Feature matching and finding correspondences between endoscopic images is a key step in many clinical applications such as patient follow-up and generation of panoramic image from clinical sequences for fast anomalies localization. Nonetheless, due to the high texture variability present in endoscopic images, the development of robust and accurate feature matching becomes a challenging task. Recently, deep learning techniques which deliver learned features extracted via convolutional neural networks (CNNs) have gained traction in a wide range of computer vision tasks. However, they all follow a supervised learning scheme where a large amount of annotated data is required to reach good performances, which is generally not always available for medical data databases. To overcome this limitation related to labeled data scarcity, the self-supervised learning paradigm has recently shown great success in a number of applications. This paper proposes a novel self-supervised approach for endoscopic image matching based on deep learning techniques. When compared to standard hand-crafted local feature descriptors, our method outperformed them in terms of precision and recall. Furthermore, our self-supervised descriptor provides a competitive performance in comparison to a selection of state-of-the-art deep learning based supervised methods in terms of precision and matching score.
翻译:然而,由于内分层图像中存在高质质变,因此开发强力和准确的特征匹配是一项艰巨的任务。最近,提供通过卷发神经网络(CNNs)提取的学习特征的深层次学习技术在一系列广泛的计算机视觉任务中获得了牵引力。然而,它们都遵循了一种监督的学习计划,即需要大量附加说明的数据才能达到良好的性能,而通常医疗数据数据库并不总是具备这种良好的性能。为了克服与标签数据稀缺有关的限制,自监督的学习模式最近在一些应用中表现出很大的成功。本文提出了一种新颖的自我监督方法,用于根据深层学习技术对内分层神经网络(CNNs)进行匹配。与标准手工制作的本地特征描述器相比,我们的方法在精确度和回顾方面优于它们。此外,我们自我监督的描述性描述器在深度学习方法的精确度方面提供了一种竞争性的比较。