通过基于视觉的人工智能方法推进自闭症预测:将高级眼动分析和形状识别与卡尔曼滤波相结合

Suresh Cheekaty, G. Muneeswari
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摘要

近年来,自闭症谱系障碍(ASD)在全球的发病率显著上升,其发病率为 0.62%,凸显了自闭症谱系障碍作为一种广泛影响儿童的神经发育障碍的重要性。被诊断为 ASD 的患者通常在语言习得和理解言语交流方面面临挑战,同时在手势和眼神交流等非言语交流方面也存在困难。眼动分析是一个横跨工业工程学和心理学的多层面领域,它为人类的注意力和行为模式提供了宝贵的见解。本研究提出了一种经济的眼动分析系统,该系统巧妙地将神经频谱网(NSN)技术与卡尔曼滤波技术相结合,实现了精确的眼球位置估计。鉴于早期干预在减轻自闭症影响方面的关键作用,这是一个至关重要的考虑因素。通过将 NSN 和对比度受限的自适应直方图均衡化协同整合到特征提取中,与现有方法相比,所提出的模型表现出更优越的可扩展性和准确性,因此在临床应用中大有可为。一系列全面的实验和严格的评估证明了该系统在眼球运动分类和瞳孔位置识别方面的功效,优于传统的循环神经网络方法。上述学术文章中使用的数据集可通过 Zenodo 存储库访问,并可通过以下链接检索:[https://zenodo.org/records/10935303?preview=1].
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Advancing autism prediction through visual-based AI approaches: integrating advanced eye movement analysis and shape recognition with Kalman filtering

In the recent past, the global prevalence of autism spectrum disorder (ASD) has witnessed a remarkable surge, underscoring its significance as a widespread neurodevelopmental disorder affecting children, with an incidence rate of 0.62%. Individuals diagnosed with ASD often grapple with challenges in language acquisition and comprehending verbal communication, compounded by difficulties in nonverbal communication aspects such as gestures and eye contact. Eye movement analysis, a multifaceted field spanning industrial engineering to psychology, offers invaluable insights into human attention and behavior patterns. The present study proposes an economical eye movement analysis system that adroitly integrates Neuro Spectrum Net (NSN) techniques with Kalman filtering, enabling precise eye position estimation. The overarching objective is to enhance deep learning models for early autism detection by leveraging eye-tracking data, a critical consideration given the pivotal role of early intervention in mitigating the disorder’s impact. Through the synergistic incorporation of NSN and contrast-limited adaptive histogram equalization for feature extraction, the proposed model exhibits superior scalability and accuracy when compared to existing methodologies, thereby holding promising potential for clinical applications. A comprehensive series of experiments and rigorous evaluations underscore the system’s efficacy in eye movement classification and pupil position identification, outperforming traditional Recurrent Neural Network approaches. The dataset utilized in the aforementioned scholarly article is accessible through the Zenodo repository and can be retrieved via the following link: [https://zenodo.org/records/10935303?preview=1].

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