通过优势加权排序揭示二分类抑郁检测中的潜在抑郁严重程度 / Uncovering Latent Depression Severity for Binary Depression Detection via Advantage-weighting Ranking
1️⃣ 一句话总结
本文提出了一种基于音频和视频的多模态抑郁检测方法,通过创新的优势加权排序损失函数,自动区分难易样本并让特征更紧凑地聚类,从而在不直接预测严重程度的情况下,显著提升了二分类抑郁检测的准确率。
Automatic depression detection using audio-visual data faces significant challenges, particularly in disentangling overlapping feature distributions and establishing robust decision boundaries. To address this, we propose a fine-grained multimodal framework featuring a temporal encoder and a mutual transformer to facilitate deep cross-modal fusion. Our core contribution is the Binary Advantage-weighting Ranking Loss, which optimizes the latent space distribution through two complementary mechanisms: Advantage-weighted Separation, which mines hard pairs by computing a pairwise prediction difference matrix and dynamically weighting them based on their difficulty; and Advantage-weighted Compactness, which minimizes intra-class variance to force features to cluster around their respective class centers. Extensive experiments on D-vlog and LMVD demonstrate that our model reconstructs the latent ordinal structure by prioritizing hard pairs, thereby achieving state-of-the-art performance.
通过优势加权排序揭示二分类抑郁检测中的潜在抑郁严重程度 / Uncovering Latent Depression Severity for Binary Depression Detection via Advantage-weighting Ranking
本文提出了一种基于音频和视频的多模态抑郁检测方法,通过创新的优势加权排序损失函数,自动区分难易样本并让特征更紧凑地聚类,从而在不直接预测严重程度的情况下,显著提升了二分类抑郁检测的准确率。
源自 arXiv: 2607.05901