CVDec 10, 2025

Dynamic Facial Expressions Analysis Based Parkinson's Disease Auxiliary Diagnosis

arXiv:2512.09276v1h-index: 4CCC
Originality Incremental advance
AI Analysis

This provides a more convenient diagnostic tool for Parkinson's disease patients, though it is incremental.

The paper tackled Parkinson's disease diagnosis by analyzing dynamic facial expressions to detect hypomimia, achieving an accuracy of 93.1%.

Parkinson's disease (PD), a prevalent neurodegenerative disorder, significantly affects patients' daily functioning and social interactions. To facilitate a more efficient and accessible diagnostic approach for PD, we propose a dynamic facial expression analysis-based PD auxiliary diagnosis method. This method targets hypomimia, a characteristic clinical symptom of PD, by analyzing two manifestations: reduced facial expressivity and facial rigidity, thereby facilitating the diagnosis process. We develop a multimodal facial expression analysis network to extract expression intensity features during patients' performance of various facial expressions. This network leverages the CLIP architecture to integrate visual and textual features while preserving the temporal dynamics of facial expressions. Subsequently, the expression intensity features are processed and input into an LSTM-based classification network for PD diagnosis. Our method achieves an accuracy of 93.1%, outperforming other in-vitro PD diagnostic approaches. This technique offers a more convenient detection method for potential PD patients, improving their diagnostic experience.

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