用于细粒度身体部位识别的自监督深度表示学习

Pengyue Zhang, Fusheng Wang, Yefeng Zheng
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引用次数: 47

摘要

医学图像标注的采集困难导致缺乏足够的监督,使识别任务具有挑战性。然而,原始数据,例如来自3D CT图像的空间上下文信息,即使没有注释,也可能包含丰富的有用信息。在本文中,我们利用空间上下文信息作为监督来源来解决基于传统3D CT和MR体积的细粒度身体部位识别的识别任务。提出的流水线包括两个步骤:1)以自监督的方式预训练卷积网络用于辅助任务二维切片排序;2)转移和微调预训练网络,实现细粒度身体部位识别。在第一阶段不使用人工标注的情况下,预训练的网络仍然可以在CT和M-R数据上优于从头训练的CNN。此外,通过与来自ImageNet的预训练CNN进行比较,我们发现源任务和目标任务之间的距离在迁移学习中起着至关重要的作用。我们的实验表明,我们的方法可以在CT和MR数据上获得较高的精度,并且切片位置估计误差仅为几个切片。据我们所知,我们的工作是第一次尝试在连续水平上研究健壮的身体部位识别问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self supervised deep representation learning for fine-grained body part recognition
Difficulty on collecting annotated medical images leads to lack of enough supervision and makes discrimination tasks challenging. However, raw data, e.g., spatial context information from 3D CT images, even without annotation, may contain rich useful information. In this paper, we exploit spatial context information as a source of supervision to solve discrimination tasks for fine-grained body part recognition with conventional 3D CT and MR volumes. The proposed pipeline consists of two steps: 1) pre-train a convolutional network for an auxiliary task of 2D slices ordering in a self-supervised manner; 2) transfer and fine-tune the pre-trained network for fine-grained body part recognition. Without any use of human annotation in the first stage, the pre-trained network can still outperform CNN trained from scratch on CT as well as M-R data. Moreover, by comparing with pre-trained CNN from ImageNet, we discover that the distance between source and target tasks plays a crucial role in transfer learning. Our experiments demonstrate that our approach can achieve high accuracy with a slice location estimation error of only a few slices on CT and MR data. To the best of our knowledge, our work is the first attempt studying the problem of robust body part recognition at a continuous level.
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