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A Neural Network Approach to Human Posture Classification and FaU Detection Using RGB-D Camera

机译:利用RGB-D相机对人体姿势分类和FAU检测的神经网络方法

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摘要

In this paper, we describe a human posture classification and a falling detector module suitable for smart homes and assisted living solutions. The system uses a neural network that processes the human joints produced by a skeleton tracker using the depth streams of an RGB-D sensor. The neural network is able to recognize standing, sitting and lying postures. Using only the depth maps from the sensor, the system can work in poor light conditions and guarantees the privacy of the person. The neural network is trained with a dataset produced with the Kinect tracker, but it is also tested with a different human tracker (NiTE). In particular, the aim of this work is to analyse the behaviour of the neural network even when the position of the extracted joints is not reliable and the provided skeleton is confused. Real-time tests have been carried out covering the whole operative range of the sensor (up to 3.5 m). Experimental results have shown an overall accuracy of 98.3% using the NiTE tracker for the falling tests, with the worst accuracy of 97.5%.
机译:在本文中,我们描述了一种人类姿势分类和适用于智能家居和辅助生活解决方案的下降探测器模块。该系统使用使用RGB-D传感器的深度流处理由骨架跟踪器产生的人的关节。神经网络能够识别站立,坐着和撒谎的姿势。仅使用来自传感器的深度映射,系统可以在较差的光线条件下工作并保证人的隐私。 Neural网络使用与Kinect跟踪器产生的数据集接受培训,但它也与不同的人类跟踪器(NITE)进行测试。特别地,这种作品的目的是分析神经网络的行为,即使当提取的关节的位置不可靠,并且所提供的骨架被混淆。已经进行了实时测试,覆盖了传感器的整个操作范围(高达3.5米)。实验结果显示了使用液体跟踪器的总精度为98.3%,用于下降测试,最差准确性为97.5%。

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