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Visually Interpretable Representation Learning for Depression Recognition from Facial Images

机译:视觉上可解释的代表学习面部图像的抑郁识别

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Recent evidence in mental health assessment have demonstrated that facial appearance could be highly indicative of depressive disorder. While previous methods based on the facial analysis promise to advance clinical diagnosis of depressive disorder in a more efficient and objective manner, challenges in visual representation of complex depression pattern prevent widespread practice of automated depression diagnosis. In this paper, we present a deep regression network termed DepressNet to learn a depression representation with visual explanation. Specifically, a deep convolutional neural network equipped with a global average pooling layer is first trained with facial depression data, which allows for identifying salient regions of input image in terms of its severity score based on the generated depression activation map (DAM). We then propose a multi-region DepressNet, with which multiple local deep regression models for different face regions are jointly leaned and their responses are fused to improve the overall recognition performance. We evaluate our method on two benchmark datasets, and the results show that our method significantly boosts state-of-the-art performance of the visual-based depression recognition. Most importantly, the DAM induced by our learned deep model may help reveal the visual depression pattern on faces and understand the insights of automated depression diagnosis.
机译:最近的心理健康评估证据表明,面部外观可能是抑郁症的高度指标。虽然以前的方法基于面部分析承诺以更有效和客观的方式推进抑郁症的临床诊断,复杂抑郁模式的视觉表现挑战防止自动抑郁症的普遍实践。在本文中,我们介绍了一个被称为DepressNet的深度回归网络,以学习具有视觉解释的抑郁症表示。具体地,首先用面部凹陷数据训练配备有全局平均池层的深卷积神经网络,其允许基于所产生的凹陷激活图(DAM)识别其严重性评分的输入图像的突出区域。然后,我们提出了一个多区域的DepressNet,其中包括不同面部区域的多个局部深回归模型是共同倾斜的,并且它们的响应被融合以提高整体识别性能。我们在两个基准数据集中评估我们的方法,结果表明,我们的方法显着提高了基于视觉抑郁识别的最先进的性能。最重要的是,我们学识渊博模型引起的大坝可能有助于揭示面孔上的视觉抑郁模式,了解自动抑郁症诊断的见解。

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