Explainable Gait Abnormality Detection Using Dual-Dataset CNN-LSTM Models
Parth Agarwal, Sangaa Chatterjee, Md Faisal Kabir, Suman Saha
Published: 2025/9/19
Abstract
Gait is a key indicator in diagnosing movement disorders, but most models lack interpretability and rely on single datasets. We propose a dual-branch CNN-LSTM framework a 1D branch on joint-based features from GAVD and a 3D branch on silhouettes from OU-MVLP. Interpretability is provided by SHAP (temporal attributions) and Grad-CAM (spatial localization).On held-out sets, the system achieves 98.6% accuracy with strong recall and F1. This approach advances explainable gait analysis across both clinical and biometric domains.