卷R-CNN: CT目标检测和实例分割的统一框架

Yun Chen, Junxuan Chen, Bo Xiao, Zhengfang Wu, Ying Chi, Xuansong Xie, Xiansheng Hua
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引用次数: 5

摘要

作为计算机视觉的一项基础任务,Faster R-CNN、SSD等2D图像的目标检测方法可以端到端高效训练。然而,目前的体积数据处理方法,如CT,通常包含两个步骤,分别进行区域建议和分类。在这项工作中,我们提出了一个名为Volume R-CNN的统一框架,用于体积数据中的目标检测。Volume R-CNN是一种端到端方法,可以在一个模型中执行区域提议、分类和实例分割,大大减少了计算开销和参数数量。这些任务是使用一个名为RoIAlign3D的关键组件来连接的,该组件可以平滑地提取roi的特征,并且对3D图像中的小物体效果非常好。据我们所知,Volume R-CNN是CT中第一个用于对象检测和实例分割的通用端到端框架。没有花哨的东西,我们的单一模型在LUNA16中取得了显著的效果。通过烧蚀实验分析了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Volume R-CNN: Unified Framework for CT Object Detection and Instance Segmentation
As a fundamental task in computer vision, object detection methods for the 2D image such as Faster R-CNN and SSD can be efficiently trained end-to-end. However, current methods for volumetric data like computed tomography (CT) usually contain two steps to do region proposal and classification separately. In this work, we present a unified framework called Volume R-CNN for object detection in volumetric data. Volume R-CNN is an end-to-end method that could perform region proposal, classification and instance segmentation all in one model, which dramatically reduces computational overhead and parameter numbers. These tasks are joined using a key component named RoIAlign3D that extracts features of RoIs smoothly and works superiorly well for small objects in the 3D image. To the best of our knowledge, Volume R-CNN is the first common end-to-end framework for both object detection and instance segmentation in CT. Without bells and whistles, our single model achieves remarkable results in LUNA16. Ablation experiments are conducted to analyze the effectiveness of our method.
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