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Smart Annotation Tool for Multi-sensor Gait-based Daily Activity Data

机译:基于多传感器步态的日常活动数据的智能注释工具

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The monitoring of patients within a natural, home environment is important in order to close knowledge gaps in the treatment and care of neurodegenerative diseases, such as quantifying the daily fluctuation of Parkinson’s patients’ symptoms. The combination of machine learning algorithms and wearable sensors for gait analysis is becoming capable of achieving this. However, these algorithms require large, labelled, realistic datasets for training. Most systems used as a ground truth for labelling are restricted to the laboratory environment, as well as being large and expensive. We propose a study design for a realistic activity monitoring dataset, collected with inertial measurement units, pressure insoles and cameras. It is not restricted by a fixed location or capture volume and still enables the labelling of gait phases or, where non-gait movement such as jumping occur: on-the-ground, off-the-ground phases. Additionally, this paper proposes a smart annotation tool which reduces annotation cost by more than 80%. This smart annotation is based on edge detection within the pressure sensor signal. The tool also enables annotators to perform assisted correction of these labels in a post-processing step. This system enables the collection and labelling of large, fairly realistic datasets where 93% of the automatically generated labels are correct and only an additional 10% need to be inserted manually. Our tool and protocol, as a whole, will be useful for efficiently collecting the large datasets needed for training and validation of algorithms capable of cyclic human motion analysis in natural environments.
机译:为了弥合神经退行性疾病的治疗和护理方面的知识空白,例如量化帕金森病患者每日症状的波动,在自然,居家环境中对患者进行监视非常重要。机器学习算法和可穿戴传感器进行步态分析的组合正变得能够实现这一目标。但是,这些算法需要大量的,标记的,现实的数据集进行训练。用作标记的基本事实的大多数系统都局限于实验室环境,而且又大又昂贵。我们提出了一个针对现实活动监测数据集的研究设计,该数据集由惯性测量单元,压力鞋垫和照相机收集。它不受固定位置或捕获量的限制,仍然可以标记步态阶段,或者在发生非步态移动(例如跳跃)的地方:地面,离地阶段。此外,本文提出了一种智能注释工具,可将注释成本降低80%以上。该智能注释基于压力传感器信号内的边缘检测。该工具还使注释者可以在后处理步骤中对这些标签进行辅助校正。该系统可以收集和标记大型,真实的数据集,其中93%的自动生成的标签是正确的,而仅需手动插入另外的10%。总体而言,我们的工具和协议将对有效收集训练和验证能够在自然环境中进行循环人体运动分析的算法所需的大型数据集很有用。

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