基于自动编码器的数据聚类,用于识别儿童异常重复的手部运动和行为转变模式。

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL
Nushara Wedasingha, Pradeepa Samarasinghe, Lasantha Senevirathna, Michela Papandrea, Alessandro Puiatti
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引用次数: 0

摘要

分析手部重复运动和行为转变模式对发现儿童早期发展中的非典型行为具有特殊意义。及早认识到这些行为为及时干预带来了巨大的希望,这可能对儿童的福祉和未来前景产生深远影响。然而,由于缺乏专业医疗人员和有限的设施,使用传统的人工方法检测这些行为和独特模式具有挑战性。这突出了自动化工具识别儿童异常重复性手部运动和行为转变模式的必要性。我们的研究旨在开发一个自动化模型,用于早期识别异常重复的手部运动和检测独特的行为模式。利用自编码器、自相似矩阵和无监督聚类算法,我们分析了骨架和基于图像的特征、重复次数和重复儿童手部运动的频率。该方法旨在区分不同速度的典型和非典型重复手部运动,通过降维解决数据限制。此外,我们的目标是将行为分类到二元分类之外的集群中。通过对三个数据集(野外手部运动、更新自我刺激行为、自闭症谱系障碍)的实验,我们的模型有效区分了典型和非典型手部运动,为行为过渡模式提供了见解。这有助于医学界理解儿童行为的演变。总之,我们的研究通过能够识别重复性手部运动模式的自动化模型解决了早期发现非典型行为的需求。这一创新有助于神经系统疾病的早期干预策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autoencoder based data clustering for identifying anomalous repetitive hand movements, and behavioral transition patterns in children.

The analysis of repetitive hand movements and behavioral transition patterns holds particular significance in detecting atypical behaviors in early child development. Early recognition of these behaviors holds immense promise for timely interventions, which can profoundly impact a child's well-being and future prospects. However, the scarcity of specialized medical professionals and limited facilities has made detecting these behaviors and unique patterns challenging using traditional manual methods. This highlights the necessity for automated tools to identify anomalous repetitive hand movements and behavioral transition patterns in children. Our study aimed to develop an automated model for the early identification of anomalous repetitive hand movements and the detection of unique behavioral patterns. Utilizing autoencoders, self-similarity matrices, and unsupervised clustering algorithms, we analyzed skeleton and image-based features, repetition count, and frequency of repetitive child hand movements. This approach aimed to distinguish between typical and atypical repetitive hand movements of varying speeds, addressing data limitations through dimension reduction. Additionally, we aimed to categorize behaviors into clusters beyond binary classification. Through experimentation on three datasets (Hand Movements in Wild, Updated Self-Stimulatory Behaviours, Autism Spectrum Disorder), our model effectively differentiated between typical and atypical hand movements, providing insights into behavioral transitional patterns. This aids the medical community in understanding the evolving behaviors in children. In conclusion, our research addresses the need for early detection of atypical behaviors through an automated model capable of discerning repetitive hand movement patterns. This innovation contributes to early intervention strategies for neurological conditions.

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来源期刊
CiteScore
8.40
自引率
4.50%
发文量
110
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