Automatic Fetal Facial Expression Recognition by Hybridizing Saliency Maps with Recurrent Neural Network

Sushama Telrandhe, P. Daigavane
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引用次数: 3

Abstract

Fetus facial expression analysis is a recent and upcoming field of study in the area of biomedical image processing. Fetus images are obtained using 3D ultra-sounds, and thus there is minimum clarity in terms of the fetus face alignment, the fetus face posture and the fetus face size. All these issues make it a challenging task to identify the location of fetus face, and thus the fetal expression or mood analysis becomes a complicated task. In this paper, a saliency map based method is proposed to segment out the fetus face with good level of accuracy, and then identify the fetus mood using a recurrent neural network based classifier. Our work shows more than 80% accuracy across various fetus aging images, and has moderate delay of classification. We also proposed techniques for improving the accuracy further and also improving the precision and recall rates for the classification process.
基于递归神经网络的显著性杂交胎儿面部表情自动识别
胎儿面部表情分析是生物医学图像处理领域中一个新兴的研究领域。胎儿图像是通过3D超声波获得的,因此在胎儿面部对齐、胎儿面部姿势和胎儿面部大小方面清晰度最低。这些问题使得胎儿面部位置的识别成为一项具有挑战性的任务,从而使胎儿表情或情绪分析成为一项复杂的任务。本文提出了一种基于显著性图的胎儿面部分割方法,该方法具有较高的准确率,然后使用基于递归神经网络的分类器对胎儿的情绪进行识别。我们的工作表明,在各种胎儿老化图像中准确率超过80%,并且具有适度的分类延迟。我们还提出了进一步提高准确率的技术,同时也提高了分类过程的准确率和召回率。
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