优化的搜索结果。我们从认知和数学的角度分析了用户图像检索过程中的眼动信号。使用眼动追踪实验中收集的25位设计师的数据对模型进行训练和评估。经统计分析,8项眼动特征在选择组和未选择组图像之间差异有统计学意义(p < 0.05)。通过对输入特征的优化选择,支持向量机预测模型的总体准确率达到87.16%。通过眼动行为判断用户在图像检索过程中的需求是有效的。
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