PERI: Part Aware Emotion Recognition In The Wild
Akshita Mittel, Shashank Tripathi

TL;DR
PERI is a novel emotion recognition method that combines body pose and facial landmarks using part aware spatial images and context infusion blocks, improving accuracy especially in unconstrained, real-world scenarios.
Contribution
The paper introduces PERI, a simple yet effective approach that leverages both facial and body cues with novel spatial and context modules for improved emotion recognition.
Findings
PERI outperforms existing methods on the EMOTIC dataset.
It improves accuracy in images with occluded or blurred faces.
It reduces errors in Valence, Arousal, and Dominance predictions.
Abstract
Emotion recognition aims to interpret the emotional states of a person based on various inputs including audio, visual, and textual cues. This paper focuses on emotion recognition using visual features. To leverage the correlation between facial expression and the emotional state of a person, pioneering methods rely primarily on facial features. However, facial features are often unreliable in natural unconstrained scenarios, such as in crowded scenes, as the face lacks pixel resolution and contains artifacts due to occlusion and blur. To address this, in the wild emotion recognition exploits full-body person crops as well as the surrounding scene context. In a bid to use body pose for emotion recognition, such methods fail to realize the potential that facial expressions, when available, offer. Thus, the aim of this paper is two-fold. First, we demonstrate our method, PERI, to leverage…
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Taxonomy
TopicsEmotion and Mood Recognition · Face recognition and analysis · Face and Expression Recognition
MethodsAttentive Walk-Aggregating Graph Neural Network
