Medical image recognition often faces the problem of insufficient data in practical applications. Image recognition and processing under few-shot conditions will produce overfitting, low recognition accuracy, low reliability and insufficient robustness. It is often the case that the difference of characteristics is subtle, and the recognition is affected by perspectives, background, occlusion and other factors, which increases the difficulty of recognition. Furthermore, in fine-grained images, the few-shot problem leads to insufficient useful feature information in the images. Considering the characteristics of few-shot and fine-grained image recognition, this study has established a recognition model based on attention and Siamese neural network. Aiming at the problem of few-shot samples, a Siamese neural network suitable for classification model is proposed. The Attention-Based neural network is used as the main network to improve the classification effect. Covid- 19 lung samples have been selected for testing the model. The results show that the less the number of image samples are, the more obvious the advantage shows than the ordinary neural network.
翻译:医学影像识别往往面临着实际应用中数据不足的问题。在少样本条件下进行影像识别与处理,会产生过拟合、低识别率、低可靠性以及不足鲁棒性的问题。通常情况下特征的差别十分细微、识别受到视角、背景、遮挡等因素影响,增加了识别的难度。此外,在细粒度图像中,少样本问题导致图像中有用特征信息不足。考虑到少样本和细粒度图像识别的特点,本研究建立了一种基于注意力和孪生神经网络的识别模型。针对少样本问题,提出了一种适度分类模型的孪生神经网络。采用基于注意力的神经网络作为主网络,以提高分类效果。选择COVID-19肺样本进行模型测试。结果表明,样本数量越少,优势就越明显,优于普通神经网络。