器官- detr:通过变压器进行器官检测

Morteza Ghahremani;Benjamin Raphael Ernhofer;Jiajun Wang;Marcus Makowski;Christian Wachinger
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引用次数: 0

摘要

基于查询的transformer在对象定位和检测任务方面的表现令人印象深刻。然而,它们在三维医学成像数据中器官检测的应用还相对较少。本研究介绍了器官- detr,其中包含两个创新模块,多尺度注意(MSA)和密集查询匹配(DQM),旨在提高检测变压器(DETRs)用于三维器官检测的性能。MSA是一种新的自顶向下表示学习方法,用于有效地编码CT特征。该结构采用多尺度注意机制,利用双自注意机制和跨尺度注意机制提取注意机制中的尺度内和尺度间空间相互作用。器官- detr还引入了DQM,一种一对多匹配的方法,解决了器官检测中的标签分配困难。DQM增加正向查询,以提高召回分数和训练效率,而不需要额外的可学习参数。在5个3D CT数据集上的广泛结果表明,所提出的Organ-DETR优于同类技术,实现了+10.6 mAP COCO的显着改进。该项目和代码可在https://github.com/ai-med/OrganDETR上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Organ-DETR: Organ Detection via Transformers
Query-based Transformers have been yielding impressive performance in object localization and detection tasks. However, their application to organ detection in 3D medical imaging data has been relatively unexplored. This study introduces Organ-DETR, featuring two innovative modules, MultiScale Attention (MSA) and Dense Query Matching (DQM), designed to enhance the performance of Detection Transformers (DETRs) for 3D organ detection. MSA is a novel top-down representation learning approach for efficiently encoding Computed Tomography (CT) features. This architecture employs a multiscale attention mechanism, utilizing both dual self-attention and cross-scale attention mechanisms to extract intra- and inter-scale spatial interactions in the attention mechanism. Organ-DETR also introduces DQM, an approach for one-to-many matching that tackles the label assignment difficulties in organ detection. DQM increases positive queries to enhance both recall scores and training efficiency without the need for additional learnable parameters. Extensive results on five 3D CT datasets indicate that the proposed Organ-DETR outperforms comparable techniques by achieving a remarkable improvement of +10.6 mAP COCO. The project and code are available at https://github.com/ai-med/OrganDETR.
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