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Dynamic Vision Sensors for Human Activity Recognition

机译:用于人类活动识别的动态视觉传感器

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Unlike conventional cameras which capture video at a fixed frame rate, Dynamic Vision Sensors (DVS) record only changes in pixel intensity values. The output of DVS is simply a stream of discrete ON/OFF events based on the polarity of change in its pixel values. DVS has many attractive features such as low power consumption, high temporal resolution, high dynamic range and less storage requirements. All these make DVS a very promising camera for potential applications in wearable platforms where power consumption is a major concern. In this paper we explore the feasibility of using DVS for Human Activity Recognition (HAR). We propose to use the various slices (such as x - y, x - t and y - t) of the DVS video as a feature map for HAR and denote them as Motion Maps. We show that fusing motion maps with Motion Boundary Histogram (MBH) gives good performance on the benchmark DVS dataset as well as on a real DVS gesture dataset collected by us. Interestingly, the performance of DVS is comparable to that of conventional videos although DVS captures only sparse motion information.
机译:与以固定帧速率捕获视频的传统摄像机不同,动态视觉传感器(DVS)仅记录像素强度值的变化。 DVS的输出只是基于其像素值变化的极性的离散ON / OFF事件流。 DVS具有许多吸引人的功能,例如低功耗,高时间分辨率,高动态范围和较少的存储需求。所有这些使DVS成为可穿戴平台中潜在应用的非常有前途的相机,在这些平台中,功耗是一个主要问题。在本文中,我们探讨了使用DVS进行人类活动识别(HAR)的可行性。我们建议将DVS视频的各个片段(例如x-y,x-t和y-t)用作HAR的特征图,并将其表示为Motion Maps。我们展示了将运动图与运动边界直方图(MBH)融合在基准DVS数据集以及我们收集的真实DVS手势数据集上均具有良好的性能。有趣的是,尽管DVS仅捕获稀疏的运动信息,但DVS的性能可与常规视频媲美。

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