Multi-modal data fusion for pain intensity assessment and classification

Patrick Thiam, F. Schwenker
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引用次数: 21

Abstract

In this work, an assessment of several fusion architectures is undertaken within the scope of the development of a pain intensity classification system. The assessment is based on the recently recorded SenseEmotion Database [1], which consists of several individuals subjected to three gradually increasing levels of pain intensity, induced through temperature elevation (heat stimulation) under controlled conditions. Several modalities, including audio, video, respiration, electrocardiography, electromyography and electrodermal activity, were synchronously recorded during the experiments. A broad spectrum of descriptors is extracted from each of the involved modalities, followed by an assessment of the combination of the extracted descriptors through several fusion architectures. Experimental validation suggests that the choice of an appropriate fusion architecture, which is able to significantly improve over the performance of the best single modality, mainly depends on the amount of data available for the training of the classification architecture.
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多模态数据融合用于疼痛强度评估和分类
在这项工作中,在开发疼痛强度分类系统的范围内,对几种融合架构进行了评估。该评估基于最近记录的SenseEmotion数据库[1],该数据库由几个个体组成,他们在受控条件下通过温度升高(热刺激)引起三种逐渐增加的疼痛强度。实验过程中同步记录音频、视频、呼吸、心电图、肌电图和皮电活动等多种模式。从每个涉及的模态中提取广泛的描述符,然后通过几个融合架构评估提取的描述符的组合。实验验证表明,选择合适的融合体系结构是否能够显著提高最佳单一模态的性能,主要取决于可用于分类体系结构训练的数据量。
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