论文标题

在现实世界中的新生儿面部检测强大的临床环境

Robust Neonatal Face Detection in Real-world Clinical Settings

论文作者

Hausmann, Jacqueline, Salekin, Md Sirajus, Zamzmi, Ghada, Goldgof, Dmitry, Sun, Yu

论文摘要

当前的面部检测算法非常普遍,在检测成人面孔时可以获得不错的精度。这些方法在处理异常情况时不足,例如,试图检测出面部组成和表达与成年人相对较不同的新生儿的面孔时。此外,当应用在复杂的环境(例如新生儿重症监护室)中检测面孔时,很难。通过训练最先进的面部检测模型,即您的外观,在临床环境中包含标有新生儿面孔的专有数据集上,这项工作实现了接近实时的新生儿面部检测。与检测到Neonate Face的OFF架子溶液相比,我们的初步发现的准确性为68.7%,精度为7.37%。尽管需要进一步的实验来验证我们的模型,但我们的结果是有希望的,并证明了在挑战现实世界中检测新生儿面孔的可行性。对新生儿面孔的强大和实时检测将使广泛的自动化系统(例如疼痛识别和监视)受益,他们由于手动注释的必要性而遭受时间和精力。为了使研究社区受益,我们在Github(https://github.com/ja05haus/trained_neonate_face)上公开培训的权重。

Current face detection algorithms are extremely generalized and can obtain decent accuracy when detecting the adult faces. These approaches are insufficient when handling outlier cases, for example when trying to detect the face of a neonate infant whose face composition and expressions are relatively different than that of the adult. It is furthermore difficult when applied to detect faces in a complicated setting such as the Neonate Intensive Care Unit. By training a state-of-the-art face detection model, You-Only-Look-Once, on a proprietary dataset containing labelled neonate faces in a clinical setting, this work achieves near real time neonate face detection. Our preliminary findings show an accuracy of 68.7%, compared to the off the shelf solution which detected neonate faces with an accuracy of 7.37%. Although further experiments are needed to validate our model, our results are promising and prove the feasibility of detecting neonatal faces in challenging real-world settings. The robust and real-time detection of neonatal faces would benefit wide range of automated systems (e.g., pain recognition and surveillance) who currently suffer from the time and effort due to the necessity of manual annotations. To benefit the research community, we make our trained weights publicly available at github(https://github.com/ja05haus/trained_neonate_face).

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