基于随机增强策略搜索的单帧显著性预测的孕早期凝视模式估计。

Elizaveta Savochkina, Lok Hin Lee, Lior Drukker, Aris T Papageorghiou, J Alison Noble
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引用次数: 0

摘要

在进行超声(US)扫描时,超声技师将他们的目光引导到感兴趣的区域,以验证是否获得了正确的平面,并解释获取帧。预测超声医师对美国视频的注视对于识别对美国扫描很重要的时空模式是有用的。本文研究了在多模态成像深度学习框架中利用超声医师注视的形式,以注视跟踪数据的形式,协助分析孕早期胎儿超声扫描。具体来说,我们提出了一个带跳跃连接的编码器-解码器卷积神经网络来预测115个妊娠早期超声视频的每帧视觉凝视;29,250帧视频用于培训,7,290帧用于验证,9,126帧用于测试。我们发现我们的数据集受益于自动化的数据增强,这反过来又缓解了模型过拟合,减少了训练和测试数据集之间美国解剖视图的结构变化不平衡。具体而言,我们采用随机增强策略搜索方法来提高分割性能。使用学习到的策略,我们的模型优于基线:KLD, SIM, NSS和CC(2.16, 0.27, 4.34和0.39对3.17,0.21,2.92和0.28)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

First Trimester Gaze Pattern Estimation Using Stochastic Augmentation Policy Search for Single Frame Saliency Prediction.

First Trimester Gaze Pattern Estimation Using Stochastic Augmentation Policy Search for Single Frame Saliency Prediction.

First Trimester Gaze Pattern Estimation Using Stochastic Augmentation Policy Search for Single Frame Saliency Prediction.

While performing an ultrasound (US) scan, sonographers direct their gaze at regions of interest to verify that the correct plane is acquired and to interpret the acquisition frame. Predicting sonographer gaze on US videos is useful for identification of spatio-temporal patterns that are important for US scanning. This paper investigates utilizing sonographer gaze, in the form of gaze-tracking data, in a multimodal imaging deep learning framework to assist the analysis of the first trimester fetal ultrasound scan. Specifically, we propose an encoderdecoder convolutional neural network with skip connections to predict the visual gaze for each frame using 115 first trimester ultrasound videos; 29,250 video frames for training, 7,290 for validation and 9,126 for testing. We find that the dataset of our size benefits from automated data augmentation, which in turn, alleviates model overfitting and reduces structural variation imbalance of US anatomical views between the training and test datasets. Specifically, we employ a stochastic augmentation policy search method to improve segmentation performance. Using the learnt policies, our models outperform the baseline: KLD, SIM, NSS and CC (2.16, 0.27, 4.34 and 0.39 versus 3.17, 0.21, 2.92 and 0.28).

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