GAITGen: Disentangled Motion-Pathology Impaired Gait Generative Model -- Bringing Motion Generation to the Clinical Domain
PositiveArtificial Intelligence
The introduction of GAITGen marks a significant advancement in the field of gait analysis, particularly for conditions such as Parkinson's Disease. Traditional methods have struggled due to limited clinical datasets and challenges in data collection, which hinder model accuracy. GAITGen overcomes these obstacles by generating realistic gait sequences that are conditioned on specified levels of pathology severity. Utilizing advanced technologies like Conditional Residual Vector Quantized Variational Autoencoders and Mask and Residual Transformers, GAITGen not only enriches existing datasets but also enhances the training of models for parkinsonian gait analysis. Experiments conducted on the new PD-GaM dataset demonstrate that GAITGen significantly outperforms existing models in terms of both reconstruction fidelity and generation quality. Furthermore, a clinical user study confirms the realism and relevance of the generated sequences, indicating that incorporating GAITGen-generated data…
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