Cognitive-Assisted Interactive Labeling of Skin Lesions and Blood Cells

F. Luus, I. Akhalwaya, Naweed Khan
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引用次数: 1

Abstract

Supervised deep learning depends on labeled datasets to define objective categorization of subject matter, but annotation is typically quite expensive for specialized domains. The ISIC 2017 skin lesion and BCCD blood cell image datasets are used to represent complex medical annotation scenarios, where domain knowledge is not permitted in either preprocessing or feature extraction. A low complexity supervision method is proposed, based on an iterative machine learning algorithm that fulfills the requirements for cognitive-assisted labeling. The visualization and editing of feature spaces is demanded where new label information must be integrated to improve the embedding quality as feedback mechanism. The annotators ability for fast local homogeneity assessment is leveraged through compound labeling prospects, which is the basis for achieving efficient labeling. Improved unsupervised feature extraction is hypothesized to reduce the labeling burden so the best feature extractors are empirically located at the various depths in ImageNet-pretrained convolutional neural networks, including VGG-16, Inception-v4 and Inception-Resnet-v2. Annotator emulation is performed to simulate upper bounds of achievable labeling efficiency and to explore active learning dynamics. A two-fold increase in efficiency is shown in the case of partial labeling, despite the complexity of the skin lesion data and the marginal improvement with pretrained features.
认知辅助互动标记皮肤病变和血细胞
监督式深度学习依赖于标记数据集来定义主题的客观分类,但对于专门领域来说,注释通常非常昂贵。使用ISIC 2017皮肤病变和BCCD血细胞图像数据集来表示复杂的医学标注场景,这些场景的预处理和特征提取都不允许使用领域知识。提出了一种基于迭代机器学习算法的低复杂度监督方法,满足认知辅助标注的要求。作为反馈机制,需要对特征空间进行可视化和编辑,其中必须集成新的标签信息以提高嵌入质量。通过复合标注前景,利用标注者快速局部同质性评估的能力,是实现高效标注的基础。假设改进的无监督特征提取可以减少标记负担,因此在imagenet预训练的卷积神经网络中,包括VGG-16, Inception-v4和Inception-Resnet-v2,经验地找到最佳特征提取器。执行注释器仿真来模拟可实现的标注效率的上界,并探索主动学习动态。尽管皮肤病变数据的复杂性和预训练特征的边际改善,但在部分标记的情况下,效率提高了两倍。
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