Wearable Knee Recovery Device
This project is aimed at early prediction of Parkinson’s disease through computerized analysis of online handwriting samples. While a number of clinical evaluations are carried out to diagnose the Parkinson’s disease, most of these tests are effective only once the disease is at a relatively advanced stage. Studies have shown that analysis of handwriting can be used as a valuable tool for prediction of Parkinson’s disease at very early stages. In the proposed research, we have employed raw signals captured by a digitizer tablet while attempting several writing and drawing templates, to compute various kinematic, temporal, and pen-based attributes. In addition to these online dynamic attributes, static offline visual features are also extracted using state-of-the-art Convolutional Neural Networks (CNNs). The developed tools allow practitioners to collect handwriting and drawing samples of subjects and employ a combination of different types of features (online and offline) for the analysis and prediction.

A wearable recovery device is designed that provides additional torque for the knee joints through processing the signals and the angle of the knee.
Using this system, it is expected that the number of visits to hospitals as well as the number of interventions and the associated cost of care can be reduced .
The design will reduce the stress in joints and provide easy movement while mounting stairs and walking.
Publications
- Moetesum, M., Diaz, M., Masroor, U., Siddiqi, I., & Vessio, G. (2022). A survey of visual and procedural handwriting analysis for neuropsychological assessment. Neural Computing and Applications, 1-18.
- Diaz, M., Moetesum, M., Siddiqi, I., & Vessio, G. (2021). Sequence-based dynamic handwriting analysis for Parkinson’s disease detection with one-dimensional convolutions and BiGRUs. Expert Systems with Applications, 168, 114405.
- Moetesum, M., Siddiqi, I., Javed, F., & Masroor, U. (2020, September). Dynamic Handwriting Analysis for Parkinson’s Disease Identification using C-BiGRU Model. In 2020 17th International Conference on Frontiers in Handwriting Recognition (ICFHR) (pp. 115-120). IEEE.
Project Demo

Project Demo

