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Region Proposal Network with Graph Prior and Iou-Balance Loss for Landmark Detection in 3D Ultrasound

机译:具有图优先级和欠平衡损失的区域提议网络,用于3D超声中的地标检测

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3D ultrasound (US) can facilitate detailed prenatal examinations for fetal growth monitoring. To analyze a 3D US volume, it is fundamental to identify anatomical landmarks of the evaluated organs accurately. Typical deep learning methods usually regress the coordinates directly or involve heatmap-matching. However, these methods struggle to deal with volumes with large sizes and the highly-varying positions and orientations of fetuses. In this work, we exploit an object detection framework to detect landmarks in 3D fetal facial US volumes. By regressing multiple parameters of the landmark-centered bounding box (B-box) with a strict criteria, the proposed model is able to pinpoint the exact location of the targeted landmarks. Specifically, the model uses a 3D region proposal network (RPN) to generate 3D candidate regions, followed by several 3D classification branches to select the best candidate. It also adopts an IoU-balance loss to improve communications between branches that benefit the learning process. Furthermore, it leverage a distance-based graph prior to regularize the training and helps to reduce false positive predictions. The performance of the proposed framework is evaluated on a 3D US dataset to detect five key fetal facial landmarks. Results showed the proposed method outperforms some of the state-of-the-art methods in efficacy and efficiency.
机译:3D超声(美国)可以帮助进行详细的产前检查,以监测胎儿的生长。要分析3D US体积,准确识别被评估器官的解剖标志至关重要。典型的深度学习方法通​​常直接使坐标回归或涉及热图匹配。然而,这些方法难以处理大体积的体积以及胎儿位置和方向的高度变化。在这项工作中,我们利用对象检测框架来检测3D胎儿面部US卷中的界标。通过使用严格的标准对以地标为中心的边界框(B-box)的多个参数进行回归,所提出的模型能够查明目标地标的确切位置。具体来说,该模型使用3D区域提议网络(RPN)生成3D候选区域,然后使用几个3D分类分支来选择最佳候选区域。它还采用了IoU平衡损失来改善分支之间的通信,从而有利于学习过程。此外,它在调整训练之前利用基于距离的图,并有助于减少误报。拟议框架的性能在3D US数据集上进行了评估,以检测出五个关键的胎儿面部标志。结果表明,所提出的方法在功效和效率方面优于某些最新方法。

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