逐步自知识升华的皮肤病变图像分类。

IF 3.9 2区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
Jian Zheng, Kewei Xie, Dingwen Zhang, Zhiming Lv, Xiangchun Yu
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引用次数: 0

摘要

自知识蒸馏在医学图像分类领域得到了广泛的关注,它涉及到对教师模型和学生模型使用相同的网络结构。这种方法使知识升华不需要预先训练教师模型。然而,目前的自我知识提炼方法在确定下一阶段适当的学习目标方面遇到困难,这限制了学生模型的改进潜力。在本文中,我们提出了一种称为SW-SKD的逐步自我知识蒸馏框架,用于提高皮肤病学图像分类的性能。我们的框架采用逐步蒸馏策略,通过特征纠正块(FRB)和逻辑纠正块(LRB)有效地探索学习目标。在FRB块中,我们提取网络骨干网最后阶段的注意力,并将注意力校正特征作为学习目标。基于FRB的逐步精馏是通过从后到前进行基于注意力的中间特征精馏来实现的;LRB块通过调整logit预测输出的最大值以匹配正确的索引来实现基于logit的知识蒸馏。这种基于LRB的调整作为下一阶段的学习目标,从后向前推进。我们提出的SW-SKD框架有效改善了皮肤病学图像分类。为了证明其有效性,在HAM10000、ISIC2019和Dermnet数据集上进行了大量实验。在以ResNet50和ResNet101作为基准网络的HAM10000上,与次优方法相比,加权平均后精度提高了0.8%和1.4%,召回率提高了2.1%和0.9%。在具有相同基线网络的ISIC2019上,平均精度提高了0.5%和0.9%,平均召回率提高了1.1%和0.7%。它也优于其他主流方法。结果表明,SW-SKD可以显著提高学生模型在皮肤病学分类方面的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Stepwise self-knowledge distillation for skin lesion image classification.

Stepwise self-knowledge distillation for skin lesion image classification.

Stepwise self-knowledge distillation for skin lesion image classification.

Stepwise self-knowledge distillation for skin lesion image classification.

Self-knowledge distillation, which involves using the same network structure for both the teacher and student models, has gained considerable attention in the field of medical image classification. This approach enables knowledge distillation without requiring pre-training the teacher model. However, current self-knowledge distillation methods encounter difficulties in determining appropriate learning objectives for the next stage, which limits the improvement potential of the student model. In this paper, we present a Stepwise Self-Knowledge Distillation framework called SW-SKD, which is utilized to enhance the performance of dermatological image classification. Our framework incorporates a stepwise distillation strategy to efficiently explore the learning objectives by the feature rectification block (FRB) and the logit rectification block (LRB). In the FRB block, we extract the attention of the last stage of the network backbone and consider the attention-corrected features as the learning objective. The stepwise distillation based on FRB is accomplished by performing attention-based intermediate feature distillation from back to front; the LRB block implements logit-based knowledge distillation by adjusting the maximum value of the logit prediction output to match the correct index. This adjustment based on LRB serves as the learning objective for the next stage, progressing from back to front. Our proposed SW-SKD framework effectively improves dermatological image classification. To prove its effectiveness, extensive experiments are conducted on HAM10000, ISIC2019, and Dermnet datasets. On HAM10000 with ResNet50 and ResNet101 serving as the baseline networks, compared to the second-best method, Precision improves by 0.8% and 1.4%, and Recall by 2.1% and 0.9% after weighted averaging. On ISIC2019 with the same baseline networks, average Precision improves by 0.5% and 0.9%, and average Recall by 1.1% and 0.7%. It also outperforms other mainstream methods. The results show SW-SKD can significantly enhance the student model's performance in dermatological classification.

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来源期刊
Scientific Reports
Scientific Reports Natural Science Disciplines-
CiteScore
7.50
自引率
4.30%
发文量
19567
审稿时长
3.9 months
期刊介绍: We publish original research from all areas of the natural sciences, psychology, medicine and engineering. You can learn more about what we publish by browsing our specific scientific subject areas below or explore Scientific Reports by browsing all articles and collections. Scientific Reports has a 2-year impact factor: 4.380 (2021), and is the 6th most-cited journal in the world, with more than 540,000 citations in 2020 (Clarivate Analytics, 2021). •Engineering Engineering covers all aspects of engineering, technology, and applied science. It plays a crucial role in the development of technologies to address some of the world''s biggest challenges, helping to save lives and improve the way we live. •Physical sciences Physical sciences are those academic disciplines that aim to uncover the underlying laws of nature — often written in the language of mathematics. It is a collective term for areas of study including astronomy, chemistry, materials science and physics. •Earth and environmental sciences Earth and environmental sciences cover all aspects of Earth and planetary science and broadly encompass solid Earth processes, surface and atmospheric dynamics, Earth system history, climate and climate change, marine and freshwater systems, and ecology. It also considers the interactions between humans and these systems. •Biological sciences Biological sciences encompass all the divisions of natural sciences examining various aspects of vital processes. The concept includes anatomy, physiology, cell biology, biochemistry and biophysics, and covers all organisms from microorganisms, animals to plants. •Health sciences The health sciences study health, disease and healthcare. This field of study aims to develop knowledge, interventions and technology for use in healthcare to improve the treatment of patients.
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