Real-Time Informative Laryngoscopic Frame Classification with Pre-Trained Convolutional Neural Networks

A. Galdran, P. Costa, A. Campilho
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引用次数: 7

Abstract

Visual exploration of the larynx represents a relevant technique for the early diagnosis of laryngeal disorders. However, visualizing an endoscopy for finding abnormalities is a time-consuming process, and for this reason much research has been dedicated to the automatic analysis of endoscopic video data. In this work we address the particular task of discriminating among informative laryngoscopic frames and those that carry insufficient diagnostic information. In the latter case, the goal is also to determine the reason for this lack of information. To this end, we analyze the possibility of training three different state-of-the-art Convolutional Neural Networks, but initializing their weights from configurations that have been previously optimized for solving natural image classification problems. Our findings show that the simplest of these three architectures not only is the most accurate (outperforming previously proposed techniques), but also the fastest and most efficient, with the lowest inference time and minimal memory requirements, enabling real-time application and deployment in portable devices.
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基于预训练卷积神经网络的实时信息喉镜框架分类
喉部的视觉探查是早期诊断喉部疾病的一种相关技术。然而,通过内窥镜成像来发现异常是一个耗时的过程,因此很多研究都致力于内窥镜视频数据的自动分析。在这项工作中,我们解决了区分信息丰富的喉镜框架和那些携带诊断信息不足的喉镜框架的特殊任务。在后一种情况下,目标也是确定这种信息缺乏的原因。为此,我们分析了训练三种不同的最先进的卷积神经网络的可能性,但从先前为解决自然图像分类问题而优化的配置初始化它们的权重。我们的研究结果表明,这三种架构中最简单的架构不仅是最准确的(优于先前提出的技术),而且是最快和最有效的,具有最低的推理时间和最小的内存需求,能够在便携式设备中实现实时应用和部署。
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