Egocentric 3D Skeleton Learning in a Deep Neural Network Encodes Obese-like Motion Representations.

IF 1.8 4区 医学 Q3 MEDICINE, RESEARCH & EXPERIMENTAL
Jea Kwon, Moonsun Sa, Hyewon Kim, Yejin Seong, C Justin Lee
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引用次数: 0

Abstract

Obesity is a growing health concern, mainly caused by poor dietary habits. Yet, accurately tracking the diet and food intake of individuals with obesity is challenging. Although 3D motion capture technology is becoming increasingly important in healthcare, its potential for detecting early signs of obesity has not been fully explored. In this research, we used a deep LSTM network trained with individual identity (identity-trained deep LSTM network) to analyze 3D time-series skeleton data from mouse models with diet-induced obesity. First, we analyzed the data from two different viewpoints: allocentric and egocentric. Second, we trained various deep recurrent networks (e.g., RNN, GRU, LSTM) to predict the identity. Lastly, we tested whether these models effectively encode obese-like motion representations by training a support vector classifier with the latent features from the last layer. Our experimental results indicate that the optimal performance is achieved when utilizing an identity-trained deep LSTM network in conjunction with an egocentric viewpoint. This approach suggests a new way to use deep learning to spot health risks in mouse models of obesity and should be useful for detecting early signs of obesity in humans.

在深度神经网络中进行以自我为中心的三维骨架学习,可编码类似肥胖的运动表象。
肥胖是一个日益令人担忧的健康问题,其主要原因是不良的饮食习惯。然而,准确跟踪肥胖症患者的饮食和食物摄入量却具有挑战性。虽然三维运动捕捉技术在医疗保健领域的重要性日益凸显,但其在检测肥胖症早期症状方面的潜力尚未得到充分挖掘。在这项研究中,我们使用以个体身份进行训练的深度 LSTM 网络(身份训练深度 LSTM 网络)来分析节食诱发肥胖小鼠模型的三维时间序列骨骼数据。首先,我们从两个不同的视角对数据进行了分析:分配中心视角和自我中心视角。其次,我们训练了各种深度递归网络(如 RNN、GRU、LSTM)来预测身份。最后,我们利用最后一层的潜在特征训练支持向量分类器,测试这些模型是否能有效地编码类似肥胖的运动表征。我们的实验结果表明,当利用身份训练的深度 LSTM 网络与自我中心视角相结合时,可以获得最佳性能。这种方法为利用深度学习发现小鼠肥胖模型中的健康风险提供了一种新方法,并可用于检测人类肥胖的早期迹象。
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来源期刊
Experimental Neurobiology
Experimental Neurobiology Neuroscience-Cellular and Molecular Neuroscience
CiteScore
4.30
自引率
4.20%
发文量
29
期刊介绍: Experimental Neurobiology is an international forum for interdisciplinary investigations of the nervous system. The journal aims to publish papers that present novel observations in all fields of neuroscience, encompassing cellular & molecular neuroscience, development/differentiation/plasticity, neurobiology of disease, systems/cognitive/behavioral neuroscience, drug development & industrial application, brain-machine interface, methodologies/tools, and clinical neuroscience. It should be of interest to a broad scientific audience working on the biochemical, molecular biological, cell biological, pharmacological, physiological, psychophysical, clinical, anatomical, cognitive, and biotechnological aspects of neuroscience. The journal publishes both original research articles and review articles. Experimental Neurobiology is an open access, peer-reviewed online journal. The journal is published jointly by The Korean Society for Brain and Neural Sciences & The Korean Society for Neurodegenerative Disease.
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