从俯视图配置的RGB-D摄像机估计重量

M. Mameli, M. Paolanti, N. Conci, Filippo Tessaro, E. Frontoni, P. Zingaretti
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引用次数: 1

摘要

所谓的软生物识别技术的发展旨在提供与人的身体和行为特征有关的信息。本文主要研究基于俯视图RGB-D相机观测的体重估计。事实上,估计一个人的体重的能力可以在许多不同的应用程序中提供帮助,从与健康相关的场景到商业智能和零售分析。为了解决这一问题,提出了一个以预测权重为目标的TVWE (Top-View Weight Estimation)框架。该方法依赖于采用深度数据训练过的深度神经网络(dnn)。每个网络也在其顶部部分进行了修改,以预测推理取代分类。本文比较了VGG16、ResNet、Inception、DenseNet和Efficient-Net这五种最先进的深度神经网络的性能。此外,为了完整起见,还包括了一个卷积自编码器。考虑到该领域的文献有限,TVWE框架已经在一个新的公开可用的数据集上进行了评估:“VRAI体重估计数据集”,该数据集还收集了每个受试者与体重、性别和身高相关的标签。实验结果表明,所提出的方法适用于该任务,为解决方案在不同领域的应用带来了不同的和重要的见解。
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Weight Estimation from an RGB-D camera in top-view configuration
The development of so-called soft-biometrics aims at providing information related to the physical and behavioural characteristics of a person. This paper focuses on body weight estimation based on the observation from a top-view RGB-D camera. In fact, the capability to estimate the weight of a person can be of help in many different applications, from health-related scenarios, to business intelligence and retail analytics. To deal with this issue, a TVWE (Top-View Weight Estimation) framework is proposed with the aim of predicting the weight. The approach relies on the adoption of Deep Neural Networks (DNNs) that have been trained on depth data. Each network has also been modified in their top section to replace classification with prediction inference. The performance of five state-of-art DNNs have been compared, namely VGG16, ResNet, Inception, DenseNet and Efficient-Net. In addition, a convolutional auto-encoder has also been included for completeness. Considering the limited literature in this domain, the TVWE framework has been evaluated on a new publicly available dataset: “VRAI Weight estimation Dataset”, which also collects, for each subject, labels related to weight, gender, and height. The experimental results have demonstrated that the proposed methods are suitable for this task, bringing different and significant insights for the application of the solution in different domains.
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