LSTMs可以识别牙菌斑准确度高的专家扫视行为。

Nora Castner, Jonas Frankemölle, C. Keutel, F. Huettig, Enkelejda Kasneci
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引用次数: 4

摘要

目前的许多专业文献都发现,特定领域的任务会引起不同的眼球运动。然而,研究尚未预测使用眼动信息的最佳图像探索,并确定和量化学习者、中级学习者和专家从业者之间搜索策略的差异。通过使用lstm进行扫描路径分类,我们发现随着时间的推移,扫视特征可以高精度地区分所有组。最显著的特征是眼跳速度峰值(72%)、长度(70%)和平均速度(68%)。这些发现促进了专家视觉探索的整体理论,即专家可以使用更长的、更快的扫视行为来快速处理整个场景。将专家模型的发展从眼动扫描路径特征整合到智能辅导系统的潜力是我们研究的最终灵感。此外,该模型不仅局限于牙科x射线的视觉探测,还可以扩展到其他医学领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LSTMs can distinguish dental expert saccade behavior with high ”plaque-urracy”
Much of the current expertise literature has found that domain specific tasks evoke different eye movements. However, research has yet to predict optimal image exploration using saccadic information and to identify and quantify differences in the search strategies between learners, intermediates, and expert practitioners. By employing LSTMs for scanpath classification, we found saccade features over time could distinguish all groups at high accuracy. The most distinguishing features were saccade velocity peak (72%), length (70%), and velocity average (68%). These findings promote the holistic theory of expert visual exploration that experts can quickly process the whole scene using longer and more rapid saccade behavior initially. The potential to integrate expertise model development from saccadic scanpath features into intelligent tutoring systems is the ultimate inspiration for our research. Additionally, this model is not confined to visual exploration in dental xrays, rather it can extend to other medical domains.
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