Different from handcrafted features, deep neural networks can automatically learn task-specific features from data. Due to this data-driven nature, they have achieved remarkable success in various areas. However, manual design and selection of suitable network architectures are time-consuming and require substantial effort of human experts. To address this problem, researchers have proposed neural architecture search (NAS) algorithms which can automatically generate network architectures but suffer from heavy computational cost and instability if searching from scratch. In this paper, we propose a hybrid NAS framework for ultrasound (US) image classification and segmentation. The hybrid framework consists of a pre-trained backbone and several searched cells (i.e., network building blocks), which takes advantage of the strengths of both NAS and the expert knowledge from existing convolutional neural networks. Specifically, two effective and lightweight operations, a mixed depth-wise convolution operator and a squeeze-and-excitation block, are introduced into the candidate operations to enhance the variety and capacity of the searched cells. These two operations not only decrease model parameters but also boost network performance. Moreover, we propose a re-aggregation strategy for the searched cells, aiming to further improve the performance for different vision tasks. We tested our method on two large US image datasets, including a 9-class echinococcosis dataset containing 9566 images for classification and an ovary dataset containing 3204 images for segmentation. Ablation experiments and comparison with other handcrafted or automatically searched architectures demonstrate that our method can generate more powerful and lightweight models for the above US image classification and segmentation tasks.
翻译:与手工艺特征不同,深神经网络可以自动从数据中学习特定任务的特点。由于这种数据驱动的性质,它们已经在各个领域取得了显著的成功。然而,人工设计和选择合适的网络结构需要时间和人类专家的大量努力。为解决这一问题,研究人员提议了神经结构搜索算法,这种算法可以自动生成网络结构,但如果从零开始搜索,则会遭受沉重的计算成本和不稳定。在本文中,我们提议了一个超声波图像分类和分解的NAS混合框架。由于这种数据驱动的性质,混合框架已经在各个领域取得了显著的成功。但是,人工设计和选择合适的网络结构结构需要花费大量的时间。然而,人工设计和选择适当的网络结构结构需要利用NAS的优势和现有神经网络的专家知识。具体地说,两种有效和轻量的神经结构搜索算法,一种混合的深度变动操作器,如果从零开始搜索,则会受到沉重的计算成本和不稳定的影响。在本文中,我们提议了一个混合的NAS框架框架,用于超音量图像分类,这两类操作不仅会降低模型参数,而且还能提高网络的性。此外,我们建议用一种重新分类方法来进行图像分析。我们搜索的图像分析。我们用一种大型结构分析,用来测试了一种大结构的系统,用来改进了另一种结构,用来改进了另外一种方法的图像分析。