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A skeleton-free body surface area estimation from depth images using deep neural networks

机译:使用深度神经网络从深度图像估计无骨架的人体表面积

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摘要

Body surface area is an important measure in many clinical trials. It is a critical parameter that is used in estimating radiation and substance doses for human trials. Traditionally, these trials relied on skin-fold tests which are very invasive and uncomfortable to the subjects. In this paper we present a skeleton-free Kinect system to estimate body surface area of human bodies. The proposed system employs the state-of-the-art deep convolutional network to extract meaningful features and estimate the body surface area with a 12 mm2 precision.
机译:体表面积是许多临床试验中的重要指标。这是一个关键参数,用于估算人体试验的辐射和物质剂量。传统上,这些试验依赖于皮肤褶皱测试,该皮肤褶皱测试具有侵入性且对受试者不舒服。在本文中,我们提出了一种无骨架的Kinect系统来估计人体的体表面积。该系统利用最新的深度卷积网络提取有意义的特征,并以12 mm 2 的精度估算人体表面积。

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