Context Matters: Vision-Based Depression Detection Comparing Classical and Deep Approaches
Maneesh Bilalpur, Saurabh Hinduja, Sonish Sivarajkumar, Nicholas Allen, Yanshan Wang, Itir Onal Ertugrul, and Jeffrey F. Cohn

TL;DR
This study compares classical handcrafted feature-based SVM methods and deep learning models for vision-based depression detection across different social contexts, revealing classical methods often perform better in accuracy and fairness.
Contribution
It provides a comparative analysis of classical versus deep approaches in depression detection, highlighting the importance of context and interpretability.
Findings
Classical approach achieved higher accuracy in both contexts.
Classical approach was significantly fairer than deep approach in the patient-clinician context.
Cross-context generalizability was modest for both approaches.
Abstract
The classical approach to detecting depression from vision emphasizes interpretable features, such as facial expression, and classifiers such as the Support Vector Machine (SVM). With the advent of deep learning, there has been a shift in feature representations and classification approaches. Contemporary approaches use learnt features from general-purpose vision models such as VGGNet to train machine learning models. Little is known about how classical and deep approaches compare in depression detection with respect to accuracy, fairness, and generalizability, especially across contexts. To address these questions, we compared classical and deep approaches to the detection of depression in the visual modality in two different contexts: Mother-child interactions in the TPOT database and patient-clinician interviews in the Pitt database. In the former, depression was operationalized as a…
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