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Action Recognition from a Single Coded Image

机译:从单个编码图像中识别动作

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Cameras are prevalent in society at the present time, for example, surveillance cameras, and smartphones equipped with cameras and smart speakers. There is an increasing demand to analyze human actions from these cameras to detect unusual behavior or within a man-machine interface for Internet of Things (IoT) devices. For a camera, there is a trade-off between spatial resolution and frame rate. A feasible approach to overcome this trade-off is compressive video sensing. Compressive video sensing uses random coded exposure and reconstructs higher than read out of sensor frame rate video from a single coded image. It is possible to recognize an action in a scene from a single coded image because the image contains multiple temporal information for reconstructing a video. In this paper, we propose reconstruction-free action recognition from a single coded exposure image. We also proposed deep sensing framework which models camera sensing and classification models into convolutional neural network (CNN) and jointly optimize the coded exposure and classification model simultaneously. We demonstrated that the proposed method can recognize human actions from only a single coded image. We also compared it with competitive inputs, such as low-resolution video with a high frame rate and high-resolution video with a single frame in simulation and real experiments.
机译:相机在当今社会很普遍,例如监视相机以及配备有相机和智能扬声器的智能手机。越来越需要分析这些摄像机的人为行为以检测异常行为或在物联网(IoT)设备的人机界面中。对于相机,在空间分辨率和帧频之间需要权衡。克服这种折衷的可行方法是压缩视频感测。压缩视频感测使用随机编码曝光,并且重构得比从单个编码图像中读出的传感器帧频视频要高。可以从单个编码图像中识别场景中的动作,因为该图像包含用于重建视频的多个时间信息。在本文中,我们建议从单个编码的曝光图像中进行无重构动作识别。我们还提出了深度感测框架,该深度感测框架将相机感测和分类模型建模为卷积神经网络(CNN),并同时共同优化编码的曝光和分类模型。我们证明了所提出的方法只能从单个编码图像中识别人类行为。我们还将其与竞争性输入进行了比较,例如在模拟和实际实验中,高帧率的低分辨率视频和单帧的高分辨率视频。

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