Binary and Random Inputs to Rapidly Identify Overfitting of Deep Neural Networks Trained to Output Ultrasound Images

Jiaxin Zhang, Alycen Wiacek, M. Bell
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引用次数: 1

Abstract

We developed a novel method to detect overfitting of deep neural networks trained to create ultrasound images. This method only requires the network architecture and trained weights, and does not require loss function monitoring during an otherwise time-consuming training process. Specifically, two binary images and an image of Gaussian random noise were used as inputs to three neural networks submitted to the Challenge on Ultrasound Beamforming with Deep Learning (CUBDL). Comparing the network-created images to the ground truth immediately revealed an overfit to the data used to train one of the three networks, indicating the promise of our method to detect overfitting without requiring lengthy network retraining or the collection of additional test data. This approach holds promise for regulatory oversight of DNNs intended to be deployed on patient data.
二值和随机输入快速识别超声图像输出深度神经网络的过拟合
我们开发了一种新的方法来检测用于创建超声图像的深度神经网络的过拟合。该方法只需要网络架构和训练权值,而不需要在耗时的训练过程中监控损失函数。具体来说,使用两个二值图像和一个高斯随机噪声图像作为三个神经网络的输入,这些神经网络提交给了深度学习超声波束形成挑战(CUBDL)。将网络生成的图像与地面事实进行比较,立即发现了用于训练三个网络之一的数据的过拟合,这表明我们的方法可以在不需要长时间的网络再训练或收集额外测试数据的情况下检测过拟合。这种方法有望对部署在患者数据上的dnn进行监管。
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