The Use of Synthetic Data to Facilitate Eye Segmentation Using Deeplabv3+

Melih Öz, T. Danisman, Melih Gunay, Esra Zekiye Şanal, Özgür Duman, J. Ledet
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引用次数: 1

Abstract

The human eye contains valuable information about an individual’s identity and health. Therefore, segmenting the eye into distinct regions is an essential step towards gathering this useful information precisely. The main challenges in segmenting the human eye include low light conditions, reflections on the eye, variations in the eyelid, and head positions that make an eye image hard to segment. For this reason, there is a need for deep neural networks, which are preferred due to their success in segmentation problems. However, deep neural networks need a large amount of manually annotated data to be trained. Manual annotation is a labor-intensive task, and to tackle this problem, we used data augmentation methods to improve synthetic data. In this paper, we detail the exploration of the scenario, which, with limited data, whether performance can be enhanced using similar context data with image augmentation methods. Our training and test set consists of 3D synthetic eye images generated from the UnityEyes application and manually annotated real-life eye images, respectively. We examined the effect of using synthetic eye images with the Deeplabv3+ network in different conditions using image augmentation methods on the synthetic data. According to our experiments, the network trained with processed synthetic images beside real-life images produced better mIoU results than the network, which only trained with real-life images in the Base dataset. We also observed mIoU increase in the test set we created from MICHE II competition images.
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使用deepplabv3 +的合成数据来促进眼睛分割
人眼包含着关于个人身份和健康状况的宝贵信息。因此,将眼睛分割成不同的区域是精确收集有用信息的关键一步。分割人眼的主要挑战包括低光条件、眼睛反射、眼睑变化和头部位置,这些都使眼睛图像难以分割。出于这个原因,我们需要深度神经网络,由于其在分割问题上的成功,深度神经网络是首选。然而,深度神经网络需要大量的人工标注数据进行训练。手动注释是一项劳动密集型任务,为了解决这个问题,我们使用数据增强方法来改进合成数据。在本文中,我们详细探讨了场景,即在有限的数据下,是否可以使用类似的上下文数据和图像增强方法来增强性能。我们的训练和测试集分别由UnityEyes应用程序生成的3D合成眼睛图像和手动注释的真实眼睛图像组成。我们通过对合成数据的图像增强方法,研究了在不同条件下使用deepplabv3 +网络合成眼图像的效果。根据我们的实验,与仅使用Base数据集中的真实图像训练的网络相比,使用经过处理的合成图像训练的网络产生了更好的mIoU结果。我们还观察到从MICHE II竞赛图像创建的测试集中mIoU的增加。
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来源期刊
Annals of Emerging Technologies in Computing
Annals of Emerging Technologies in Computing Computer Science-Computer Science (all)
CiteScore
3.50
自引率
0.00%
发文量
26
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