WGAN数据增强白细胞分类的注意残差网络

Meng Zhao, Lingmin Jin, Shenghua Teng, Zuoyong Li
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引用次数: 2

摘要

在医学上,白细胞(WBC)分类在临床诊断和治疗中起着重要作用。由于类间的相似性和训练数据的缺乏,WBC的精确分类仍然是一个挑战。为了解决这一问题,我们提出了一种基于数据增强的WBC图像分类注意残差网络。注意残差网络由多个注意残差块、自适应平均池化层和全连接层组成。在每个残差块中引入通道注意机制,利用高层学习到的WBC特征映射生成低层的注意图。每个注意残差块还引入了深度可分离卷积来提取WBC的特征,降低了训练成本。Wasserstein生成对抗网络(WGAN)用于创建合成实例,以增强训练数据的大小。在两个图像数据集上的实验表明,该方法优于几种最新的方法。
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Attention Residual Network for White Blood Cell Classification with WGAN Data Augmentation
In medicine, white blood cell (WBC) classification plays an important role in clinical diagnosis and treatment. Due to the similarity between classes and lack of training data, the precise classification of WBC is still challenging. To alleviate this problem, we propose an attention residual network for WBC image classification on the basis of data augmentation. Specifically, the attention residual network is composed of multiple attention residual blocks, an adaptive average pooling layer, and a full connection layer. The channel attention mechanism is introduced in each residual block to use the feature maps of WBC learned by a high layer to generate the attention map for a low layer. Each attention residual block also introduces depth separable convolution to extract the feature of WBC and decrease the training costs. The Wasserstein Generative adversarial network (WGAN) is used to create synthetic instances to enhance the size of training data. Experiments on two image datasets show the superiority of the proposed method over several state-of-the-art methods.
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