TAAC: A gate into Trustable Audio Affective Computing
Xintao Hu, Feng-Qi Cui

TL;DR
This paper introduces TAAC, a novel framework for trustable audio affective computing that enables accurate depression detection while preserving user identity privacy through encryption and feature decomposition.
Contribution
The paper presents the first practical framework combining adversarial loss-based subspace decomposition with encryption for confidential and accurate audio-based depression diagnosis.
Findings
Demonstrates superior depression detection accuracy with encrypted audio data.
Effectively preserves user identity information during diagnosis.
Shows stability of the framework under various encryption strengths.
Abstract
With the emergence of AI techniques for depression diagnosis, the conflict between high demand and limited supply for depression screening has been significantly alleviated. Among various modal data, audio-based depression diagnosis has received increasing attention from both academia and industry since audio is the most common carrier of emotion transmission. Unfortunately, audio data also contains User-sensitive Identity Information (ID), which is extremely vulnerable and may be maliciously used during the smart diagnosis process. Among previous methods, the clarification between depression features and sensitive features has always serve as a barrier. It is also critical to the problem for introducing a safe encryption methodology that only encrypts the sensitive features and a powerful classifier that can correctly diagnose the depression. To track these challenges, by leveraging…
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Taxonomy
TopicsEmotion and Mood Recognition · Adversarial Robustness in Machine Learning · Music and Audio Processing
