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Skin Lesion Classification Using Weakly-supervised Fine-grained Method

机译:使用虚弱的细粒度法进行皮肤病病分类

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In recent years, skin cancer has become one of the most common cancers. Among all types of skin cancers, melanoma is the most fatal one and many people die of this disease every year. Early detection can greatly reduce the death rate and save more lives. Skin lesions are one of the early symptoms of melanoma and other types of skin cancer. So accurately recognizing various skin lesions in early stage is of great significance. There have been lots of existing works based on convolutional neural networks (CNN) to solve skin lesion classification but seldom do they involve the similarity among different lesions. For example, we find that some lesions like melanoma and nevi look similar in appearance which is hard for neural network to distinguish categories of skin lesions. Inspired by fine-grained image classification, we propose a novel network to distinguish each category accurately. In our paper, we design an effective module, distinct region proposal module (DRPM), to extract the distinct regions from each image. Spatial attention and channel-wise attention are both utilized to enrich feature maps and guide the network to focus on the highlighted areas in a weakly-supervised way. In addition, two preprocessing steps are added to ensure the network to get better results. We demonstrate the potential of the proposed method on ISIC 2017 dataset. Experiments show that our approach is effective and efficient.
机译:近年来,皮肤癌已成为最常见的癌症之一。在所有类型的皮肤癌中,黑色素瘤是每年死亡的最致命的,许多人死亡。早期检测可以大大降低死亡率并节省更多的生命。皮肤病变是黑素瘤的早期症状和其他类型的皮肤癌之一。如此准确地识别早期阶段的各种皮肤病变具有重要意义。基于卷积神经网络(CNN)已经存在许多现有的作品,以解决皮肤病变分类,但它们很少涉及不同病变之间的相似性。例如,我们发现某些病变等黑色素瘤和内华的病变看起来类似的外观,这对于神经网络来区分皮肤病变的类别。灵感来自细粒度的图像分类,我们提出了一种新颖的网络来准确地区分每个类别。在我们的论文中,我们设计了一个有效的模块,不同的区域提案模块(DRPM),以从每个图像中提取不同区域。空间关注和渠道明智的注意力都利用了丰富的特征映射,并指导网络以虚弱的方式专注于突出的区域。此外,还添加了两个预处理步骤以确保网络获得更好的结果。我们展示了在2017年ISIC 2017数据集中提出的方法的潜力。实验表明,我们的方法是有效和有效的。

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