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Saliency Supervision: An Intuitive and Effective Approach for Pain Intensity Regression

机译:显着性监督:一种直观有效的疼痛强度回归方法

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Getting pain intensity from face images is an important problem in autonomous nursing systems. However, due to the limitation in data sources and the subjectiveness in pain intensity values, it is hard to adopt modern deep neural networks for this problem without domain-specific auxiliary design. Inspired by human vision priori, we propose a novel approach called saliency supervision, where we directly regularize deep networks to focus on facial area that is discriminative for pain regression. Through alternative training between saliency supervision and global loss, our method can learn sparse and robust features, which is proved helpful for pain intensity regression. We verified saliency supervision with face-verification network backbone [15] on the widely-used UNBC-McMaster Shoulder-Pain [10] dataset, and achieved state-of-art performance without bells and whistles. Our saliency supervision is intuitive in spirit, yet effective in performance. We believe such saliency supervision is essential in dealing with ill-posed datasets, and has potential in a wide range of vision tasks.
机译:从面部图像获取疼痛强度是自主护理系统中的重要问题。但是,由于数据源的限制以及疼痛强度值的主观性,如果没有特定领域的辅助设计,很难采用现代的深度神经网络来解决该问题。受人类视力先验的启发,我们提出了一种称为显着性监督的新方法,在该方法中,我们直接规范化深度网络以专注于区分疼痛消退的面部区域。通过在显着性监督和全局损失之间进行替代训练,我们的方法可以学习稀疏和健壮的特征,这被证明有助于疼痛强度的回归。我们在广泛使用的UNBC-McMaster Shoulder-Pain [10]数据集上使用面部验证网络骨干[15]验证了显着性监管,并实现了无懈可击的最新性能。我们的显着性监督在精神上是直觉的,但在绩效上却是有效的。我们认为,这种显着性监视对于处理不适定的数据集至关重要,并且在广泛的视觉任务中具有潜力。

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