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An Efficient Dense Network for Semantic Segmentation of Eyes Images Captured with Virtual Reality Lens

机译:一种高效密集网络,用于虚拟现实镜头捕获的眼睛图像的语义分割

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Eye-tracking and Gaze estimation are difficult tasks that may be used for several applications including human-computer interfaces, salience detection and Virtual reality amongst others. This paper presents a segmentation algorithm based on deep learning that efficiently discriminates pupils, iris, and sclera from the background in images captured using a Virtual Reality lens. A light network called DensetNet10 trained from scratch is proposed. It contains fewer parameters than traditional architectures based on DenseNet which allows it to be used in mobile device applications. Experiments show that this network achieved higher IOU rates when comparing with DensetNet56-67-103 and DeeplabV3+ models in the Facebook database. Furthermore, this method reached 8th place in The Facebook semantic segmentation challenge with 0.94293 mean IOU and 202.084 parameters with a final score of 0.97147.
机译:眼球追踪和注视估计是艰巨的任务,可用于多种应用程序,包括人机界面,显着性检测和虚拟现实等。本文提出了一种基于深度学习的分割算法,该算法可有效区分使用虚拟现实镜头拍摄的图像中的瞳孔,虹膜和巩膜与背景。提出了一个从头开始训练的称为DensetNet10的轻型网络。与基于DenseNet的传统体系结构相比,它包含的参数更少,因此可以在移动设备应用程序中使用。实验表明,与Facebook数据库中的DensetNet56-67-103和DeeplabV3 +模型相比,该网络具有更高的IOU率。此外,该方法在Facebook语义分段挑战赛中排名第八,平均IOU为0.94293,参数为202.084,最终得分为0.97147。

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