用于人体成分分析的二维图像特征提取

Ligaj Pradhan, Song Gao, Chengcui Zhang, B. Gower, S. Heymsfield, D. Allison, O. Affuso
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引用次数: 12

摘要

在临床研究中,人体体积和体型已被用来估计人体成分。然而,人体体积的测定通常需要复杂而昂贵的设备。同样地,用体型来预测身体成分也受到偏见和可重复性的限制。在本文中,我们旨在介绍简单而相对准确的身体体积和身体形状表示技术,以减少传统方法的局限性。我们提出了一种自动构建人体三维模型的方法,该方法是利用从背部和侧面轮廓图像中采样的长度和宽度特征形成的椭圆状切片进行累积。通过将切片的面积相加,以像素表示体体积。除了以像素表示身体体积外,我们还旨在从2D图像中提取形状特征,并根据他们的体型创建个体簇。身体体积表示和体形特征与年龄、性别、种族、身高、体重等元信息可以有效地用于身体成分预测。研究结果表明,该方法计算的人体体积具有一定的准确性,提取的形状聚类为估计人体成分提供了重要信息。
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Feature Extraction from 2D Images for Body Composition Analysis
Body volume and body shape have been used in the estimation of body composition in clinical research. However, the determination of body volume typically requires sophisticated and expensive equipment. Similarly, the use of body shape to predict body composition is limited by rater biases as well as reproducibility. In this paper, we aim to introduce simple yet relatively accurate techniques for body volume and body shape representation that reduce limitations of traditional approaches. We propose an automated method to construct a 3D model of the body by accumulating ellipse-like slices formed by using the length and width features sampled from the back and side profile images. Body volume is represented in pixels by adding up the areas of the slices. Apart from representing body volume in pixels, we also aim to extract shape features from the 2D images and to create clusters of individuals according to their body shape. The body volume representation and the proposed shape features together with other meta-information including age, sex, race, height, and weight, could be effectively used in body composition prediction. Our study results indicate that the body volume calculated by the proposed method is reasonably accurate and the extracted shape clusters provide important information when estimating body composition.
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