Team members: Chiao-Yi Wang and Faranguisse Kakhi Sadrieh
Falls are a major cause of injury among elderly adults. In addition, recent research indicates that elderly adults often fall because of the same individual biomechanical causes. Therefore, real-time individual fall risk assessment is crucial for designing a more effective and personalized fall reduction training program. However, existing methods for fall risk assessment either raise privacy concerns or require multiple wearable sensors. In this paper, we propose EgoFall, a real-time privacy-preserving fall risk assessment system using a commercial tracking camera. EgoFall utilizes a chest-mounted tracking camera and a carefully designed data pre-processing pipeline to acquire the ego-body motion data of the subject. The ego-body motion data is then fed to a lightweight CNNTransformer model for fall risk assessment. We demonstrate that EgoFall not only outperforms the baseline methods but also has very low computational complexity, which is highly suitable for real-time processing.