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Deep learning approach for human action recognition in infrared images

机译:用于红外图像中人类动作识别的深度学习方法

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Human action recognition based Ambient assisted living (AAL) systems, targeted towards providing assistance for the elderly and persons with disabilities, have been of interest to researchers from various disciplines. The research primarily focuses on development of automatic, minimally intrusive and privacy preserving systems. Although popular in the strategic sector, thermal infrared (IR) cameras haven't been explored much in AAL. This work demonstrates the use of IR cameras in the field of AAL and discusses its performance in human action recognition (HAR). Particular attention is drawn towards one of the most critical actions - falling. In this reference, a dataset of IR images was generated comprising of 6 action classes - walking, standing, sitting on a chair, sitting on a chair with a desk in front, fallen on the desk in front and fallen/lying on the ground. The dataset comprises of 5278 image samples which have been randomly sampled from thermal videos, each of about 30 s, representing the six action classes. To achieve robust action recognition, we have designed the supervised Convolution Neural Network (CNN) architecture with two convolution layers to classify the 6 action classes. Classification accuracy of 87.44% has been achieved on the manually selected complex test data. (C) 2018 Elsevier B.V. All rights reserved.
机译:旨在为老年人和残疾人提供援助的基于人类动作识别的环境辅助生活(AAL)系统已引起各学科研究人员的关注。该研究主要集中在自动,最少侵入性和隐私保护系统的开发上。尽管热红外(IR)摄像机在战略领域颇受欢迎,但在AAL中却没有得到太多研究。这项工作演示了红外照相机在AAL领域中的使用,并讨论了其在人类动作识别(HAR)中的性能。特别注意的是最关键的动作之一-跌倒。在此参考文献中,生成了包含6个动作类别的IR图像数据集-步行,站立,坐在椅子上,坐在椅子上,前面在桌子上,掉在前面的桌子上以及跌倒/躺在地上。该数据集包含5278个图像样本,这些图像样本是从热学视频中随机采样的,每个样本约30 s,代表六个动作类别。为了实现鲁棒的动作识别,我们设计了带有两个卷积层的有监督卷积神经网络(CNN)架构,以对6个动作类别进行分类。手动选择的复杂测试数据已达到87.44%的分类精度。 (C)2018 Elsevier B.V.保留所有权利。

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