A Thermal Camera-based Activity Recognition Using Discriminant Skeleton Features and RNN

Md. Zia Uddin, W. Khaksar, J. Tørresen
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引用次数: 5

Abstract

Recognizing human activities from sensor data is one of the key areas of image processing, computer vision, and pattern recognition researches today. The target of human activity recognition (HAR) is usually to detect and analyze distinguished activities from the data acquired via different sensors (e.g. thermal cameras). This work proposes a HAR approach from videos recorded via a thermal camera. Skeletons of human bodies are extracted from thermal frames using an opensource deep convolutional neural network (CNN)-based approach named OpenPose. It is generally applied on videos of typical color cameras. However, this work adopts OpenPose on thermal images to extract useful features so that the HAR system can be deployed in environments with low lights as well. Once skeletons of human silhouettes are obtained from the thermal images, robust spatiotemporal features are extracted followed by discriminant analysis. Finally, the discriminant features are fed into a deep recurrent neural network (RNN) for activity training and recognition. The proposed HAR method can be applied to monitor the users such as elderly in both bright and dark environments to prolong their independent life, unlike other typical color cameras which are generally applied in bright environments.
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基于分辨骨架特征和RNN的热像仪活动识别
从传感器数据中识别人类活动是当今图像处理、计算机视觉和模式识别研究的关键领域之一。人类活动识别(HAR)的目标通常是从不同传感器(如热像仪)获取的数据中检测和分析已识别的活动。这项工作提出了一种通过热像仪记录视频的HAR方法。使用开源的基于深度卷积神经网络(CNN)的方法OpenPose从热帧中提取人体骨架。它一般应用于典型彩色摄像机的视频。然而,这项工作在热图像上采用OpenPose来提取有用的特征,以便HAR系统也可以部署在低光环境中。从热图像中获取人体轮廓骨架后,提取鲁棒时空特征,然后进行判别分析。最后,将识别特征输入到深度递归神经网络(RNN)中进行活动训练和识别。本文提出的HAR方法可以在明暗环境下对老年人等用户进行监控,延长其独立寿命,而不像其他典型的彩色摄像机一般只适用于明亮环境。
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