HCNov 11, 2015

Automatic Measurement of Physical Mobility in Get-Up-and-Go Test Using Kinect Sensor

arXiv:1511.03603v123 citations
Originality Synthesis-oriented
AI Analysis

This work addresses fall risk assessment for the elderly, but it is incremental as it applies existing machine learning methods to a new sensor-based dataset.

The paper tackled the problem of automatically assessing physical mobility in the elderly by analyzing gait in the Get-Up-and-Go Test using a Kinect sensor, achieving classification of fall risk severity in 12 subjects.

Get-Up-and-Go Test is commonly used for assessing the physical mobility of the elderly by physicians. This paper presents a method for automatic analysis and classification of human gait in the Get-Up-and-Go Test using a Microsoft Kinect sensor. Two types of features are automatically extracted from the human skeleton data provided by the Kinect sensor. The first type of feature is related to the human gait (e.g., number of steps, step duration, and turning duration); whereas the other one describes the anatomical configuration (e.g., knee angles, leg angle, and distance between elbows). These features characterize the degree of human physical mobility. State-of-the-art machine learning algorithms (i.e. Bag of Words and Support Vector Machines) are used to classify the severity of gaits in 12 subjects with ages ranging between 65 and 90 enrolled in a pilot study. Our experimental results show that these features can discriminate between patients who have a high risk for falling and patients with a lower fall risk.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes