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Activity recognition in manufacturing: The roles of motion capture and sEMG+inertial wearables in detecting fine vs. gross motion

机译:制造业的活动识别:运动捕获和SEMG +惯性可穿戴物的作用检测FINE与总动作

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In safety-critical environments, robots need to reliably recognize human activity to be effective and trust-worthy partners. Since most human activity recognition (HAR) approaches rely on unimodal sensor data (e.g. motion capture or wearable sensors), it is unclear how the relationship between the sensor modality and motion granularity (e.g. gross or fine) of the activities impacts classification accuracy. To our knowledge, we are the first to investigate the efficacy of using motion capture as compared to wearable sensor data for recognizing human motion in manufacturing settings. We introduce the UCSD-MIT Human Motion dataset, composed of two assembly tasks that entail either gross or fine-grained motion. For both tasks, we compared the accuracy of a Vicon motion capture system to a Myo armband using three widely used HAR algorithms. We found that motion capture yielded higher accuracy than the wearable sensor for gross motion recognition (up to 36.95%), while the wearable sensor yielded higher accuracy for fine-grained motion (up to 28.06%). These results suggest that these sensor modalities are complementary, and that robots may benefit from systems that utilize multiple modalities to simultaneously, but independently, detect gross and fine-grained motion. Our findings will help guide researchers in numerous fields of robotics including learning from demonstration and grasping to effectively choose sensor modalities that are most suitable for their applications.
机译:在安全关键环境中,机器人需要可靠地识别人类活动,以获得有效和信任的合作伙伴。由于大多数人类活动识别(HAR)依赖于单峰传感器数据(例如运动捕获或可穿戴传感器),因此目前尚不清楚传感器模式和运动粒度之间的关系(例如,活动的运动粒度(例如,粗略或精度)影响分类准确性。据我们所知,与可穿戴传感器数据相比,我们是第一个调查使用运动捕获的功效,用于识别制造设置中的人类运动。我们介绍了UCSD-MIT人员运动数据集,由两个装配任务组成,其需要粗糙或细粒度的运动。对于两个任务,我们将Vicon Motion Capture System的准确性与使用三种广泛使用的HAR算法进行了与Myo Armband的精度。我们发现,运动捕获比可穿戴传感器更高的精度,用于总动画识别(高达36.95%),而可穿戴传感器的精度高度粒度运动(高达28.06%)产生更高的精度。这些结果表明,这些传感器模式是互补的,并且机器人可以受益于利用多种方式同时但独立地检测粗糙和细粒度运动的系统。我们的调查结果将帮助指导众多机器人领域的研究人员,包括从演示和抓握以有效选择最适合其应用的传感器模式。

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