Pandit, P.Thummar, D.Verma, K.Gangadharan, K.V.Das, B.Kamat, Y.2026-02-062023Lecture Notes in Electrical Engineering, 2023, Vol.1066 LNEE, , p. 543-55518761100https://doi.org/10.1007/978-981-99-4634-1_42https://idr.nitk.ac.in/handle/123456789/29401Human gait can be quantified using motion capture systems. Three-dimensional (3D) gait analysis is considered the gold standard for gait assessment. However, the process of three-dimensional analysis is cumbersome and time-consuming. It also requires complex software and a sophisticated environment. Hence, it is limited to a smaller section of the population. We, therefore, aim to develop a system that can predict abnormal walking patterns by analyzing trunk lean and knee angle information. A vision-based OpenPose algorithm was used to calculate individual trunk lean and knee angles. Web applications have been integrated with this algorithm so that any device can use it. A Miqus camera system of Qualisys 3D gait analysis system was used to validate the OpenPose algorithm. The validation method yielded an error of ± 9° in knee angle and ± 8° in trunk lean. The natural walking pattern of 100 healthy individuals was compared to simulated walking patterns in an unconstrained setting in order to develop a machine learning program. From the collected data, an RNN-based LSTM machine learning model was trained to distinguish between normal and abnormal walkings. LSTM-based models were able to distinguish between normal and abnormal gaits with an accuracy of 80%. This study shows that knee angle and trunk lean patterns collected during walking can be significant indicators of abnormal gait. © 2023, The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.Abnormal GAITGAITKnee angleLong short-term memoryMachine learningRecurrent neural networkTrunk leanImportance of Knee Angle and Trunk Lean in the Detection of an Abnormal Walking Pattern Using Machine Learning