非平衡乳房热图像分割的有效损失函数

Roslidar Roslidar, Khairun Saddami, M. Irhamsyah, F. Arnia, M. Syukri, K. Munadi
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引用次数: 0

摘要

卷积神经网络学习图像的能力在物体检测、分类和分割等计算机视觉任务中占据主导地位。在分割方面,U-Net和SegNet的CNN架构表现出了良好的性能;因此,我们实现了这些网络从乳腺研究数据库(DMR)中提取乳房热图像的感兴趣区域(ROI)。我们对网络进行微调,以找到能够产生最佳学习性能的最优超参数。采用随机梯度下降优化算法对网络进行训练,并利用该算法的误差反向传播更新权重。为了使误差最小化,应用损失函数来评估权重的候选解。因此,我们对寻找乳房热图像分割的最优损失函数进行了初步的研究。我们应用了交叉熵、骰子和焦点的损失函数,找出了分割精度最高的损失函数。然后,为了评估分割结果,我们计算像素正确率和骰子系数,得到测量地面真值与预测输出之间覆盖面积的重叠指数。结果表明,基于交叉熵损失函数的SegNet模型能够以最高的像素精度和最佳的骰子系数分别为0.8845和0.7928获取乳房热图像的ROI。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective Loss Function for Unbalanced Breast Thermal Image Segmentation
The convolutional neural network's ability to learn images has reigned in computer vision tasks of object detection, classification, and segmentation. In segmentation, the CNN architectures of U-Net and SegNet have shown a good performance; thus, we implemented these networks to take the region of interest (ROI) of the breast thermal images from database for mastology research (DMR). We fine-tuned the networks to find the optimal hyperparameter that can result in the best learning performance. The networks were trained using the stochastic gradient descent optimization algorithm, and weights were updated using the error backpropagation of the algorithm. To minimize the error, the loss function is applied to evaluate a candidate solution of the weights. Thus, we conducted a preliminary study on finding the optimal loss function for breast thermal image segmentation. We applied loss functions of cross-entropy, dice, and focal and figured out the one that provides the highest segmentation accuracy. Then, to evaluate the segmentation result, we calculated the pixel accuracy rate and the dice coefficient to obtain the overlapping index measuring the overlay area between ground truth and predicted output. The result shows that the SegNet model with cross-entropy loss function can take the ROI of breast thermal images at the highest pixel accuracy and optimum dice coefficient of 0.8845 and 0.7928, respectively.
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