Learning to focus on region-of-interests for pain intensity estimation

Manh-Tu Vu, M. Beurton-Aimar
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Abstract

The breakthrough success of many deep learning approaches is mainly due to the availability of large-scale labeled datasets. However, large-scale labeled datasets are not always available in some domains. Pain intensity estimation is unsurprisingly one those domains that suffer from lacking of labeled training data. In this work, we proposed a learning approach that is able to learn to focus on region-of-interests in face image for better feature extraction, thus improving overall performance of the network when training on a limited amount of data. Our extensive experiments demonstrate that our learning to focus on region-of-interests approach performs better in overall compared to state-of-the-art approaches in pain intensity estimation. From the experimental results, we emphasise the importance of learning to focus on region-of-interests for better extracting feature representations and reducing the effect of overfitting when training on a limited amount of data.
学习关注疼痛强度估计的兴趣区域
许多深度学习方法的突破性成功主要是由于大规模标记数据集的可用性。然而,在某些领域,大规模标记数据集并不总是可用的。疼痛强度估计是那些缺乏标记训练数据的领域之一。在这项工作中,我们提出了一种学习方法,该方法能够学习关注人脸图像中的兴趣区域以更好地提取特征,从而在有限数量的数据上训练时提高网络的整体性能。我们广泛的实验表明,与最先进的疼痛强度估计方法相比,我们的学习专注于兴趣区域方法在总体上表现更好。从实验结果中,我们强调了学习关注兴趣区域的重要性,以便在有限数量的数据上进行训练时更好地提取特征表示并减少过拟合的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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