Despite its paramount importance for manifold use cases (e.g., in the health care industry, sports, rehabilitation and fitness assessment), sufficiently valid and reliable gait parameter measurement is still limited to high-tech gait laboratories mostly. Here, we demonstrate the excellent validity and test-retest repeatability of a novel gait assessment system which is built upon modern convolutional neural networks to extract three-dimensional skeleton joints from monocular frontal-view videos of walking humans. The validity study is based on a comparison to the GAITRite pressure-sensitive walkway system. All measured gait parameters (gait speed, cadence, step length and step time) showed excellent concurrent validity for multiple walk trials at normal and fast gait speeds. The test-retest-repeatability is on the same level as the GAITRite system. In conclusion, we are convinced that our results can pave the way for cost, space and operationally effective gait analysis in broad mainstream applications. Most sensor-based systems are costly, must be operated by extensively trained personnel (e.g., motion capture systems) or - even if not quite as costly - still possess considerable complexity (e.g., wearable sensors). In contrast, a video sufficient for the assessment method presented here can be obtained by anyone, without much training, via a smartphone camera.
翻译:尽管对多种使用案例(例如保健行业、体育、康复和健身评估)至关重要,但充分有效和可靠的步数参数测量仍然主要限于高科技步数实验室。在这里,我们展示出一个新型步数评估系统的极佳有效性和测试-再测试可重复性,该系统建立在现代革命神经网络上,从单视前视视频中提取行走人类的三维骨骼连接。有效性研究基于与GAITRite对压力敏感的行走系统的比较。所有测量的步数参数(高速度、快率、步数、步数和步数时间)都显示了以正常和快步速进行多次步行试验的极好同时有效性。测试-测试-重现性与GAITRite系统处于同一水平。最后,我们相信,我们的结果可以为在广泛的主流应用中进行成本、空间和业务上有效的坐视分析铺平道路。大多数基于传感器的系统都必须由经过广泛培训的人员(如运动捕捉系统)操作,或者----即使不是相当高的智能传感器,也可以通过任何高廉的摄像器进行相当复杂。