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Real-Time Visual Rotational Velocity Estimation Using a Biologically-Inspired Algorithm on Embedded Hardware

机译:嵌入式硬件上基于生物启发算法的实时视觉旋转速度估计

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Vision is a potent source of information, not just for humans, but for robots as well. Processing visual information is a computationally expensive task, one that is often difficult to accomplish in real-time on embedded hardware. In the broad field of visual research exists egomotion estimation, the process of determining self-motion from optical flow. Here we show a technological adaptation and implementation of a complex, biologically-inspired egomotion estimator that has previously only been simulated. Through efficient biologically-inspired signal conditioning and motion estimation techniques, rotational velocity estimations have been achieved at 100 frames per second on embedded hardware within an operating range of 2.7°/s to 72.1°/s with comparable accuracy to traditional sensors. These findings open the possibilities for egomotion estimation on embedded platforms which could be used to complement existing rotational velocity estimators under complex environmental conditions.
机译:视觉不仅是人类的信息来源,也是机器人的强大信息来源。处理视觉信息是一项计算量巨大的任务,通常很难在嵌入式硬件上实时完成。在视觉研究的广泛领域中存在着自我运动估计,即从光流中确定自我运动的过程。在这里,我们展示了一个复杂的,受生物启发的自我估计量的技术适应性和实现方法,该估计量以前仅是模拟的。通过有效的生物启发信号调节和运动估算技术,在2.7°/ s至72.1°/ s的工作范围内,嵌入式硬件上以每秒100帧的速度实现了转速估算,其精度可与传统传感器相提并论。这些发现为在嵌入式平台上进行自我估计提供了可能性,该平台可用于补充复杂环境条件下现有的旋转速度估计器。

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