Improving Pain Recognition Through Better Utilisation of Temporal Information.

Patrick Lucey, Jessica Howlett, Jeff Cohn, Simon Lucey, Sridha Sridharan, Zara Ambadar
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Abstract

Automatically recognizing pain from video is a very useful application as it has the potential to alert carers to patients that are in discomfort who would otherwise not be able to communicate such emotion (i.e young children, patients in postoperative care etc.). In previous work [1], a "pain-no pain" system was developed which used an AAM-SVM approach to good effect. However, as with any task involving a large amount of video data, there are memory constraints that need to be adhered to and in the previous work this was compressing the temporal signal using K-means clustering in the training phase. In visual speech recognition, it is well known that the dynamics of the signal play a vital role in recognition. As pain recognition is very similar to the task of visual speech recognition (i.e. recognising visual facial actions), it is our belief that compressing the temporal signal reduces the likelihood of accurately recognising pain. In this paper, we show that by compressing the spatial signal instead of the temporal signal, we achieve better pain recognition. Our results show the importance of the temporal signal in recognizing pain, however, we do highlight some problems associated with doing this due to the randomness of a patient's facial actions.

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通过更好地利用时间信息来改善疼痛识别。
从视频中自动识别疼痛是一个非常有用的应用程序,因为它有可能提醒护理人员注意那些处于不适状态的患者,否则这些患者将无法沟通这种情绪(即幼儿,术后护理中的患者等)。在之前的工作[1]中,我们开发了一种“无痛”系统,该系统采用AAM-SVM方法,效果良好。然而,与任何涉及大量视频数据的任务一样,需要遵守内存约束,在之前的工作中,这是在训练阶段使用K-means聚类压缩时间信号。在视觉语音识别中,信号的动态特性在识别中起着至关重要的作用。由于疼痛识别与视觉语音识别(即识别视觉面部动作)非常相似,因此我们认为压缩时间信号会降低准确识别疼痛的可能性。在本文中,我们证明了通过压缩空间信号而不是时间信号,我们可以获得更好的疼痛识别。我们的研究结果显示了颞信号在识别疼痛中的重要性,然而,由于患者面部动作的随机性,我们确实强调了与此相关的一些问题。
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