Tagging wearable accelerometers in camera frames through information translation between vision sensors and accelerometers

A. Akbari, Peiming Liu, B. Mortazavi, R. Jafari
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引用次数: 1

Abstract

This paper presents a methodology to detect an object with an accelerometer potentially among many other moving objects in a camera scene. By matching sensor readings from a wearable accelerometer with analogous readings from a single camera or plurality of cameras, we detect instances of the same physical movement that both modalities capture. This has a wide range of potential applications in the cyber-physical systems domain such as identification, localization, and detecting context for activity recognition. We present an approach to project data from camera frames into accelerometer frames, where they share the same physical representation, allowing for comparing and determining similarities between the two modalities by using computational algorithms in the cyber world. This is challenging as depth is unknown when using a single 2D camera. We translate camera measurements into the acceleration physical domain and acquire an estimated depth, when the depth is not varying significantly during the motion. We model this translation as an optimization problem to find the optimal depth that maximizes the similarity between readings of the camera and accelerometer. Additionally, we discuss a potential solution with multiple cameras that works for arbitrary varying depth motions. Experimental results demonstrate that the system can detect matching between data stemming from physical movements observed by a wearable accelerometer and a single camera or plurality of cameras.
通过视觉传感器和加速度计之间的信息转换,在相机帧中标记可穿戴加速度计
本文提出了一种用加速度计检测相机场景中潜在的运动物体的方法。通过将可穿戴式加速度计的传感器读数与单个摄像头或多个摄像头的类似读数相匹配,我们可以检测到两种模式捕获的相同物理运动实例。这在网络物理系统领域有广泛的潜在应用,如识别、定位和检测活动识别的上下文。我们提出了一种将数据从相机帧投影到加速度计帧的方法,其中它们共享相同的物理表示,允许通过使用网络世界中的计算算法来比较和确定两种模式之间的相似性。这是具有挑战性的,因为当使用单个2D相机时,深度是未知的。当深度在运动过程中没有显著变化时,我们将相机测量值转换为加速度物理域并获得估计深度。我们将这种转换建模为一个优化问题,以找到使相机和加速度计读数之间的相似性最大化的最佳深度。此外,我们还讨论了一种潜在的解决方案,即使用多个相机进行任意不同深度的运动。实验结果表明,该系统可以检测由可穿戴加速度计与单个或多个摄像机观察到的物理运动产生的数据之间的匹配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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