Beyond Vision: How Large Language Models Interpret Facial Expressions from Valence-Arousal Values
Journal:
arXiv
Published Date:
Feb 8, 2025
Abstract
Large Language Models primarily operate through text-based inputs and
outputs, yet human emotion is communicated through both verbal and non-verbal
cues, including facial expressions. While Vision-Language Models analyze facial
expressions from images, they are resource-intensive and may depend more on
linguistic priors than visual understanding. To address this, this study
investigates whether LLMs can infer affective meaning from dimensions of facial
expressions-Valence and Arousal values, structured numerical representations,
rather than using raw visual input. VA values were extracted using Facechannel
from images of facial expressions and provided to LLMs in two tasks: (1)
categorizing facial expressions into basic (on the IIMI dataset) and complex
emotions (on the Emotic dataset) and (2) generating semantic descriptions of
facial expressions (on the Emotic dataset). Results from the categorization
task indicate that LLMs struggle to classify VA values into discrete emotion
categories, particularly for emotions beyond basic polarities (e.g., happiness,
sadness). However, in the semantic description task, LLMs produced textual
descriptions that align closely with human-generated interpretations,
demonstrating a stronger capacity for free text affective inference of facial
expressions.