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Deep Multimodal Pain Recognition: A Database and Comparison of Spatio-Temporal Visual Modalities

机译:深度多模态疼痛识别:时空视觉模态的数据库和比较

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Pain is a symptom of many disorders associated with actual or potential tissue damage in human body. Managing pain is not only a duty but also highly cost prone. The most primitive state of pain management is the assessment of pain. Traditionally it was accomplished by self-report or visual inspection by experts. However, automatic pain assessment systems from facial videos are also rapidly evolving due to the need of managing pain in a robust and cost effective way. Among different challenges of automatic pain assessment from facial video data two issues are increasingly prevalent: first, exploiting both spatial and temporal information of the face to assess pain level, and second, incorporating multiple visual modalities to capture complementary face information related to pain. Most works in the literature focus on merely exploiting spatial information on chromatic (RGB) video data on shallow learning scenarios. However, employing deep learning techniques for spatio-temporal analysis considering Depth (D) and Thermal (T) along with RGB has high potential in this area. In this paper, we present the first state-of-the-art publicly available database, 'Multimodal Intensity Pain (MIntPAIN)' database, for RGBDT pain level recognition in sequences. We provide a first baseline results including 5 pain levels recognition by analyzing independent visual modalities and their fusion with CNN and LSTM models. From the experimental evaluation we observe that fusion of modalities helps to enhance recognition performance of pain levels in comparison to isolated ones. In particular, the combination of RGB, D, and T in an early fusion fashion achieved the best recognition rate.
机译:疼痛是许多与人体实际或潜在组织损伤相关的疾病的症状。控制疼痛不仅是一种责任,而且也是成本高昂的。疼痛管理的最原始状态是疼痛评估。传统上,这是通过专家的自我报告或目视检查来完成的。但是,由于需要以健壮且经济高效的方式管理疼痛,因此来自面部视频的自动疼痛评估系统也在迅速发展。在来自面部视频数据的自动疼痛评估的不同挑战中,有两个问题越来越普遍:首先,利用面部的空间和时间信息来评估疼痛程度;其次,合并多种视觉模式以捕获与疼痛相关的互补面部信息。文献中的大多数工作都集中于仅在浅层学习场景中利用彩色(RGB)视频数据上的空间信息。但是,将深度(D)和热(T)以及RGB与RGB结合使用时,采用深度学习技术在该领域具有很高的潜力。在本文中,我们介绍了第一个最新的公开可用的数据库,即“多峰强度疼痛(MIntPAIN)”数据库,用于序列中的RGBDT疼痛水平识别。我们通过分析独立的视觉方式及其与CNN和LSTM模型的融合,提供了包括5种疼痛程度识别的初步基线结果。从实验评估中我们观察到,与孤立的方法相比,方法的融合有助于提高疼痛水平的识别性能。特别是,以早期融合的方式将RGB,D和T组合在一起可获得最佳识别率。

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