In this paper, we present how Bell's Palsy, a neurological disorder, can be detected just from a subject's eyes in a video. We notice that Bell's Palsy patients often struggle to blink their eyes on the affected side. As a result, we can observe a clear contrast between the blinking patterns of the two eyes. Although previous works did utilize images/videos to detect this disorder, none have explicitly focused on the eyes. Most of them require the entire face. One obvious advantage of having an eye-focused detection system is that subjects' anonymity is not at risk. Also, our AI decisions based on simple blinking patterns make them explainable and straightforward. Specifically, we develop a novel feature called blink similarity, which measures the similarity between the two blinking patterns. Our extensive experiments demonstrate that the proposed feature is quite robust, for it helps in Bell's Palsy detection even with very few labels. Our proposed eye-focused detection system is not only cheaper but also more convenient than several existing methods.
翻译:在本文中,我们展示了Bell的麻痹,一种神经系统紊乱,如何在视频中从对象的眼中检测出来。我们注意到,Bell的麻痹病人经常在受影响方面挣扎眨眼。结果,我们可以观察到两眼眨眼模式之间的明显对比。虽然先前的作品确实使用了图像/视频来检测这种障碍,但并没有明确地聚焦于眼睛上。它们大多需要整张脸。拥有一个以眼睛为重点的检测系统的一个明显好处是,对象的匿名性没有风险。此外,我们基于简单的眨眼模式的AI决定使他们可以解释和直截了当。具体地说,我们开发了一个叫做眨眼相似性的小说特征,用来测量两种闪烁模式之间的相似性。我们的广泛实验表明,拟议的特征相当稳健,因为它有助于Bell的麻痹检测,即使标签很少。我们提议的以眼睛为重点的检测系统不仅更便宜,而且比现有的几种方法更方便。